Enago Academy

Experimental Research Design — 6 mistakes you should never make!

' src=

Since school days’ students perform scientific experiments that provide results that define and prove the laws and theorems in science. These experiments are laid on a strong foundation of experimental research designs.

An experimental research design helps researchers execute their research objectives with more clarity and transparency.

In this article, we will not only discuss the key aspects of experimental research designs but also the issues to avoid and problems to resolve while designing your research study.

Table of Contents

What Is Experimental Research Design?

Experimental research design is a framework of protocols and procedures created to conduct experimental research with a scientific approach using two sets of variables. Herein, the first set of variables acts as a constant, used to measure the differences of the second set. The best example of experimental research methods is quantitative research .

Experimental research helps a researcher gather the necessary data for making better research decisions and determining the facts of a research study.

When Can a Researcher Conduct Experimental Research?

A researcher can conduct experimental research in the following situations —

  • When time is an important factor in establishing a relationship between the cause and effect.
  • When there is an invariable or never-changing behavior between the cause and effect.
  • Finally, when the researcher wishes to understand the importance of the cause and effect.

Importance of Experimental Research Design

To publish significant results, choosing a quality research design forms the foundation to build the research study. Moreover, effective research design helps establish quality decision-making procedures, structures the research to lead to easier data analysis, and addresses the main research question. Therefore, it is essential to cater undivided attention and time to create an experimental research design before beginning the practical experiment.

By creating a research design, a researcher is also giving oneself time to organize the research, set up relevant boundaries for the study, and increase the reliability of the results. Through all these efforts, one could also avoid inconclusive results. If any part of the research design is flawed, it will reflect on the quality of the results derived.

Types of Experimental Research Designs

Based on the methods used to collect data in experimental studies, the experimental research designs are of three primary types:

1. Pre-experimental Research Design

A research study could conduct pre-experimental research design when a group or many groups are under observation after implementing factors of cause and effect of the research. The pre-experimental design will help researchers understand whether further investigation is necessary for the groups under observation.

Pre-experimental research is of three types —

  • One-shot Case Study Research Design
  • One-group Pretest-posttest Research Design
  • Static-group Comparison

2. True Experimental Research Design

A true experimental research design relies on statistical analysis to prove or disprove a researcher’s hypothesis. It is one of the most accurate forms of research because it provides specific scientific evidence. Furthermore, out of all the types of experimental designs, only a true experimental design can establish a cause-effect relationship within a group. However, in a true experiment, a researcher must satisfy these three factors —

  • There is a control group that is not subjected to changes and an experimental group that will experience the changed variables
  • A variable that can be manipulated by the researcher
  • Random distribution of the variables

This type of experimental research is commonly observed in the physical sciences.

3. Quasi-experimental Research Design

The word “Quasi” means similarity. A quasi-experimental design is similar to a true experimental design. However, the difference between the two is the assignment of the control group. In this research design, an independent variable is manipulated, but the participants of a group are not randomly assigned. This type of research design is used in field settings where random assignment is either irrelevant or not required.

The classification of the research subjects, conditions, or groups determines the type of research design to be used.

experimental research design

Advantages of Experimental Research

Experimental research allows you to test your idea in a controlled environment before taking the research to clinical trials. Moreover, it provides the best method to test your theory because of the following advantages:

  • Researchers have firm control over variables to obtain results.
  • The subject does not impact the effectiveness of experimental research. Anyone can implement it for research purposes.
  • The results are specific.
  • Post results analysis, research findings from the same dataset can be repurposed for similar research ideas.
  • Researchers can identify the cause and effect of the hypothesis and further analyze this relationship to determine in-depth ideas.
  • Experimental research makes an ideal starting point. The collected data could be used as a foundation to build new research ideas for further studies.

6 Mistakes to Avoid While Designing Your Research

There is no order to this list, and any one of these issues can seriously compromise the quality of your research. You could refer to the list as a checklist of what to avoid while designing your research.

1. Invalid Theoretical Framework

Usually, researchers miss out on checking if their hypothesis is logical to be tested. If your research design does not have basic assumptions or postulates, then it is fundamentally flawed and you need to rework on your research framework.

2. Inadequate Literature Study

Without a comprehensive research literature review , it is difficult to identify and fill the knowledge and information gaps. Furthermore, you need to clearly state how your research will contribute to the research field, either by adding value to the pertinent literature or challenging previous findings and assumptions.

3. Insufficient or Incorrect Statistical Analysis

Statistical results are one of the most trusted scientific evidence. The ultimate goal of a research experiment is to gain valid and sustainable evidence. Therefore, incorrect statistical analysis could affect the quality of any quantitative research.

4. Undefined Research Problem

This is one of the most basic aspects of research design. The research problem statement must be clear and to do that, you must set the framework for the development of research questions that address the core problems.

5. Research Limitations

Every study has some type of limitations . You should anticipate and incorporate those limitations into your conclusion, as well as the basic research design. Include a statement in your manuscript about any perceived limitations, and how you considered them while designing your experiment and drawing the conclusion.

6. Ethical Implications

The most important yet less talked about topic is the ethical issue. Your research design must include ways to minimize any risk for your participants and also address the research problem or question at hand. If you cannot manage the ethical norms along with your research study, your research objectives and validity could be questioned.

Experimental Research Design Example

In an experimental design, a researcher gathers plant samples and then randomly assigns half the samples to photosynthesize in sunlight and the other half to be kept in a dark box without sunlight, while controlling all the other variables (nutrients, water, soil, etc.)

By comparing their outcomes in biochemical tests, the researcher can confirm that the changes in the plants were due to the sunlight and not the other variables.

Experimental research is often the final form of a study conducted in the research process which is considered to provide conclusive and specific results. But it is not meant for every research. It involves a lot of resources, time, and money and is not easy to conduct, unless a foundation of research is built. Yet it is widely used in research institutes and commercial industries, for its most conclusive results in the scientific approach.

Have you worked on research designs? How was your experience creating an experimental design? What difficulties did you face? Do write to us or comment below and share your insights on experimental research designs!

Frequently Asked Questions

Randomization is important in an experimental research because it ensures unbiased results of the experiment. It also measures the cause-effect relationship on a particular group of interest.

Experimental research design lay the foundation of a research and structures the research to establish quality decision making process.

There are 3 types of experimental research designs. These are pre-experimental research design, true experimental research design, and quasi experimental research design.

The difference between an experimental and a quasi-experimental design are: 1. The assignment of the control group in quasi experimental research is non-random, unlike true experimental design, which is randomly assigned. 2. Experimental research group always has a control group; on the other hand, it may not be always present in quasi experimental research.

Experimental research establishes a cause-effect relationship by testing a theory or hypothesis using experimental groups or control variables. In contrast, descriptive research describes a study or a topic by defining the variables under it and answering the questions related to the same.

' src=

good and valuable

Very very good

Good presentation.

Rate this article Cancel Reply

Your email address will not be published.

research design experimental method

Enago Academy's Most Popular Articles

10 Tips to Prevent Research Papers From Being Retracted

  • Publishing Research

10 Tips to Prevent Research Papers From Being Retracted

Research paper retractions represent a critical event in the scientific community. When a published article…

2024 Scholar Metrics: Unveiling research impact (2019-2023)

  • Industry News

Google Releases 2024 Scholar Metrics, Evaluates Impact of Scholarly Articles

Google has released its 2024 Scholar Metrics, assessing scholarly articles from 2019 to 2023. This…

What is Academic Integrity and How to Uphold it [FREE CHECKLIST]

Ensuring Academic Integrity and Transparency in Academic Research: A comprehensive checklist for researchers

Academic integrity is the foundation upon which the credibility and value of scientific findings are…

7 Step Guide for Optimizing Impactful Research Process

  • Reporting Research

How to Optimize Your Research Process: A step-by-step guide

For researchers across disciplines, the path to uncovering novel findings and insights is often filled…

Launch of "Sony Women in Technology Award with Nature"

  • Trending Now

Breaking Barriers: Sony and Nature unveil “Women in Technology Award”

Sony Group Corporation and the prestigious scientific journal Nature have collaborated to launch the inaugural…

Choosing the Right Analytical Approach: Thematic analysis vs. content analysis for…

Comparing Cross Sectional and Longitudinal Studies: 5 steps for choosing the right…

research design experimental method

Sign-up to read more

Subscribe for free to get unrestricted access to all our resources on research writing and academic publishing including:

  • 2000+ blog articles
  • 50+ Webinars
  • 10+ Expert podcasts
  • 50+ Infographics
  • 10+ Checklists
  • Research Guides

We hate spam too. We promise to protect your privacy and never spam you.

  • AI in Academia
  • Promoting Research
  • Career Corner
  • Diversity and Inclusion
  • Infographics
  • Expert Video Library
  • Other Resources
  • Enago Learn
  • Upcoming & On-Demand Webinars
  • Peer Review Week 2024
  • Open Access Week 2023
  • Conference Videos
  • Enago Report
  • Journal Finder
  • Enago Plagiarism & AI Grammar Check
  • Editing Services
  • Publication Support Services
  • Research Impact
  • Translation Services
  • Publication solutions
  • AI-Based Solutions
  • Thought Leadership
  • Call for Articles
  • Call for Speakers
  • Author Training
  • Edit Profile

I am looking for Editing/ Proofreading services for my manuscript Tentative date of next journal submission:

research design experimental method

In your opinion, what is the most effective way to improve integrity in the peer review process?

Logo for University of Southern Queensland

Want to create or adapt books like this? Learn more about how Pressbooks supports open publishing practices.

10 Experimental research

Experimental research—often considered to be the ‘gold standard’ in research designs—is one of the most rigorous of all research designs. In this design, one or more independent variables are manipulated by the researcher (as treatments), subjects are randomly assigned to different treatment levels (random assignment), and the results of the treatments on outcomes (dependent variables) are observed. The unique strength of experimental research is its internal validity (causality) due to its ability to link cause and effect through treatment manipulation, while controlling for the spurious effect of extraneous variable.

Experimental research is best suited for explanatory research—rather than for descriptive or exploratory research—where the goal of the study is to examine cause-effect relationships. It also works well for research that involves a relatively limited and well-defined set of independent variables that can either be manipulated or controlled. Experimental research can be conducted in laboratory or field settings. Laboratory experiments , conducted in laboratory (artificial) settings, tend to be high in internal validity, but this comes at the cost of low external validity (generalisability), because the artificial (laboratory) setting in which the study is conducted may not reflect the real world. Field experiments are conducted in field settings such as in a real organisation, and are high in both internal and external validity. But such experiments are relatively rare, because of the difficulties associated with manipulating treatments and controlling for extraneous effects in a field setting.

Experimental research can be grouped into two broad categories: true experimental designs and quasi-experimental designs. Both designs require treatment manipulation, but while true experiments also require random assignment, quasi-experiments do not. Sometimes, we also refer to non-experimental research, which is not really a research design, but an all-inclusive term that includes all types of research that do not employ treatment manipulation or random assignment, such as survey research, observational research, and correlational studies.

Basic concepts

Treatment and control groups. In experimental research, some subjects are administered one or more experimental stimulus called a treatment (the treatment group ) while other subjects are not given such a stimulus (the control group ). The treatment may be considered successful if subjects in the treatment group rate more favourably on outcome variables than control group subjects. Multiple levels of experimental stimulus may be administered, in which case, there may be more than one treatment group. For example, in order to test the effects of a new drug intended to treat a certain medical condition like dementia, if a sample of dementia patients is randomly divided into three groups, with the first group receiving a high dosage of the drug, the second group receiving a low dosage, and the third group receiving a placebo such as a sugar pill (control group), then the first two groups are experimental groups and the third group is a control group. After administering the drug for a period of time, if the condition of the experimental group subjects improved significantly more than the control group subjects, we can say that the drug is effective. We can also compare the conditions of the high and low dosage experimental groups to determine if the high dose is more effective than the low dose.

Treatment manipulation. Treatments are the unique feature of experimental research that sets this design apart from all other research methods. Treatment manipulation helps control for the ‘cause’ in cause-effect relationships. Naturally, the validity of experimental research depends on how well the treatment was manipulated. Treatment manipulation must be checked using pretests and pilot tests prior to the experimental study. Any measurements conducted before the treatment is administered are called pretest measures , while those conducted after the treatment are posttest measures .

Random selection and assignment. Random selection is the process of randomly drawing a sample from a population or a sampling frame. This approach is typically employed in survey research, and ensures that each unit in the population has a positive chance of being selected into the sample. Random assignment, however, is a process of randomly assigning subjects to experimental or control groups. This is a standard practice in true experimental research to ensure that treatment groups are similar (equivalent) to each other and to the control group prior to treatment administration. Random selection is related to sampling, and is therefore more closely related to the external validity (generalisability) of findings. However, random assignment is related to design, and is therefore most related to internal validity. It is possible to have both random selection and random assignment in well-designed experimental research, but quasi-experimental research involves neither random selection nor random assignment.

Threats to internal validity. Although experimental designs are considered more rigorous than other research methods in terms of the internal validity of their inferences (by virtue of their ability to control causes through treatment manipulation), they are not immune to internal validity threats. Some of these threats to internal validity are described below, within the context of a study of the impact of a special remedial math tutoring program for improving the math abilities of high school students.

History threat is the possibility that the observed effects (dependent variables) are caused by extraneous or historical events rather than by the experimental treatment. For instance, students’ post-remedial math score improvement may have been caused by their preparation for a math exam at their school, rather than the remedial math program.

Maturation threat refers to the possibility that observed effects are caused by natural maturation of subjects (e.g., a general improvement in their intellectual ability to understand complex concepts) rather than the experimental treatment.

Testing threat is a threat in pre-post designs where subjects’ posttest responses are conditioned by their pretest responses. For instance, if students remember their answers from the pretest evaluation, they may tend to repeat them in the posttest exam.

Not conducting a pretest can help avoid this threat.

Instrumentation threat , which also occurs in pre-post designs, refers to the possibility that the difference between pretest and posttest scores is not due to the remedial math program, but due to changes in the administered test, such as the posttest having a higher or lower degree of difficulty than the pretest.

Mortality threat refers to the possibility that subjects may be dropping out of the study at differential rates between the treatment and control groups due to a systematic reason, such that the dropouts were mostly students who scored low on the pretest. If the low-performing students drop out, the results of the posttest will be artificially inflated by the preponderance of high-performing students.

Regression threat —also called a regression to the mean—refers to the statistical tendency of a group’s overall performance to regress toward the mean during a posttest rather than in the anticipated direction. For instance, if subjects scored high on a pretest, they will have a tendency to score lower on the posttest (closer to the mean) because their high scores (away from the mean) during the pretest were possibly a statistical aberration. This problem tends to be more prevalent in non-random samples and when the two measures are imperfectly correlated.

Two-group experimental designs

R

Pretest-posttest control group design . In this design, subjects are randomly assigned to treatment and control groups, subjected to an initial (pretest) measurement of the dependent variables of interest, the treatment group is administered a treatment (representing the independent variable of interest), and the dependent variables measured again (posttest). The notation of this design is shown in Figure 10.1.

Pretest-posttest control group design

Statistical analysis of this design involves a simple analysis of variance (ANOVA) between the treatment and control groups. The pretest-posttest design handles several threats to internal validity, such as maturation, testing, and regression, since these threats can be expected to influence both treatment and control groups in a similar (random) manner. The selection threat is controlled via random assignment. However, additional threats to internal validity may exist. For instance, mortality can be a problem if there are differential dropout rates between the two groups, and the pretest measurement may bias the posttest measurement—especially if the pretest introduces unusual topics or content.

Posttest -only control group design . This design is a simpler version of the pretest-posttest design where pretest measurements are omitted. The design notation is shown in Figure 10.2.

Posttest-only control group design

The treatment effect is measured simply as the difference in the posttest scores between the two groups:

\[E = (O_{1} - O_{2})\,.\]

The appropriate statistical analysis of this design is also a two-group analysis of variance (ANOVA). The simplicity of this design makes it more attractive than the pretest-posttest design in terms of internal validity. This design controls for maturation, testing, regression, selection, and pretest-posttest interaction, though the mortality threat may continue to exist.

C

Because the pretest measure is not a measurement of the dependent variable, but rather a covariate, the treatment effect is measured as the difference in the posttest scores between the treatment and control groups as:

Due to the presence of covariates, the right statistical analysis of this design is a two-group analysis of covariance (ANCOVA). This design has all the advantages of posttest-only design, but with internal validity due to the controlling of covariates. Covariance designs can also be extended to pretest-posttest control group design.

Factorial designs

Two-group designs are inadequate if your research requires manipulation of two or more independent variables (treatments). In such cases, you would need four or higher-group designs. Such designs, quite popular in experimental research, are commonly called factorial designs. Each independent variable in this design is called a factor , and each subdivision of a factor is called a level . Factorial designs enable the researcher to examine not only the individual effect of each treatment on the dependent variables (called main effects), but also their joint effect (called interaction effects).

2 \times 2

In a factorial design, a main effect is said to exist if the dependent variable shows a significant difference between multiple levels of one factor, at all levels of other factors. No change in the dependent variable across factor levels is the null case (baseline), from which main effects are evaluated. In the above example, you may see a main effect of instructional type, instructional time, or both on learning outcomes. An interaction effect exists when the effect of differences in one factor depends upon the level of a second factor. In our example, if the effect of instructional type on learning outcomes is greater for three hours/week of instructional time than for one and a half hours/week, then we can say that there is an interaction effect between instructional type and instructional time on learning outcomes. Note that the presence of interaction effects dominate and make main effects irrelevant, and it is not meaningful to interpret main effects if interaction effects are significant.

Hybrid experimental designs

Hybrid designs are those that are formed by combining features of more established designs. Three such hybrid designs are randomised bocks design, Solomon four-group design, and switched replications design.

Randomised block design. This is a variation of the posttest-only or pretest-posttest control group design where the subject population can be grouped into relatively homogeneous subgroups (called blocks ) within which the experiment is replicated. For instance, if you want to replicate the same posttest-only design among university students and full-time working professionals (two homogeneous blocks), subjects in both blocks are randomly split between the treatment group (receiving the same treatment) and the control group (see Figure 10.5). The purpose of this design is to reduce the ‘noise’ or variance in data that may be attributable to differences between the blocks so that the actual effect of interest can be detected more accurately.

Randomised blocks design

Solomon four-group design . In this design, the sample is divided into two treatment groups and two control groups. One treatment group and one control group receive the pretest, and the other two groups do not. This design represents a combination of posttest-only and pretest-posttest control group design, and is intended to test for the potential biasing effect of pretest measurement on posttest measures that tends to occur in pretest-posttest designs, but not in posttest-only designs. The design notation is shown in Figure 10.6.

Solomon four-group design

Switched replication design . This is a two-group design implemented in two phases with three waves of measurement. The treatment group in the first phase serves as the control group in the second phase, and the control group in the first phase becomes the treatment group in the second phase, as illustrated in Figure 10.7. In other words, the original design is repeated or replicated temporally with treatment/control roles switched between the two groups. By the end of the study, all participants will have received the treatment either during the first or the second phase. This design is most feasible in organisational contexts where organisational programs (e.g., employee training) are implemented in a phased manner or are repeated at regular intervals.

Switched replication design

Quasi-experimental designs

Quasi-experimental designs are almost identical to true experimental designs, but lacking one key ingredient: random assignment. For instance, one entire class section or one organisation is used as the treatment group, while another section of the same class or a different organisation in the same industry is used as the control group. This lack of random assignment potentially results in groups that are non-equivalent, such as one group possessing greater mastery of certain content than the other group, say by virtue of having a better teacher in a previous semester, which introduces the possibility of selection bias . Quasi-experimental designs are therefore inferior to true experimental designs in interval validity due to the presence of a variety of selection related threats such as selection-maturation threat (the treatment and control groups maturing at different rates), selection-history threat (the treatment and control groups being differentially impacted by extraneous or historical events), selection-regression threat (the treatment and control groups regressing toward the mean between pretest and posttest at different rates), selection-instrumentation threat (the treatment and control groups responding differently to the measurement), selection-testing (the treatment and control groups responding differently to the pretest), and selection-mortality (the treatment and control groups demonstrating differential dropout rates). Given these selection threats, it is generally preferable to avoid quasi-experimental designs to the greatest extent possible.

N

In addition, there are quite a few unique non-equivalent designs without corresponding true experimental design cousins. Some of the more useful of these designs are discussed next.

Regression discontinuity (RD) design . This is a non-equivalent pretest-posttest design where subjects are assigned to the treatment or control group based on a cut-off score on a preprogram measure. For instance, patients who are severely ill may be assigned to a treatment group to test the efficacy of a new drug or treatment protocol and those who are mildly ill are assigned to the control group. In another example, students who are lagging behind on standardised test scores may be selected for a remedial curriculum program intended to improve their performance, while those who score high on such tests are not selected from the remedial program.

RD design

Because of the use of a cut-off score, it is possible that the observed results may be a function of the cut-off score rather than the treatment, which introduces a new threat to internal validity. However, using the cut-off score also ensures that limited or costly resources are distributed to people who need them the most, rather than randomly across a population, while simultaneously allowing a quasi-experimental treatment. The control group scores in the RD design do not serve as a benchmark for comparing treatment group scores, given the systematic non-equivalence between the two groups. Rather, if there is no discontinuity between pretest and posttest scores in the control group, but such a discontinuity persists in the treatment group, then this discontinuity is viewed as evidence of the treatment effect.

Proxy pretest design . This design, shown in Figure 10.11, looks very similar to the standard NEGD (pretest-posttest) design, with one critical difference: the pretest score is collected after the treatment is administered. A typical application of this design is when a researcher is brought in to test the efficacy of a program (e.g., an educational program) after the program has already started and pretest data is not available. Under such circumstances, the best option for the researcher is often to use a different prerecorded measure, such as students’ grade point average before the start of the program, as a proxy for pretest data. A variation of the proxy pretest design is to use subjects’ posttest recollection of pretest data, which may be subject to recall bias, but nevertheless may provide a measure of perceived gain or change in the dependent variable.

Proxy pretest design

Separate pretest-posttest samples design . This design is useful if it is not possible to collect pretest and posttest data from the same subjects for some reason. As shown in Figure 10.12, there are four groups in this design, but two groups come from a single non-equivalent group, while the other two groups come from a different non-equivalent group. For instance, say you want to test customer satisfaction with a new online service that is implemented in one city but not in another. In this case, customers in the first city serve as the treatment group and those in the second city constitute the control group. If it is not possible to obtain pretest and posttest measures from the same customers, you can measure customer satisfaction at one point in time, implement the new service program, and measure customer satisfaction (with a different set of customers) after the program is implemented. Customer satisfaction is also measured in the control group at the same times as in the treatment group, but without the new program implementation. The design is not particularly strong, because you cannot examine the changes in any specific customer’s satisfaction score before and after the implementation, but you can only examine average customer satisfaction scores. Despite the lower internal validity, this design may still be a useful way of collecting quasi-experimental data when pretest and posttest data is not available from the same subjects.

Separate pretest-posttest samples design

An interesting variation of the NEDV design is a pattern-matching NEDV design , which employs multiple outcome variables and a theory that explains how much each variable will be affected by the treatment. The researcher can then examine if the theoretical prediction is matched in actual observations. This pattern-matching technique—based on the degree of correspondence between theoretical and observed patterns—is a powerful way of alleviating internal validity concerns in the original NEDV design.

NEDV design

Perils of experimental research

Experimental research is one of the most difficult of research designs, and should not be taken lightly. This type of research is often best with a multitude of methodological problems. First, though experimental research requires theories for framing hypotheses for testing, much of current experimental research is atheoretical. Without theories, the hypotheses being tested tend to be ad hoc, possibly illogical, and meaningless. Second, many of the measurement instruments used in experimental research are not tested for reliability and validity, and are incomparable across studies. Consequently, results generated using such instruments are also incomparable. Third, often experimental research uses inappropriate research designs, such as irrelevant dependent variables, no interaction effects, no experimental controls, and non-equivalent stimulus across treatment groups. Findings from such studies tend to lack internal validity and are highly suspect. Fourth, the treatments (tasks) used in experimental research may be diverse, incomparable, and inconsistent across studies, and sometimes inappropriate for the subject population. For instance, undergraduate student subjects are often asked to pretend that they are marketing managers and asked to perform a complex budget allocation task in which they have no experience or expertise. The use of such inappropriate tasks, introduces new threats to internal validity (i.e., subject’s performance may be an artefact of the content or difficulty of the task setting), generates findings that are non-interpretable and meaningless, and makes integration of findings across studies impossible.

The design of proper experimental treatments is a very important task in experimental design, because the treatment is the raison d’etre of the experimental method, and must never be rushed or neglected. To design an adequate and appropriate task, researchers should use prevalidated tasks if available, conduct treatment manipulation checks to check for the adequacy of such tasks (by debriefing subjects after performing the assigned task), conduct pilot tests (repeatedly, if necessary), and if in doubt, use tasks that are simple and familiar for the respondent sample rather than tasks that are complex or unfamiliar.

In summary, this chapter introduced key concepts in the experimental design research method and introduced a variety of true experimental and quasi-experimental designs. Although these designs vary widely in internal validity, designs with less internal validity should not be overlooked and may sometimes be useful under specific circumstances and empirical contingencies.

Social Science Research: Principles, Methods and Practices (Revised edition) Copyright © 2019 by Anol Bhattacherjee is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License , except where otherwise noted.

Share This Book

Have a language expert improve your writing

Run a free plagiarism check in 10 minutes, automatically generate references for free.

  • Knowledge Base
  • Methodology

Research Design | Step-by-Step Guide with Examples

Published on 5 May 2022 by Shona McCombes . Revised on 20 March 2023.

A research design is a strategy for answering your research question  using empirical data. Creating a research design means making decisions about:

  • Your overall aims and approach
  • The type of research design you’ll use
  • Your sampling methods or criteria for selecting subjects
  • Your data collection methods
  • The procedures you’ll follow to collect data
  • Your data analysis methods

A well-planned research design helps ensure that your methods match your research aims and that you use the right kind of analysis for your data.

Table of contents

Step 1: consider your aims and approach, step 2: choose a type of research design, step 3: identify your population and sampling method, step 4: choose your data collection methods, step 5: plan your data collection procedures, step 6: decide on your data analysis strategies, frequently asked questions.

  • Introduction

Before you can start designing your research, you should already have a clear idea of the research question you want to investigate.

There are many different ways you could go about answering this question. Your research design choices should be driven by your aims and priorities – start by thinking carefully about what you want to achieve.

The first choice you need to make is whether you’ll take a qualitative or quantitative approach.

Qualitative approach Quantitative approach

Qualitative research designs tend to be more flexible and inductive , allowing you to adjust your approach based on what you find throughout the research process.

Quantitative research designs tend to be more fixed and deductive , with variables and hypotheses clearly defined in advance of data collection.

It’s also possible to use a mixed methods design that integrates aspects of both approaches. By combining qualitative and quantitative insights, you can gain a more complete picture of the problem you’re studying and strengthen the credibility of your conclusions.

Practical and ethical considerations when designing research

As well as scientific considerations, you need to think practically when designing your research. If your research involves people or animals, you also need to consider research ethics .

  • How much time do you have to collect data and write up the research?
  • Will you be able to gain access to the data you need (e.g., by travelling to a specific location or contacting specific people)?
  • Do you have the necessary research skills (e.g., statistical analysis or interview techniques)?
  • Will you need ethical approval ?

At each stage of the research design process, make sure that your choices are practically feasible.

Prevent plagiarism, run a free check.

Within both qualitative and quantitative approaches, there are several types of research design to choose from. Each type provides a framework for the overall shape of your research.

Types of quantitative research designs

Quantitative designs can be split into four main types. Experimental and   quasi-experimental designs allow you to test cause-and-effect relationships, while descriptive and correlational designs allow you to measure variables and describe relationships between them.

Type of design Purpose and characteristics
Experimental
Quasi-experimental
Correlational
Descriptive

With descriptive and correlational designs, you can get a clear picture of characteristics, trends, and relationships as they exist in the real world. However, you can’t draw conclusions about cause and effect (because correlation doesn’t imply causation ).

Experiments are the strongest way to test cause-and-effect relationships without the risk of other variables influencing the results. However, their controlled conditions may not always reflect how things work in the real world. They’re often also more difficult and expensive to implement.

Types of qualitative research designs

Qualitative designs are less strictly defined. This approach is about gaining a rich, detailed understanding of a specific context or phenomenon, and you can often be more creative and flexible in designing your research.

The table below shows some common types of qualitative design. They often have similar approaches in terms of data collection, but focus on different aspects when analysing the data.

Type of design Purpose and characteristics
Grounded theory
Phenomenology

Your research design should clearly define who or what your research will focus on, and how you’ll go about choosing your participants or subjects.

In research, a population is the entire group that you want to draw conclusions about, while a sample is the smaller group of individuals you’ll actually collect data from.

Defining the population

A population can be made up of anything you want to study – plants, animals, organisations, texts, countries, etc. In the social sciences, it most often refers to a group of people.

For example, will you focus on people from a specific demographic, region, or background? Are you interested in people with a certain job or medical condition, or users of a particular product?

The more precisely you define your population, the easier it will be to gather a representative sample.

Sampling methods

Even with a narrowly defined population, it’s rarely possible to collect data from every individual. Instead, you’ll collect data from a sample.

To select a sample, there are two main approaches: probability sampling and non-probability sampling . The sampling method you use affects how confidently you can generalise your results to the population as a whole.

Probability sampling Non-probability sampling

Probability sampling is the most statistically valid option, but it’s often difficult to achieve unless you’re dealing with a very small and accessible population.

For practical reasons, many studies use non-probability sampling, but it’s important to be aware of the limitations and carefully consider potential biases. You should always make an effort to gather a sample that’s as representative as possible of the population.

Case selection in qualitative research

In some types of qualitative designs, sampling may not be relevant.

For example, in an ethnography or a case study, your aim is to deeply understand a specific context, not to generalise to a population. Instead of sampling, you may simply aim to collect as much data as possible about the context you are studying.

In these types of design, you still have to carefully consider your choice of case or community. You should have a clear rationale for why this particular case is suitable for answering your research question.

For example, you might choose a case study that reveals an unusual or neglected aspect of your research problem, or you might choose several very similar or very different cases in order to compare them.

Data collection methods are ways of directly measuring variables and gathering information. They allow you to gain first-hand knowledge and original insights into your research problem.

You can choose just one data collection method, or use several methods in the same study.

Survey methods

Surveys allow you to collect data about opinions, behaviours, experiences, and characteristics by asking people directly. There are two main survey methods to choose from: questionnaires and interviews.

Questionnaires Interviews

Observation methods

Observations allow you to collect data unobtrusively, observing characteristics, behaviours, or social interactions without relying on self-reporting.

Observations may be conducted in real time, taking notes as you observe, or you might make audiovisual recordings for later analysis. They can be qualitative or quantitative.

Quantitative observation

Other methods of data collection

There are many other ways you might collect data depending on your field and topic.

Field Examples of data collection methods
Media & communication Collecting a sample of texts (e.g., speeches, articles, or social media posts) for data on cultural norms and narratives
Psychology Using technologies like neuroimaging, eye-tracking, or computer-based tasks to collect data on things like attention, emotional response, or reaction time
Education Using tests or assignments to collect data on knowledge and skills
Physical sciences Using scientific instruments to collect data on things like weight, blood pressure, or chemical composition

If you’re not sure which methods will work best for your research design, try reading some papers in your field to see what data collection methods they used.

Secondary data

If you don’t have the time or resources to collect data from the population you’re interested in, you can also choose to use secondary data that other researchers already collected – for example, datasets from government surveys or previous studies on your topic.

With this raw data, you can do your own analysis to answer new research questions that weren’t addressed by the original study.

Using secondary data can expand the scope of your research, as you may be able to access much larger and more varied samples than you could collect yourself.

However, it also means you don’t have any control over which variables to measure or how to measure them, so the conclusions you can draw may be limited.

As well as deciding on your methods, you need to plan exactly how you’ll use these methods to collect data that’s consistent, accurate, and unbiased.

Planning systematic procedures is especially important in quantitative research, where you need to precisely define your variables and ensure your measurements are reliable and valid.

Operationalisation

Some variables, like height or age, are easily measured. But often you’ll be dealing with more abstract concepts, like satisfaction, anxiety, or competence. Operationalisation means turning these fuzzy ideas into measurable indicators.

If you’re using observations , which events or actions will you count?

If you’re using surveys , which questions will you ask and what range of responses will be offered?

You may also choose to use or adapt existing materials designed to measure the concept you’re interested in – for example, questionnaires or inventories whose reliability and validity has already been established.

Reliability and validity

Reliability means your results can be consistently reproduced , while validity means that you’re actually measuring the concept you’re interested in.

Reliability Validity

For valid and reliable results, your measurement materials should be thoroughly researched and carefully designed. Plan your procedures to make sure you carry out the same steps in the same way for each participant.

If you’re developing a new questionnaire or other instrument to measure a specific concept, running a pilot study allows you to check its validity and reliability in advance.

Sampling procedures

As well as choosing an appropriate sampling method, you need a concrete plan for how you’ll actually contact and recruit your selected sample.

That means making decisions about things like:

  • How many participants do you need for an adequate sample size?
  • What inclusion and exclusion criteria will you use to identify eligible participants?
  • How will you contact your sample – by mail, online, by phone, or in person?

If you’re using a probability sampling method, it’s important that everyone who is randomly selected actually participates in the study. How will you ensure a high response rate?

If you’re using a non-probability method, how will you avoid bias and ensure a representative sample?

Data management

It’s also important to create a data management plan for organising and storing your data.

Will you need to transcribe interviews or perform data entry for observations? You should anonymise and safeguard any sensitive data, and make sure it’s backed up regularly.

Keeping your data well organised will save time when it comes to analysing them. It can also help other researchers validate and add to your findings.

On their own, raw data can’t answer your research question. The last step of designing your research is planning how you’ll analyse the data.

Quantitative data analysis

In quantitative research, you’ll most likely use some form of statistical analysis . With statistics, you can summarise your sample data, make estimates, and test hypotheses.

Using descriptive statistics , you can summarise your sample data in terms of:

  • The distribution of the data (e.g., the frequency of each score on a test)
  • The central tendency of the data (e.g., the mean to describe the average score)
  • The variability of the data (e.g., the standard deviation to describe how spread out the scores are)

The specific calculations you can do depend on the level of measurement of your variables.

Using inferential statistics , you can:

  • Make estimates about the population based on your sample data.
  • Test hypotheses about a relationship between variables.

Regression and correlation tests look for associations between two or more variables, while comparison tests (such as t tests and ANOVAs ) look for differences in the outcomes of different groups.

Your choice of statistical test depends on various aspects of your research design, including the types of variables you’re dealing with and the distribution of your data.

Qualitative data analysis

In qualitative research, your data will usually be very dense with information and ideas. Instead of summing it up in numbers, you’ll need to comb through the data in detail, interpret its meanings, identify patterns, and extract the parts that are most relevant to your research question.

Two of the most common approaches to doing this are thematic analysis and discourse analysis .

Approach Characteristics
Thematic analysis
Discourse analysis

There are many other ways of analysing qualitative data depending on the aims of your research. To get a sense of potential approaches, try reading some qualitative research papers in your field.

A sample is a subset of individuals from a larger population. Sampling means selecting the group that you will actually collect data from in your research.

For example, if you are researching the opinions of students in your university, you could survey a sample of 100 students.

Statistical sampling allows you to test a hypothesis about the characteristics of a population. There are various sampling methods you can use to ensure that your sample is representative of the population as a whole.

Operationalisation means turning abstract conceptual ideas into measurable observations.

For example, the concept of social anxiety isn’t directly observable, but it can be operationally defined in terms of self-rating scores, behavioural avoidance of crowded places, or physical anxiety symptoms in social situations.

Before collecting data , it’s important to consider how you will operationalise the variables that you want to measure.

The research methods you use depend on the type of data you need to answer your research question .

  • If you want to measure something or test a hypothesis , use quantitative methods . If you want to explore ideas, thoughts, and meanings, use qualitative methods .
  • If you want to analyse a large amount of readily available data, use secondary data. If you want data specific to your purposes with control over how they are generated, collect primary data.
  • If you want to establish cause-and-effect relationships between variables , use experimental methods. If you want to understand the characteristics of a research subject, use descriptive methods.

Cite this Scribbr article

If you want to cite this source, you can copy and paste the citation or click the ‘Cite this Scribbr article’ button to automatically add the citation to our free Reference Generator.

McCombes, S. (2023, March 20). Research Design | Step-by-Step Guide with Examples. Scribbr. Retrieved 26 August 2024, from https://www.scribbr.co.uk/research-methods/research-design/

Is this article helpful?

Shona McCombes

Shona McCombes

Experimental design: Guide, steps, examples

Last updated

27 April 2023

Reviewed by

Miroslav Damyanov

Short on time? Get an AI generated summary of this article instead

Experimental research design is a scientific framework that allows you to manipulate one or more variables while controlling the test environment. 

When testing a theory or new product, it can be helpful to have a certain level of control and manipulate variables to discover different outcomes. You can use these experiments to determine cause and effect or study variable associations. 

This guide explores the types of experimental design, the steps in designing an experiment, and the advantages and limitations of experimental design. 

Make research less tedious

Dovetail streamlines research to help you uncover and share actionable insights

  • What is experimental research design?

You can determine the relationship between each of the variables by: 

Manipulating one or more independent variables (i.e., stimuli or treatments)

Applying the changes to one or more dependent variables (i.e., test groups or outcomes)

With the ability to analyze the relationship between variables and using measurable data, you can increase the accuracy of the result. 

What is a good experimental design?

A good experimental design requires: 

Significant planning to ensure control over the testing environment

Sound experimental treatments

Properly assigning subjects to treatment groups

Without proper planning, unexpected external variables can alter an experiment's outcome. 

To meet your research goals, your experimental design should include these characteristics:

Provide unbiased estimates of inputs and associated uncertainties

Enable the researcher to detect differences caused by independent variables

Include a plan for analysis and reporting of the results

Provide easily interpretable results with specific conclusions

What's the difference between experimental and quasi-experimental design?

The major difference between experimental and quasi-experimental design is the random assignment of subjects to groups. 

A true experiment relies on certain controls. Typically, the researcher designs the treatment and randomly assigns subjects to control and treatment groups. 

However, these conditions are unethical or impossible to achieve in some situations.

When it's unethical or impractical to assign participants randomly, that’s when a quasi-experimental design comes in. 

This design allows researchers to conduct a similar experiment by assigning subjects to groups based on non-random criteria. 

Another type of quasi-experimental design might occur when the researcher doesn't have control over the treatment but studies pre-existing groups after they receive different treatments.

When can a researcher conduct experimental research?

Various settings and professions can use experimental research to gather information and observe behavior in controlled settings. 

Basically, a researcher can conduct experimental research any time they want to test a theory with variable and dependent controls. 

Experimental research is an option when the project includes an independent variable and a desire to understand the relationship between cause and effect. 

  • The importance of experimental research design

Experimental research enables researchers to conduct studies that provide specific, definitive answers to questions and hypotheses. 

Researchers can test Independent variables in controlled settings to:

Test the effectiveness of a new medication

Design better products for consumers

Answer questions about human health and behavior

Developing a quality research plan means a researcher can accurately answer vital research questions with minimal error. As a result, definitive conclusions can influence the future of the independent variable. 

Types of experimental research designs

There are three main types of experimental research design. The research type you use will depend on the criteria of your experiment, your research budget, and environmental limitations. 

Pre-experimental research design

A pre-experimental research study is a basic observational study that monitors independent variables’ effects. 

During research, you observe one or more groups after applying a treatment to test whether the treatment causes any change. 

The three subtypes of pre-experimental research design are:

One-shot case study research design

This research method introduces a single test group to a single stimulus to study the results at the end of the application. 

After researchers presume the stimulus or treatment has caused changes, they gather results to determine how it affects the test subjects. 

One-group pretest-posttest design

This method uses a single test group but includes a pretest study as a benchmark. The researcher applies a test before and after the group’s exposure to a specific stimulus. 

Static group comparison design

This method includes two or more groups, enabling the researcher to use one group as a control. They apply a stimulus to one group and leave the other group static. 

A posttest study compares the results among groups. 

True experimental research design

A true experiment is the most common research method. It involves statistical analysis to prove or disprove a specific hypothesis . 

Under completely experimental conditions, researchers expose participants in two or more randomized groups to different stimuli. 

Random selection removes any potential for bias, providing more reliable results. 

These are the three main sub-groups of true experimental research design:

Posttest-only control group design

This structure requires the researcher to divide participants into two random groups. One group receives no stimuli and acts as a control while the other group experiences stimuli.

Researchers perform a test at the end of the experiment to observe the stimuli exposure results.

Pretest-posttest control group design

This test also requires two groups. It includes a pretest as a benchmark before introducing the stimulus. 

The pretest introduces multiple ways to test subjects. For instance, if the control group also experiences a change, it reveals that taking the test twice changes the results.

Solomon four-group design

This structure divides subjects into two groups, with two as control groups. Researchers assign the first control group a posttest only and the second control group a pretest and a posttest. 

The two variable groups mirror the control groups, but researchers expose them to stimuli. The ability to differentiate between groups in multiple ways provides researchers with more testing approaches for data-based conclusions. 

Quasi-experimental research design

Although closely related to a true experiment, quasi-experimental research design differs in approach and scope. 

Quasi-experimental research design doesn’t have randomly selected participants. Researchers typically divide the groups in this research by pre-existing differences. 

Quasi-experimental research is more common in educational studies, nursing, or other research projects where it's not ethical or practical to use randomized subject groups.

  • 5 steps for designing an experiment

Experimental research requires a clearly defined plan to outline the research parameters and expected goals. 

Here are five key steps in designing a successful experiment:

Step 1: Define variables and their relationship

Your experiment should begin with a question: What are you hoping to learn through your experiment? 

The relationship between variables in your study will determine your answer.

Define the independent variable (the intended stimuli) and the dependent variable (the expected effect of the stimuli). After identifying these groups, consider how you might control them in your experiment. 

Could natural variations affect your research? If so, your experiment should include a pretest and posttest. 

Step 2: Develop a specific, testable hypothesis

With a firm understanding of the system you intend to study, you can write a specific, testable hypothesis. 

What is the expected outcome of your study? 

Develop a prediction about how the independent variable will affect the dependent variable. 

How will the stimuli in your experiment affect your test subjects? 

Your hypothesis should provide a prediction of the answer to your research question . 

Step 3: Design experimental treatments to manipulate your independent variable

Depending on your experiment, your variable may be a fixed stimulus (like a medical treatment) or a variable stimulus (like a period during which an activity occurs). 

Determine which type of stimulus meets your experiment’s needs and how widely or finely to vary your stimuli. 

Step 4: Assign subjects to groups

When you have a clear idea of how to carry out your experiment, you can determine how to assemble test groups for an accurate study. 

When choosing your study groups, consider: 

The size of your experiment

Whether you can select groups randomly

Your target audience for the outcome of the study

You should be able to create groups with an equal number of subjects and include subjects that match your target audience. Remember, you should assign one group as a control and use one or more groups to study the effects of variables. 

Step 5: Plan how to measure your dependent variable

This step determines how you'll collect data to determine the study's outcome. You should seek reliable and valid measurements that minimize research bias or error. 

You can measure some data with scientific tools, while you’ll need to operationalize other forms to turn them into measurable observations.

  • Advantages of experimental research

Experimental research is an integral part of our world. It allows researchers to conduct experiments that answer specific questions. 

While researchers use many methods to conduct different experiments, experimental research offers these distinct benefits:

Researchers can determine cause and effect by manipulating variables.

It gives researchers a high level of control.

Researchers can test multiple variables within a single experiment.

All industries and fields of knowledge can use it. 

Researchers can duplicate results to promote the validity of the study .

Replicating natural settings rapidly means immediate research.

Researchers can combine it with other research methods.

It provides specific conclusions about the validity of a product, theory, or idea.

  • Disadvantages (or limitations) of experimental research

Unfortunately, no research type yields ideal conditions or perfect results. 

While experimental research might be the right choice for some studies, certain conditions could render experiments useless or even dangerous. 

Before conducting experimental research, consider these disadvantages and limitations:

Required professional qualification

Only competent professionals with an academic degree and specific training are qualified to conduct rigorous experimental research. This ensures results are unbiased and valid. 

Limited scope

Experimental research may not capture the complexity of some phenomena, such as social interactions or cultural norms. These are difficult to control in a laboratory setting.

Resource-intensive

Experimental research can be expensive, time-consuming, and require significant resources, such as specialized equipment or trained personnel.

Limited generalizability

The controlled nature means the research findings may not fully apply to real-world situations or people outside the experimental setting.

Practical or ethical concerns

Some experiments may involve manipulating variables that could harm participants or violate ethical guidelines . 

Researchers must ensure their experiments do not cause harm or discomfort to participants. 

Sometimes, recruiting a sample of people to randomly assign may be difficult. 

  • Experimental research design example

Experiments across all industries and research realms provide scientists, developers, and other researchers with definitive answers. These experiments can solve problems, create inventions, and heal illnesses. 

Product design testing is an excellent example of experimental research. 

A company in the product development phase creates multiple prototypes for testing. With a randomized selection, researchers introduce each test group to a different prototype. 

When groups experience different product designs , the company can assess which option most appeals to potential customers. 

Experimental research design provides researchers with a controlled environment to conduct experiments that evaluate cause and effect. 

Using the five steps to develop a research plan ensures you anticipate and eliminate external variables while answering life’s crucial questions.

Should you be using a customer insights hub?

Do you want to discover previous research faster?

Do you share your research findings with others?

Do you analyze research data?

Start for free today, add your research, and get to key insights faster

Editor’s picks

Last updated: 18 April 2023

Last updated: 27 February 2023

Last updated: 22 August 2024

Last updated: 5 February 2023

Last updated: 16 August 2024

Last updated: 9 March 2023

Last updated: 30 April 2024

Last updated: 12 December 2023

Last updated: 11 March 2024

Last updated: 4 July 2024

Last updated: 6 March 2024

Last updated: 5 March 2024

Last updated: 13 May 2024

Latest articles

Related topics, .css-je19u9{-webkit-align-items:flex-end;-webkit-box-align:flex-end;-ms-flex-align:flex-end;align-items:flex-end;display:-webkit-box;display:-webkit-flex;display:-ms-flexbox;display:flex;-webkit-flex-direction:row;-ms-flex-direction:row;flex-direction:row;-webkit-box-flex-wrap:wrap;-webkit-flex-wrap:wrap;-ms-flex-wrap:wrap;flex-wrap:wrap;-webkit-box-pack:center;-ms-flex-pack:center;-webkit-justify-content:center;justify-content:center;row-gap:0;text-align:center;max-width:671px;}@media (max-width: 1079px){.css-je19u9{max-width:400px;}.css-je19u9>span{white-space:pre;}}@media (max-width: 799px){.css-je19u9{max-width:400px;}.css-je19u9>span{white-space:pre;}} decide what to .css-1kiodld{max-height:56px;display:-webkit-box;display:-webkit-flex;display:-ms-flexbox;display:flex;-webkit-align-items:center;-webkit-box-align:center;-ms-flex-align:center;align-items:center;}@media (max-width: 1079px){.css-1kiodld{display:none;}} build next, decide what to build next.

  • Types of experimental

Log in or sign up

Get started for free

  • Experimental Research Designs: Types, Examples & Methods

busayo.longe

Experimental research is the most familiar type of research design for individuals in the physical sciences and a host of other fields. This is mainly because experimental research is a classical scientific experiment, similar to those performed in high school science classes.

Imagine taking 2 samples of the same plant and exposing one of them to sunlight, while the other is kept away from sunlight. Let the plant exposed to sunlight be called sample A, while the latter is called sample B.

If after the duration of the research, we find out that sample A grows and sample B dies, even though they are both regularly wetted and given the same treatment. Therefore, we can conclude that sunlight will aid growth in all similar plants.

What is Experimental Research?

Experimental research is a scientific approach to research, where one or more independent variables are manipulated and applied to one or more dependent variables to measure their effect on the latter. The effect of the independent variables on the dependent variables is usually observed and recorded over some time, to aid researchers in drawing a reasonable conclusion regarding the relationship between these 2 variable types.

The experimental research method is widely used in physical and social sciences, psychology, and education. It is based on the comparison between two or more groups with a straightforward logic, which may, however, be difficult to execute.

Mostly related to a laboratory test procedure, experimental research designs involve collecting quantitative data and performing statistical analysis on them during research. Therefore, making it an example of quantitative research method .

What are The Types of Experimental Research Design?

The types of experimental research design are determined by the way the researcher assigns subjects to different conditions and groups. They are of 3 types, namely; pre-experimental, quasi-experimental, and true experimental research.

Pre-experimental Research Design

In pre-experimental research design, either a group or various dependent groups are observed for the effect of the application of an independent variable which is presumed to cause change. It is the simplest form of experimental research design and is treated with no control group.

Although very practical, experimental research is lacking in several areas of the true-experimental criteria. The pre-experimental research design is further divided into three types

  • One-shot Case Study Research Design

In this type of experimental study, only one dependent group or variable is considered. The study is carried out after some treatment which was presumed to cause change, making it a posttest study.

  • One-group Pretest-posttest Research Design: 

This research design combines both posttest and pretest study by carrying out a test on a single group before the treatment is administered and after the treatment is administered. With the former being administered at the beginning of treatment and later at the end.

  • Static-group Comparison: 

In a static-group comparison study, 2 or more groups are placed under observation, where only one of the groups is subjected to some treatment while the other groups are held static. All the groups are post-tested, and the observed differences between the groups are assumed to be a result of the treatment.

Quasi-experimental Research Design

  The word “quasi” means partial, half, or pseudo. Therefore, the quasi-experimental research bearing a resemblance to the true experimental research, but not the same.  In quasi-experiments, the participants are not randomly assigned, and as such, they are used in settings where randomization is difficult or impossible.

 This is very common in educational research, where administrators are unwilling to allow the random selection of students for experimental samples.

Some examples of quasi-experimental research design include; the time series, no equivalent control group design, and the counterbalanced design.

True Experimental Research Design

The true experimental research design relies on statistical analysis to approve or disprove a hypothesis. It is the most accurate type of experimental design and may be carried out with or without a pretest on at least 2 randomly assigned dependent subjects.

The true experimental research design must contain a control group, a variable that can be manipulated by the researcher, and the distribution must be random. The classification of true experimental design include:

  • The posttest-only Control Group Design: In this design, subjects are randomly selected and assigned to the 2 groups (control and experimental), and only the experimental group is treated. After close observation, both groups are post-tested, and a conclusion is drawn from the difference between these groups.
  • The pretest-posttest Control Group Design: For this control group design, subjects are randomly assigned to the 2 groups, both are presented, but only the experimental group is treated. After close observation, both groups are post-tested to measure the degree of change in each group.
  • Solomon four-group Design: This is the combination of the pretest-only and the pretest-posttest control groups. In this case, the randomly selected subjects are placed into 4 groups.

The first two of these groups are tested using the posttest-only method, while the other two are tested using the pretest-posttest method.

Examples of Experimental Research

Experimental research examples are different, depending on the type of experimental research design that is being considered. The most basic example of experimental research is laboratory experiments, which may differ in nature depending on the subject of research.

Administering Exams After The End of Semester

During the semester, students in a class are lectured on particular courses and an exam is administered at the end of the semester. In this case, the students are the subjects or dependent variables while the lectures are the independent variables treated on the subjects.

Only one group of carefully selected subjects are considered in this research, making it a pre-experimental research design example. We will also notice that tests are only carried out at the end of the semester, and not at the beginning.

Further making it easy for us to conclude that it is a one-shot case study research. 

Employee Skill Evaluation

Before employing a job seeker, organizations conduct tests that are used to screen out less qualified candidates from the pool of qualified applicants. This way, organizations can determine an employee’s skill set at the point of employment.

In the course of employment, organizations also carry out employee training to improve employee productivity and generally grow the organization. Further evaluation is carried out at the end of each training to test the impact of the training on employee skills, and test for improvement.

Here, the subject is the employee, while the treatment is the training conducted. This is a pretest-posttest control group experimental research example.

Evaluation of Teaching Method

Let us consider an academic institution that wants to evaluate the teaching method of 2 teachers to determine which is best. Imagine a case whereby the students assigned to each teacher is carefully selected probably due to personal request by parents or due to stubbornness and smartness.

This is a no equivalent group design example because the samples are not equal. By evaluating the effectiveness of each teacher’s teaching method this way, we may conclude after a post-test has been carried out.

However, this may be influenced by factors like the natural sweetness of a student. For example, a very smart student will grab more easily than his or her peers irrespective of the method of teaching.

What are the Characteristics of Experimental Research?  

Experimental research contains dependent, independent and extraneous variables. The dependent variables are the variables being treated or manipulated and are sometimes called the subject of the research.

The independent variables are the experimental treatment being exerted on the dependent variables. Extraneous variables, on the other hand, are other factors affecting the experiment that may also contribute to the change.

The setting is where the experiment is carried out. Many experiments are carried out in the laboratory, where control can be exerted on the extraneous variables, thereby eliminating them.

Other experiments are carried out in a less controllable setting. The choice of setting used in research depends on the nature of the experiment being carried out.

  • Multivariable

Experimental research may include multiple independent variables, e.g. time, skills, test scores, etc.

Why Use Experimental Research Design?  

Experimental research design can be majorly used in physical sciences, social sciences, education, and psychology. It is used to make predictions and draw conclusions on a subject matter. 

Some uses of experimental research design are highlighted below.

  • Medicine: Experimental research is used to provide the proper treatment for diseases. In most cases, rather than directly using patients as the research subject, researchers take a sample of the bacteria from the patient’s body and are treated with the developed antibacterial

The changes observed during this period are recorded and evaluated to determine its effectiveness. This process can be carried out using different experimental research methods.

  • Education: Asides from science subjects like Chemistry and Physics which involves teaching students how to perform experimental research, it can also be used in improving the standard of an academic institution. This includes testing students’ knowledge on different topics, coming up with better teaching methods, and the implementation of other programs that will aid student learning.
  • Human Behavior: Social scientists are the ones who mostly use experimental research to test human behaviour. For example, consider 2 people randomly chosen to be the subject of the social interaction research where one person is placed in a room without human interaction for 1 year.

The other person is placed in a room with a few other people, enjoying human interaction. There will be a difference in their behaviour at the end of the experiment.

  • UI/UX: During the product development phase, one of the major aims of the product team is to create a great user experience with the product. Therefore, before launching the final product design, potential are brought in to interact with the product.

For example, when finding it difficult to choose how to position a button or feature on the app interface, a random sample of product testers are allowed to test the 2 samples and how the button positioning influences the user interaction is recorded.

What are the Disadvantages of Experimental Research?  

  • It is highly prone to human error due to its dependency on variable control which may not be properly implemented. These errors could eliminate the validity of the experiment and the research being conducted.
  • Exerting control of extraneous variables may create unrealistic situations. Eliminating real-life variables will result in inaccurate conclusions. This may also result in researchers controlling the variables to suit his or her personal preferences.
  • It is a time-consuming process. So much time is spent on testing dependent variables and waiting for the effect of the manipulation of dependent variables to manifest.
  • It is expensive.
  • It is very risky and may have ethical complications that cannot be ignored. This is common in medical research, where failed trials may lead to a patient’s death or a deteriorating health condition.
  • Experimental research results are not descriptive.
  • Response bias can also be supplied by the subject of the conversation.
  • Human responses in experimental research can be difficult to measure.

What are the Data Collection Methods in Experimental Research?  

Data collection methods in experimental research are the different ways in which data can be collected for experimental research. They are used in different cases, depending on the type of research being carried out.

1. Observational Study

This type of study is carried out over a long period. It measures and observes the variables of interest without changing existing conditions.

When researching the effect of social interaction on human behavior, the subjects who are placed in 2 different environments are observed throughout the research. No matter the kind of absurd behavior that is exhibited by the subject during this period, its condition will not be changed.

This may be a very risky thing to do in medical cases because it may lead to death or worse medical conditions.

2. Simulations

This procedure uses mathematical, physical, or computer models to replicate a real-life process or situation. It is frequently used when the actual situation is too expensive, dangerous, or impractical to replicate in real life.

This method is commonly used in engineering and operational research for learning purposes and sometimes as a tool to estimate possible outcomes of real research. Some common situation software are Simulink, MATLAB, and Simul8.

Not all kinds of experimental research can be carried out using simulation as a data collection tool . It is very impractical for a lot of laboratory-based research that involves chemical processes.

A survey is a tool used to gather relevant data about the characteristics of a population and is one of the most common data collection tools. A survey consists of a group of questions prepared by the researcher, to be answered by the research subject.

Surveys can be shared with the respondents both physically and electronically. When collecting data through surveys, the kind of data collected depends on the respondent, and researchers have limited control over it.

Formplus is the best tool for collecting experimental data using survey s. It has relevant features that will aid the data collection process and can also be used in other aspects of experimental research.

Differences between Experimental and Non-Experimental Research 

1. In experimental research, the researcher can control and manipulate the environment of the research, including the predictor variable which can be changed. On the other hand, non-experimental research cannot be controlled or manipulated by the researcher at will.

This is because it takes place in a real-life setting, where extraneous variables cannot be eliminated. Therefore, it is more difficult to conclude non-experimental studies, even though they are much more flexible and allow for a greater range of study fields.

2. The relationship between cause and effect cannot be established in non-experimental research, while it can be established in experimental research. This may be because many extraneous variables also influence the changes in the research subject, making it difficult to point at a particular variable as the cause of a particular change

3. Independent variables are not introduced, withdrawn, or manipulated in non-experimental designs, but the same may not be said about experimental research.

Experimental Research vs. Alternatives and When to Use Them

1. experimental research vs causal comparative.

Experimental research enables you to control variables and identify how the independent variable affects the dependent variable. Causal-comparative find out the cause-and-effect relationship between the variables by comparing already existing groups that are affected differently by the independent variable.

For example, in an experiment to see how K-12 education affects children and teenager development. An experimental research would split the children into groups, some would get formal K-12 education, while others won’t. This is not ethically right because every child has the right to education. So, what we do instead would be to compare already existing groups of children who are getting formal education with those who due to some circumstances can not.

Pros and Cons of Experimental vs Causal-Comparative Research

  • Causal-Comparative:   Strengths:  More realistic than experiments, can be conducted in real-world settings.  Weaknesses:  Establishing causality can be weaker due to the lack of manipulation.

2. Experimental Research vs Correlational Research

When experimenting, you are trying to establish a cause-and-effect relationship between different variables. For example, you are trying to establish the effect of heat on water, the temperature keeps changing (independent variable) and you see how it affects the water (dependent variable).

For correlational research, you are not necessarily interested in the why or the cause-and-effect relationship between the variables, you are focusing on the relationship. Using the same water and temperature example, you are only interested in the fact that they change, you are not investigating which of the variables or other variables causes them to change.

Pros and Cons of Experimental vs Correlational Research

3. experimental research vs descriptive research.

With experimental research, you alter the independent variable to see how it affects the dependent variable, but with descriptive research you are simply studying the characteristics of the variable you are studying.

So, in an experiment to see how blown glass reacts to temperature, experimental research would keep altering the temperature to varying levels of high and low to see how it affects the dependent variable (glass). But descriptive research would investigate the glass properties.

Pros and Cons of Experimental vs Descriptive Research

4. experimental research vs action research.

Experimental research tests for causal relationships by focusing on one independent variable vs the dependent variable and keeps other variables constant. So, you are testing hypotheses and using the information from the research to contribute to knowledge.

However, with action research, you are using a real-world setting which means you are not controlling variables. You are also performing the research to solve actual problems and improve already established practices.

For example, if you are testing for how long commutes affect workers’ productivity. With experimental research, you would vary the length of commute to see how the time affects work. But with action research, you would account for other factors such as weather, commute route, nutrition, etc. Also, experimental research helps know the relationship between commute time and productivity, while action research helps you look for ways to improve productivity

Pros and Cons of Experimental vs Action Research

Conclusion  .

Experimental research designs are often considered to be the standard in research designs. This is partly due to the common misconception that research is equivalent to scientific experiments—a component of experimental research design.

In this research design, one or more subjects or dependent variables are randomly assigned to different treatments (i.e. independent variables manipulated by the researcher) and the results are observed to conclude. One of the uniqueness of experimental research is in its ability to control the effect of extraneous variables.

Experimental research is suitable for research whose goal is to examine cause-effect relationships, e.g. explanatory research. It can be conducted in the laboratory or field settings, depending on the aim of the research that is being carried out. 

Logo

Connect to Formplus, Get Started Now - It's Free!

  • examples of experimental research
  • experimental research methods
  • types of experimental research
  • busayo.longe

Formplus

You may also like:

Simpson’s Paradox & How to Avoid it in Experimental Research

In this article, we are going to look at Simpson’s Paradox from its historical point and later, we’ll consider its effect in...

research design experimental method

Response vs Explanatory Variables: Definition & Examples

In this article, we’ll be comparing the two types of variables, what they both mean and see some of their real-life applications in research

What is Experimenter Bias? Definition, Types & Mitigation

In this article, we will look into the concept of experimental bias and how it can be identified in your research

Experimental Vs Non-Experimental Research: 15 Key Differences

Differences between experimental and non experimental research on definitions, types, examples, data collection tools, uses, advantages etc.

Formplus - For Seamless Data Collection

Collect data the right way with a versatile data collection tool. try formplus and transform your work productivity today..

Have a language expert improve your writing

Run a free plagiarism check in 10 minutes, generate accurate citations for free.

  • Knowledge Base

Methodology

  • Types of Research Designs Compared | Guide & Examples

Types of Research Designs Compared | Guide & Examples

Published on June 20, 2019 by Shona McCombes . Revised on June 22, 2023.

When you start planning a research project, developing research questions and creating a  research design , you will have to make various decisions about the type of research you want to do.

There are many ways to categorize different types of research. The words you use to describe your research depend on your discipline and field. In general, though, the form your research design takes will be shaped by:

  • The type of knowledge you aim to produce
  • The type of data you will collect and analyze
  • The sampling methods , timescale and location of the research

This article takes a look at some common distinctions made between different types of research and outlines the key differences between them.

Table of contents

Types of research aims, types of research data, types of sampling, timescale, and location, other interesting articles.

The first thing to consider is what kind of knowledge your research aims to contribute.

Type of research What’s the difference? What to consider
Basic vs. applied Basic research aims to , while applied research aims to . Do you want to expand scientific understanding or solve a practical problem?
vs. Exploratory research aims to , while explanatory research aims to . How much is already known about your research problem? Are you conducting initial research on a newly-identified issue, or seeking precise conclusions about an established issue?
aims to , while aims to . Is there already some theory on your research problem that you can use to develop , or do you want to propose new theories based on your findings?

Prevent plagiarism. Run a free check.

The next thing to consider is what type of data you will collect. Each kind of data is associated with a range of specific research methods and procedures.

Type of research What’s the difference? What to consider
Primary research vs secondary research Primary data is (e.g., through or ), while secondary data (e.g., in government or scientific publications). How much data is already available on your topic? Do you want to collect original data or analyze existing data (e.g., through a )?
, while . Is your research more concerned with measuring something or interpreting something? You can also create a research design that has elements of both.
vs Descriptive research gathers data , while experimental research . Do you want to identify characteristics, patterns and or test causal relationships between ?

Finally, you have to consider three closely related questions: how will you select the subjects or participants of the research? When and how often will you collect data from your subjects? And where will the research take place?

Keep in mind that the methods that you choose bring with them different risk factors and types of research bias . Biases aren’t completely avoidable, but can heavily impact the validity and reliability of your findings if left unchecked.

Type of research What’s the difference? What to consider
allows you to , while allows you to draw conclusions . Do you want to produce  knowledge that applies to many contexts or detailed knowledge about a specific context (e.g. in a )?
vs Cross-sectional studies , while longitudinal studies . Is your research question focused on understanding the current situation or tracking changes over time?
Field research vs laboratory research Field research takes place in , while laboratory research takes place in . Do you want to find out how something occurs in the real world or draw firm conclusions about cause and effect? Laboratory experiments have higher but lower .
Fixed design vs flexible design In a fixed research design the subjects, timescale and location are begins, while in a flexible design these aspects may . Do you want to test hypotheses and establish generalizable facts, or explore concepts and develop understanding? For measuring, testing and making generalizations, a fixed research design has higher .

Choosing between all these different research types is part of the process of creating your research design , which determines exactly how your research will be conducted. But the type of research is only the first step: next, you have to make more concrete decisions about your research methods and the details of the study.

Read more about creating a research design

If you want to know more about statistics , methodology , or research bias , make sure to check out some of our other articles with explanations and examples.

  • Normal distribution
  • Degrees of freedom
  • Null hypothesis
  • Discourse analysis
  • Control groups
  • Mixed methods research
  • Non-probability sampling
  • Quantitative research
  • Ecological validity

Research bias

  • Rosenthal effect
  • Implicit bias
  • Cognitive bias
  • Selection bias
  • Negativity bias
  • Status quo bias

Cite this Scribbr article

If you want to cite this source, you can copy and paste the citation or click the “Cite this Scribbr article” button to automatically add the citation to our free Citation Generator.

McCombes, S. (2023, June 22). Types of Research Designs Compared | Guide & Examples. Scribbr. Retrieved August 26, 2024, from https://www.scribbr.com/methodology/types-of-research/

Is this article helpful?

Shona McCombes

Shona McCombes

Other students also liked, what is a research design | types, guide & examples, qualitative vs. quantitative research | differences, examples & methods, what is a research methodology | steps & tips, "i thought ai proofreading was useless but..".

I've been using Scribbr for years now and I know it's a service that won't disappoint. It does a good job spotting mistakes”

  • Skip to secondary menu
  • Skip to main content
  • Skip to primary sidebar

Statistics By Jim

Making statistics intuitive

Experimental Design: Definition and Types

By Jim Frost 3 Comments

What is Experimental Design?

An experimental design is a detailed plan for collecting and using data to identify causal relationships. Through careful planning, the design of experiments allows your data collection efforts to have a reasonable chance of detecting effects and testing hypotheses that answer your research questions.

An experiment is a data collection procedure that occurs in controlled conditions to identify and understand causal relationships between variables. Researchers can use many potential designs. The ultimate choice depends on their research question, resources, goals, and constraints. In some fields of study, researchers refer to experimental design as the design of experiments (DOE). Both terms are synonymous.

Scientist who developed an experimental design for her research.

Ultimately, the design of experiments helps ensure that your procedures and data will evaluate your research question effectively. Without an experimental design, you might waste your efforts in a process that, for many potential reasons, can’t answer your research question. In short, it helps you trust your results.

Learn more about Independent and Dependent Variables .

Design of Experiments: Goals & Settings

Experiments occur in many settings, ranging from psychology, social sciences, medicine, physics, engineering, and industrial and service sectors. Typically, experimental goals are to discover a previously unknown effect , confirm a known effect, or test a hypothesis.

Effects represent causal relationships between variables. For example, in a medical experiment, does the new medicine cause an improvement in health outcomes? If so, the medicine has a causal effect on the outcome.

An experimental design’s focus depends on the subject area and can include the following goals:

  • Understanding the relationships between variables.
  • Identifying the variables that have the largest impact on the outcomes.
  • Finding the input variable settings that produce an optimal result.

For example, psychologists have conducted experiments to understand how conformity affects decision-making. Sociologists have performed experiments to determine whether ethnicity affects the public reaction to staged bike thefts. These experiments map out the causal relationships between variables, and their primary goal is to understand the role of various factors.

Conversely, in a manufacturing environment, the researchers might use an experimental design to find the factors that most effectively improve their product’s strength, identify the optimal manufacturing settings, and do all that while accounting for various constraints. In short, a manufacturer’s goal is often to use experiments to improve their products cost-effectively.

In a medical experiment, the goal might be to quantify the medicine’s effect and find the optimum dosage.

Developing an Experimental Design

Developing an experimental design involves planning that maximizes the potential to collect data that is both trustworthy and able to detect causal relationships. Specifically, these studies aim to see effects when they exist in the population the researchers are studying, preferentially favor causal effects, isolate each factor’s true effect from potential confounders, and produce conclusions that you can generalize to the real world.

To accomplish these goals, experimental designs carefully manage data validity and reliability , and internal and external experimental validity. When your experiment is valid and reliable, you can expect your procedures and data to produce trustworthy results.

An excellent experimental design involves the following:

  • Lots of preplanning.
  • Developing experimental treatments.
  • Determining how to assign subjects to treatment groups.

The remainder of this article focuses on how experimental designs incorporate these essential items to accomplish their research goals.

Learn more about Data Reliability vs. Validity and Internal and External Experimental Validity .

Preplanning, Defining, and Operationalizing for Design of Experiments

A literature review is crucial for the design of experiments.

This phase of the design of experiments helps you identify critical variables, know how to measure them while ensuring reliability and validity, and understand the relationships between them. The review can also help you find ways to reduce sources of variability, which increases your ability to detect treatment effects. Notably, the literature review allows you to learn how similar studies designed their experiments and the challenges they faced.

Operationalizing a study involves taking your research question, using the background information you gathered, and formulating an actionable plan.

This process should produce a specific and testable hypothesis using data that you can reasonably collect given the resources available to the experiment.

  • Null hypothesis : The jumping exercise intervention does not affect bone density.
  • Alternative hypothesis : The jumping exercise intervention affects bone density.

To learn more about this early phase, read Five Steps for Conducting Scientific Studies with Statistical Analyses .

Formulating Treatments in Experimental Designs

In an experimental design, treatments are variables that the researchers control. They are the primary independent variables of interest. Researchers administer the treatment to the subjects or items in the experiment and want to know whether it causes changes in the outcome.

As the name implies, a treatment can be medical in nature, such as a new medicine or vaccine. But it’s a general term that applies to other things such as training programs, manufacturing settings, teaching methods, and types of fertilizers. I helped run an experiment where the treatment was a jumping exercise intervention that we hoped would increase bone density. All these treatment examples are things that potentially influence a measurable outcome.

Even when you know your treatment generally, you must carefully consider the amount. How large of a dose? If you’re comparing three different temperatures in a manufacturing process, how far apart are they? For my bone mineral density study, we had to determine how frequently the exercise sessions would occur and how long each lasted.

How you define the treatments in the design of experiments can affect your findings and the generalizability of your results.

Assigning Subjects to Experimental Groups

A crucial decision for all experimental designs is determining how researchers assign subjects to the experimental conditions—the treatment and control groups. The control group is often, but not always, the lack of a treatment. It serves as a basis for comparison by showing outcomes for subjects who don’t receive a treatment. Learn more about Control Groups .

How your experimental design assigns subjects to the groups affects how confident you can be that the findings represent true causal effects rather than mere correlation caused by confounders. Indeed, the assignment method influences how you control for confounding variables. This is the difference between correlation and causation .

Imagine a study finds that vitamin consumption correlates with better health outcomes. As a researcher, you want to be able to say that vitamin consumption causes the improvements. However, with the wrong experimental design, you might only be able to say there is an association. A confounder, and not the vitamins, might actually cause the health benefits.

Let’s explore some of the ways to assign subjects in design of experiments.

Completely Randomized Designs

A completely randomized experimental design randomly assigns all subjects to the treatment and control groups. You simply take each participant and use a random process to determine their group assignment. You can flip coins, roll a die, or use a computer. Randomized experiments must be prospective studies because they need to be able to control group assignment.

Random assignment in the design of experiments helps ensure that the groups are roughly equivalent at the beginning of the study. This equivalence at the start increases your confidence that any differences you see at the end were caused by the treatments. The randomization tends to equalize confounders between the experimental groups and, thereby, cancels out their effects, leaving only the treatment effects.

For example, in a vitamin study, the researchers can randomly assign participants to either the control or vitamin group. Because the groups are approximately equal when the experiment starts, if the health outcomes are different at the end of the study, the researchers can be confident that the vitamins caused those improvements.

Statisticians consider randomized experimental designs to be the best for identifying causal relationships.

If you can’t randomly assign subjects but want to draw causal conclusions about an intervention, consider using a quasi-experimental design .

Learn more about Randomized Controlled Trials and Random Assignment in Experiments .

Randomized Block Designs

Nuisance factors are variables that can affect the outcome, but they are not the researcher’s primary interest. Unfortunately, they can hide or distort the treatment results. When experimenters know about specific nuisance factors, they can use a randomized block design to minimize their impact.

This experimental design takes subjects with a shared “nuisance” characteristic and groups them into blocks. The participants in each block are then randomly assigned to the experimental groups. This process allows the experiment to control for known nuisance factors.

Blocking in the design of experiments reduces the impact of nuisance factors on experimental error. The analysis assesses the effects of the treatment within each block, which removes the variability between blocks. The result is that blocked experimental designs can reduce the impact of nuisance variables, increasing the ability to detect treatment effects accurately.

Suppose you’re testing various teaching methods. Because grade level likely affects educational outcomes, you might use grade level as a blocking factor. To use a randomized block design for this scenario, divide the participants by grade level and then randomly assign the members of each grade level to the experimental groups.

A standard guideline for an experimental design is to “Block what you can, randomize what you cannot.” Use blocking for a few primary nuisance factors. Then use random assignment to distribute the unblocked nuisance factors equally between the experimental conditions.

You can also use covariates to control nuisance factors. Learn about Covariates: Definition and Uses .

Observational Studies

In some experimental designs, randomly assigning subjects to the experimental conditions is impossible or unethical. The researchers simply can’t assign participants to the experimental groups. However, they can observe them in their natural groupings, measure the essential variables, and look for correlations. These observational studies are also known as quasi-experimental designs. Retrospective studies must be observational in nature because they look back at past events.

Imagine you’re studying the effects of depression on an activity. Clearly, you can’t randomly assign participants to the depression and control groups. But you can observe participants with and without depression and see how their task performance differs.

Observational studies let you perform research when you can’t control the treatment. However, quasi-experimental designs increase the problem of confounding variables. For this design of experiments, correlation does not necessarily imply causation. While special procedures can help control confounders in an observational study, you’re ultimately less confident that the results represent causal findings.

Learn more about Observational Studies .

For a good comparison, learn about the differences and tradeoffs between Observational Studies and Randomized Experiments .

Between-Subjects vs. Within-Subjects Experimental Designs

When you think of the design of experiments, you probably picture a treatment and control group. Researchers assign participants to only one of these groups, so each group contains entirely different subjects than the other groups. Analysts compare the groups at the end of the experiment. Statisticians refer to this method as a between-subjects, or independent measures, experimental design.

In a between-subjects design , you can have more than one treatment group, but each subject is exposed to only one condition, the control group or one of the treatment groups.

A potential downside to this approach is that differences between groups at the beginning can affect the results at the end. As you’ve read earlier, random assignment can reduce those differences, but it is imperfect. There will always be some variability between the groups.

In a  within-subjects experimental design , also known as repeated measures, subjects experience all treatment conditions and are measured for each. Each subject acts as their own control, which reduces variability and increases the statistical power to detect effects.

In this experimental design, you minimize pre-existing differences between the experimental conditions because they all contain the same subjects. However, the order of treatments can affect the results. Beware of practice and fatigue effects. Learn more about Repeated Measures Designs .

Assigned to one experimental condition Participates in all experimental conditions
Requires more subjects Fewer subjects
Differences between subjects in the groups can affect the results Uses same subjects in all conditions.
No order of treatment effects. Order of treatments can affect results.

Design of Experiments Examples

For example, a bone density study has three experimental groups—a control group, a stretching exercise group, and a jumping exercise group.

In a between-subjects experimental design, scientists randomly assign each participant to one of the three groups.

In a within-subjects design, all subjects experience the three conditions sequentially while the researchers measure bone density repeatedly. The procedure can switch the order of treatments for the participants to help reduce order effects.

Matched Pairs Experimental Design

A matched pairs experimental design is a between-subjects study that uses pairs of similar subjects. Researchers use this approach to reduce pre-existing differences between experimental groups. It’s yet another design of experiments method for reducing sources of variability.

Researchers identify variables likely to affect the outcome, such as demographics. When they pick a subject with a set of characteristics, they try to locate another participant with similar attributes to create a matched pair. Scientists randomly assign one member of a pair to the treatment group and the other to the control group.

On the plus side, this process creates two similar groups, and it doesn’t create treatment order effects. While matched pairs do not produce the perfectly matched groups of a within-subjects design (which uses the same subjects in all conditions), it aims to reduce variability between groups relative to a between-subjects study.

On the downside, finding matched pairs is very time-consuming. Additionally, if one member of a matched pair drops out, the other subject must leave the study too.

Learn more about Matched Pairs Design: Uses & Examples .

Another consideration is whether you’ll use a cross-sectional design (one point in time) or use a longitudinal study to track changes over time .

A case study is a research method that often serves as a precursor to a more rigorous experimental design by identifying research questions, variables, and hypotheses to test. Learn more about What is a Case Study? Definition & Examples .

In conclusion, the design of experiments is extremely sensitive to subject area concerns and the time and resources available to the researchers. Developing a suitable experimental design requires balancing a multitude of considerations. A successful design is necessary to obtain trustworthy answers to your research question and to have a reasonable chance of detecting treatment effects when they exist.

Share this:

research design experimental method

Reader Interactions

' src=

March 23, 2024 at 2:35 pm

Dear Jim You wrote a superb document, I will use it in my Buistatistics course, along with your three books. Thank you very much! Miguel

' src=

March 23, 2024 at 5:43 pm

Thanks so much, Miguel! Glad this post was helpful and I trust the books will be as well.

' src=

April 10, 2023 at 4:36 am

What are the purpose and uses of experimental research design?

Comments and Questions Cancel reply

  • Privacy Policy

Research Method

Home » Research Design – Types, Methods and Examples

Research Design – Types, Methods and Examples

Table of Contents

Research Design

Research Design

Definition:

Research design refers to the overall strategy or plan for conducting a research study. It outlines the methods and procedures that will be used to collect and analyze data, as well as the goals and objectives of the study. Research design is important because it guides the entire research process and ensures that the study is conducted in a systematic and rigorous manner.

Types of Research Design

Types of Research Design are as follows:

Descriptive Research Design

This type of research design is used to describe a phenomenon or situation. It involves collecting data through surveys, questionnaires, interviews, and observations. The aim of descriptive research is to provide an accurate and detailed portrayal of a particular group, event, or situation. It can be useful in identifying patterns, trends, and relationships in the data.

Correlational Research Design

Correlational research design is used to determine if there is a relationship between two or more variables. This type of research design involves collecting data from participants and analyzing the relationship between the variables using statistical methods. The aim of correlational research is to identify the strength and direction of the relationship between the variables.

Experimental Research Design

Experimental research design is used to investigate cause-and-effect relationships between variables. This type of research design involves manipulating one variable and measuring the effect on another variable. It usually involves randomly assigning participants to groups and manipulating an independent variable to determine its effect on a dependent variable. The aim of experimental research is to establish causality.

Quasi-experimental Research Design

Quasi-experimental research design is similar to experimental research design, but it lacks one or more of the features of a true experiment. For example, there may not be random assignment to groups or a control group. This type of research design is used when it is not feasible or ethical to conduct a true experiment.

Case Study Research Design

Case study research design is used to investigate a single case or a small number of cases in depth. It involves collecting data through various methods, such as interviews, observations, and document analysis. The aim of case study research is to provide an in-depth understanding of a particular case or situation.

Longitudinal Research Design

Longitudinal research design is used to study changes in a particular phenomenon over time. It involves collecting data at multiple time points and analyzing the changes that occur. The aim of longitudinal research is to provide insights into the development, growth, or decline of a particular phenomenon over time.

Structure of Research Design

The format of a research design typically includes the following sections:

  • Introduction : This section provides an overview of the research problem, the research questions, and the importance of the study. It also includes a brief literature review that summarizes previous research on the topic and identifies gaps in the existing knowledge.
  • Research Questions or Hypotheses: This section identifies the specific research questions or hypotheses that the study will address. These questions should be clear, specific, and testable.
  • Research Methods : This section describes the methods that will be used to collect and analyze data. It includes details about the study design, the sampling strategy, the data collection instruments, and the data analysis techniques.
  • Data Collection: This section describes how the data will be collected, including the sample size, data collection procedures, and any ethical considerations.
  • Data Analysis: This section describes how the data will be analyzed, including the statistical techniques that will be used to test the research questions or hypotheses.
  • Results : This section presents the findings of the study, including descriptive statistics and statistical tests.
  • Discussion and Conclusion : This section summarizes the key findings of the study, interprets the results, and discusses the implications of the findings. It also includes recommendations for future research.
  • References : This section lists the sources cited in the research design.

Example of Research Design

An Example of Research Design could be:

Research question: Does the use of social media affect the academic performance of high school students?

Research design:

  • Research approach : The research approach will be quantitative as it involves collecting numerical data to test the hypothesis.
  • Research design : The research design will be a quasi-experimental design, with a pretest-posttest control group design.
  • Sample : The sample will be 200 high school students from two schools, with 100 students in the experimental group and 100 students in the control group.
  • Data collection : The data will be collected through surveys administered to the students at the beginning and end of the academic year. The surveys will include questions about their social media usage and academic performance.
  • Data analysis : The data collected will be analyzed using statistical software. The mean scores of the experimental and control groups will be compared to determine whether there is a significant difference in academic performance between the two groups.
  • Limitations : The limitations of the study will be acknowledged, including the fact that social media usage can vary greatly among individuals, and the study only focuses on two schools, which may not be representative of the entire population.
  • Ethical considerations: Ethical considerations will be taken into account, such as obtaining informed consent from the participants and ensuring their anonymity and confidentiality.

How to Write Research Design

Writing a research design involves planning and outlining the methodology and approach that will be used to answer a research question or hypothesis. Here are some steps to help you write a research design:

  • Define the research question or hypothesis : Before beginning your research design, you should clearly define your research question or hypothesis. This will guide your research design and help you select appropriate methods.
  • Select a research design: There are many different research designs to choose from, including experimental, survey, case study, and qualitative designs. Choose a design that best fits your research question and objectives.
  • Develop a sampling plan : If your research involves collecting data from a sample, you will need to develop a sampling plan. This should outline how you will select participants and how many participants you will include.
  • Define variables: Clearly define the variables you will be measuring or manipulating in your study. This will help ensure that your results are meaningful and relevant to your research question.
  • Choose data collection methods : Decide on the data collection methods you will use to gather information. This may include surveys, interviews, observations, experiments, or secondary data sources.
  • Create a data analysis plan: Develop a plan for analyzing your data, including the statistical or qualitative techniques you will use.
  • Consider ethical concerns : Finally, be sure to consider any ethical concerns related to your research, such as participant confidentiality or potential harm.

When to Write Research Design

Research design should be written before conducting any research study. It is an important planning phase that outlines the research methodology, data collection methods, and data analysis techniques that will be used to investigate a research question or problem. The research design helps to ensure that the research is conducted in a systematic and logical manner, and that the data collected is relevant and reliable.

Ideally, the research design should be developed as early as possible in the research process, before any data is collected. This allows the researcher to carefully consider the research question, identify the most appropriate research methodology, and plan the data collection and analysis procedures in advance. By doing so, the research can be conducted in a more efficient and effective manner, and the results are more likely to be valid and reliable.

Purpose of Research Design

The purpose of research design is to plan and structure a research study in a way that enables the researcher to achieve the desired research goals with accuracy, validity, and reliability. Research design is the blueprint or the framework for conducting a study that outlines the methods, procedures, techniques, and tools for data collection and analysis.

Some of the key purposes of research design include:

  • Providing a clear and concise plan of action for the research study.
  • Ensuring that the research is conducted ethically and with rigor.
  • Maximizing the accuracy and reliability of the research findings.
  • Minimizing the possibility of errors, biases, or confounding variables.
  • Ensuring that the research is feasible, practical, and cost-effective.
  • Determining the appropriate research methodology to answer the research question(s).
  • Identifying the sample size, sampling method, and data collection techniques.
  • Determining the data analysis method and statistical tests to be used.
  • Facilitating the replication of the study by other researchers.
  • Enhancing the validity and generalizability of the research findings.

Applications of Research Design

There are numerous applications of research design in various fields, some of which are:

  • Social sciences: In fields such as psychology, sociology, and anthropology, research design is used to investigate human behavior and social phenomena. Researchers use various research designs, such as experimental, quasi-experimental, and correlational designs, to study different aspects of social behavior.
  • Education : Research design is essential in the field of education to investigate the effectiveness of different teaching methods and learning strategies. Researchers use various designs such as experimental, quasi-experimental, and case study designs to understand how students learn and how to improve teaching practices.
  • Health sciences : In the health sciences, research design is used to investigate the causes, prevention, and treatment of diseases. Researchers use various designs, such as randomized controlled trials, cohort studies, and case-control studies, to study different aspects of health and healthcare.
  • Business : Research design is used in the field of business to investigate consumer behavior, marketing strategies, and the impact of different business practices. Researchers use various designs, such as survey research, experimental research, and case studies, to study different aspects of the business world.
  • Engineering : In the field of engineering, research design is used to investigate the development and implementation of new technologies. Researchers use various designs, such as experimental research and case studies, to study the effectiveness of new technologies and to identify areas for improvement.

Advantages of Research Design

Here are some advantages of research design:

  • Systematic and organized approach : A well-designed research plan ensures that the research is conducted in a systematic and organized manner, which makes it easier to manage and analyze the data.
  • Clear objectives: The research design helps to clarify the objectives of the study, which makes it easier to identify the variables that need to be measured, and the methods that need to be used to collect and analyze data.
  • Minimizes bias: A well-designed research plan minimizes the chances of bias, by ensuring that the data is collected and analyzed objectively, and that the results are not influenced by the researcher’s personal biases or preferences.
  • Efficient use of resources: A well-designed research plan helps to ensure that the resources (time, money, and personnel) are used efficiently and effectively, by focusing on the most important variables and methods.
  • Replicability: A well-designed research plan makes it easier for other researchers to replicate the study, which enhances the credibility and reliability of the findings.
  • Validity: A well-designed research plan helps to ensure that the findings are valid, by ensuring that the methods used to collect and analyze data are appropriate for the research question.
  • Generalizability : A well-designed research plan helps to ensure that the findings can be generalized to other populations, settings, or situations, which increases the external validity of the study.

Research Design Vs Research Methodology

Research DesignResearch Methodology
The plan and structure for conducting research that outlines the procedures to be followed to collect and analyze data.The set of principles, techniques, and tools used to carry out the research plan and achieve research objectives.
Describes the overall approach and strategy used to conduct research, including the type of data to be collected, the sources of data, and the methods for collecting and analyzing data.Refers to the techniques and methods used to gather, analyze and interpret data, including sampling techniques, data collection methods, and data analysis techniques.
Helps to ensure that the research is conducted in a systematic, rigorous, and valid way, so that the results are reliable and can be used to make sound conclusions.Includes a set of procedures and tools that enable researchers to collect and analyze data in a consistent and valid manner, regardless of the research design used.
Common research designs include experimental, quasi-experimental, correlational, and descriptive studies.Common research methodologies include qualitative, quantitative, and mixed-methods approaches.
Determines the overall structure of the research project and sets the stage for the selection of appropriate research methodologies.Guides the researcher in selecting the most appropriate research methods based on the research question, research design, and other contextual factors.
Helps to ensure that the research project is feasible, relevant, and ethical.Helps to ensure that the data collected is accurate, valid, and reliable, and that the research findings can be interpreted and generalized to the population of interest.

About the author

' src=

Muhammad Hassan

Researcher, Academic Writer, Web developer

You may also like

Research Objectives

Research Objectives – Types, Examples and...

Delimitations

Delimitations in Research – Types, Examples and...

Purpose of Research

Purpose of Research – Objectives and Applications

Research Methodology

Research Methodology – Types, Examples and...

Table of Contents

Table of Contents – Types, Formats, Examples

Research Results

Research Results Section – Writing Guide and...

Leave a comment x.

Save my name, email, and website in this browser for the next time I comment.

U.S. flag

An official website of the United States government

The .gov means it’s official. Federal government websites often end in .gov or .mil. Before sharing sensitive information, make sure you’re on a federal government site.

The site is secure. The https:// ensures that you are connecting to the official website and that any information you provide is encrypted and transmitted securely.

  • Publications
  • Account settings

Preview improvements coming to the PMC website in October 2024. Learn More or Try it out now .

  • Advanced Search
  • Journal List
  • J Athl Train
  • v.45(1); Jan-Feb 2010

Study/Experimental/Research Design: Much More Than Statistics

Kenneth l. knight.

Brigham Young University, Provo, UT

The purpose of study, experimental, or research design in scientific manuscripts has changed significantly over the years. It has evolved from an explanation of the design of the experiment (ie, data gathering or acquisition) to an explanation of the statistical analysis. This practice makes “Methods” sections hard to read and understand.

To clarify the difference between study design and statistical analysis, to show the advantages of a properly written study design on article comprehension, and to encourage authors to correctly describe study designs.

Description:

The role of study design is explored from the introduction of the concept by Fisher through modern-day scientists and the AMA Manual of Style . At one time, when experiments were simpler, the study design and statistical design were identical or very similar. With the complex research that is common today, which often includes manipulating variables to create new variables and the multiple (and different) analyses of a single data set, data collection is very different than statistical design. Thus, both a study design and a statistical design are necessary.

Advantages:

Scientific manuscripts will be much easier to read and comprehend. A proper experimental design serves as a road map to the study methods, helping readers to understand more clearly how the data were obtained and, therefore, assisting them in properly analyzing the results.

Study, experimental, or research design is the backbone of good research. It directs the experiment by orchestrating data collection, defines the statistical analysis of the resultant data, and guides the interpretation of the results. When properly described in the written report of the experiment, it serves as a road map to readers, 1 helping them negotiate the “Methods” section, and, thus, it improves the clarity of communication between authors and readers.

A growing trend is to equate study design with only the statistical analysis of the data. The design statement typically is placed at the end of the “Methods” section as a subsection called “Experimental Design” or as part of a subsection called “Data Analysis.” This placement, however, equates experimental design and statistical analysis, minimizing the effect of experimental design on the planning and reporting of an experiment. This linkage is inappropriate, because some of the elements of the study design that should be described at the beginning of the “Methods” section are instead placed in the “Statistical Analysis” section or, worse, are absent from the manuscript entirely.

Have you ever interrupted your reading of the “Methods” to sketch out the variables in the margins of the paper as you attempt to understand how they all fit together? Or have you jumped back and forth from the early paragraphs of the “Methods” section to the “Statistics” section to try to understand which variables were collected and when? These efforts would be unnecessary if a road map at the beginning of the “Methods” section outlined how the independent variables were related, which dependent variables were measured, and when they were measured. When they were measured is especially important if the variables used in the statistical analysis were a subset of the measured variables or were computed from measured variables (such as change scores).

The purpose of this Communications article is to clarify the purpose and placement of study design elements in an experimental manuscript. Adopting these ideas may improve your science and surely will enhance the communication of that science. These ideas will make experimental manuscripts easier to read and understand and, therefore, will allow them to become part of readers' clinical decision making.

WHAT IS A STUDY (OR EXPERIMENTAL OR RESEARCH) DESIGN?

The terms study design, experimental design, and research design are often thought to be synonymous and are sometimes used interchangeably in a single paper. Avoid doing so. Use the term that is preferred by the style manual of the journal for which you are writing. Study design is the preferred term in the AMA Manual of Style , 2 so I will use it here.

A study design is the architecture of an experimental study 3 and a description of how the study was conducted, 4 including all elements of how the data were obtained. 5 The study design should be the first subsection of the “Methods” section in an experimental manuscript (see the Table ). “Statistical Design” or, preferably, “Statistical Analysis” or “Data Analysis” should be the last subsection of the “Methods” section.

Table. Elements of a “Methods” Section

An external file that holds a picture, illustration, etc.
Object name is i1062-6050-45-1-98-t01.jpg

The “Study Design” subsection describes how the variables and participants interacted. It begins with a general statement of how the study was conducted (eg, crossover trials, parallel, or observational study). 2 The second element, which usually begins with the second sentence, details the number of independent variables or factors, the levels of each variable, and their names. A shorthand way of doing so is with a statement such as “A 2 × 4 × 8 factorial guided data collection.” This tells us that there were 3 independent variables (factors), with 2 levels of the first factor, 4 levels of the second factor, and 8 levels of the third factor. Following is a sentence that names the levels of each factor: for example, “The independent variables were sex (male or female), training program (eg, walking, running, weight lifting, or plyometrics), and time (2, 4, 6, 8, 10, 15, 20, or 30 weeks).” Such an approach clearly outlines for readers how the various procedures fit into the overall structure and, therefore, enhances their understanding of how the data were collected. Thus, the design statement is a road map of the methods.

The dependent (or measurement or outcome) variables are then named. Details of how they were measured are not given at this point in the manuscript but are explained later in the “Instruments” and “Procedures” subsections.

Next is a paragraph detailing who the participants were and how they were selected, placed into groups, and assigned to a particular treatment order, if the experiment was a repeated-measures design. And although not a part of the design per se, a statement about obtaining written informed consent from participants and institutional review board approval is usually included in this subsection.

The nuts and bolts of the “Methods” section follow, including such things as equipment, materials, protocols, etc. These are beyond the scope of this commentary, however, and so will not be discussed.

The last part of the “Methods” section and last part of the “Study Design” section is the “Data Analysis” subsection. It begins with an explanation of any data manipulation, such as how data were combined or how new variables (eg, ratios or differences between collected variables) were calculated. Next, readers are told of the statistical measures used to analyze the data, such as a mixed 2 × 4 × 8 analysis of variance (ANOVA) with 2 between-groups factors (sex and training program) and 1 within-groups factor (time of measurement). Researchers should state and reference the statistical package and procedure(s) within the package used to compute the statistics. (Various statistical packages perform analyses slightly differently, so it is important to know the package and specific procedure used.) This detail allows readers to judge the appropriateness of the statistical measures and the conclusions drawn from the data.

STATISTICAL DESIGN VERSUS STATISTICAL ANALYSIS

Avoid using the term statistical design . Statistical methods are only part of the overall design. The term gives too much emphasis to the statistics, which are important, but only one of many tools used in interpreting data and only part of the study design:

The most important issues in biostatistics are not expressed with statistical procedures. The issues are inherently scientific, rather than purely statistical, and relate to the architectural design of the research, not the numbers with which the data are cited and interpreted. 6

Stated another way, “The justification for the analysis lies not in the data collected but in the manner in which the data were collected.” 3 “Without the solid foundation of a good design, the edifice of statistical analysis is unsafe.” 7 (pp4–5)

The intertwining of study design and statistical analysis may have been caused (unintentionally) by R.A. Fisher, “… a genius who almost single-handedly created the foundations for modern statistical science.” 8 Most research did not involve statistics until Fisher invented the concepts and procedures of ANOVA (in 1921) 9 , 10 and experimental design (in 1935). 11 His books became standard references for scientists in many disciplines. As a result, many ANOVA books were titled Experimental Design (see, for example, Edwards 12 ), and ANOVA courses taught in psychology and education departments included the words experimental design in their course titles.

Before the widespread use of computers to analyze data, designs were much simpler, and often there was little difference between study design and statistical analysis. So combining the 2 elements did not cause serious problems. This is no longer true, however, for 3 reasons: (1) Research studies are becoming more complex, with multiple independent and dependent variables. The procedures sections of these complex studies can be difficult to understand if your only reference point is the statistical analysis and design. (2) Dependent variables are frequently measured at different times. (3) How the data were collected is often not directly correlated with the statistical design.

For example, assume the goal is to determine the strength gain in novice and experienced athletes as a result of 3 strength training programs. Rate of change in strength is not a measurable variable; rather, it is calculated from strength measurements taken at various time intervals during the training. So the study design would be a 2 × 2 × 3 factorial with independent variables of time (pretest or posttest), experience (novice or advanced), and training (isokinetic, isotonic, or isometric) and a dependent variable of strength. The statistical design , however, would be a 2 × 3 factorial with independent variables of experience (novice or advanced) and training (isokinetic, isotonic, or isometric) and a dependent variable of strength gain. Note that data were collected according to a 3-factor design but were analyzed according to a 2-factor design and that the dependent variables were different. So a single design statement, usually a statistical design statement, would not communicate which data were collected or how. Readers would be left to figure out on their own how the data were collected.

MULTIVARIATE RESEARCH AND THE NEED FOR STUDY DESIGNS

With the advent of electronic data gathering and computerized data handling and analysis, research projects have increased in complexity. Many projects involve multiple dependent variables measured at different times, and, therefore, multiple design statements may be needed for both data collection and statistical analysis. Consider, for example, a study of the effects of heat and cold on neural inhibition. The variables of H max and M max are measured 3 times each: before, immediately after, and 30 minutes after a 20-minute treatment with heat or cold. Muscle temperature might be measured each minute before, during, and after the treatment. Although the minute-by-minute data are important for graphing temperature fluctuations during the procedure, only 3 temperatures (time 0, time 20, and time 50) are used for statistical analysis. A single dependent variable H max :M max ratio is computed to illustrate neural inhibition. Again, a single statistical design statement would tell little about how the data were obtained. And in this example, separate design statements would be needed for temperature measurement and H max :M max measurements.

As stated earlier, drawing conclusions from the data depends more on how the data were measured than on how they were analyzed. 3 , 6 , 7 , 13 So a single study design statement (or multiple such statements) at the beginning of the “Methods” section acts as a road map to the study and, thus, increases scientists' and readers' comprehension of how the experiment was conducted (ie, how the data were collected). Appropriate study design statements also increase the accuracy of conclusions drawn from the study.

CONCLUSIONS

The goal of scientific writing, or any writing, for that matter, is to communicate information. Including 2 design statements or subsections in scientific papers—one to explain how the data were collected and another to explain how they were statistically analyzed—will improve the clarity of communication and bring praise from readers. To summarize:

  • Purge from your thoughts and vocabulary the idea that experimental design and statistical design are synonymous.
  • Study or experimental design plays a much broader role than simply defining and directing the statistical analysis of an experiment.
  • A properly written study design serves as a road map to the “Methods” section of an experiment and, therefore, improves communication with the reader.
  • Study design should include a description of the type of design used, each factor (and each level) involved in the experiment, and the time at which each measurement was made.
  • Clarify when the variables involved in data collection and data analysis are different, such as when data analysis involves only a subset of a collected variable or a resultant variable from the mathematical manipulation of 2 or more collected variables.

Acknowledgments

Thanks to Thomas A. Cappaert, PhD, ATC, CSCS, CSE, for suggesting the link between R.A. Fisher and the melding of the concepts of research design and statistics.

  • Bipolar Disorder
  • Therapy Center
  • When To See a Therapist
  • Types of Therapy
  • Best Online Therapy
  • Best Couples Therapy
  • Managing Stress
  • Sleep and Dreaming
  • Understanding Emotions
  • Self-Improvement
  • Healthy Relationships
  • Student Resources
  • Personality Types
  • Sweepstakes
  • Guided Meditations
  • Verywell Mind Insights
  • 2024 Verywell Mind 25
  • Mental Health in the Classroom
  • Editorial Process
  • Meet Our Review Board
  • Crisis Support

How the Experimental Method Works in Psychology

sturti/Getty Images

The Experimental Process

Types of experiments, potential pitfalls of the experimental method.

The experimental method is a type of research procedure that involves manipulating variables to determine if there is a cause-and-effect relationship. The results obtained through the experimental method are useful but do not prove with 100% certainty that a singular cause always creates a specific effect. Instead, they show the probability that a cause will or will not lead to a particular effect.

At a Glance

While there are many different research techniques available, the experimental method allows researchers to look at cause-and-effect relationships. Using the experimental method, researchers randomly assign participants to a control or experimental group and manipulate levels of an independent variable. If changes in the independent variable lead to changes in the dependent variable, it indicates there is likely a causal relationship between them.

What Is the Experimental Method in Psychology?

The experimental method involves manipulating one variable to determine if this causes changes in another variable. This method relies on controlled research methods and random assignment of study subjects to test a hypothesis.

For example, researchers may want to learn how different visual patterns may impact our perception. Or they might wonder whether certain actions can improve memory . Experiments are conducted on many behavioral topics, including:

The scientific method forms the basis of the experimental method. This is a process used to determine the relationship between two variables—in this case, to explain human behavior .

Positivism is also important in the experimental method. It refers to factual knowledge that is obtained through observation, which is considered to be trustworthy.

When using the experimental method, researchers first identify and define key variables. Then they formulate a hypothesis, manipulate the variables, and collect data on the results. Unrelated or irrelevant variables are carefully controlled to minimize the potential impact on the experiment outcome.

History of the Experimental Method

The idea of using experiments to better understand human psychology began toward the end of the nineteenth century. Wilhelm Wundt established the first formal laboratory in 1879.

Wundt is often called the father of experimental psychology. He believed that experiments could help explain how psychology works, and used this approach to study consciousness .

Wundt coined the term "physiological psychology." This is a hybrid of physiology and psychology, or how the body affects the brain.

Other early contributors to the development and evolution of experimental psychology as we know it today include:

  • Gustav Fechner (1801-1887), who helped develop procedures for measuring sensations according to the size of the stimulus
  • Hermann von Helmholtz (1821-1894), who analyzed philosophical assumptions through research in an attempt to arrive at scientific conclusions
  • Franz Brentano (1838-1917), who called for a combination of first-person and third-person research methods when studying psychology
  • Georg Elias Müller (1850-1934), who performed an early experiment on attitude which involved the sensory discrimination of weights and revealed how anticipation can affect this discrimination

Key Terms to Know

To understand how the experimental method works, it is important to know some key terms.

Dependent Variable

The dependent variable is the effect that the experimenter is measuring. If a researcher was investigating how sleep influences test scores, for example, the test scores would be the dependent variable.

Independent Variable

The independent variable is the variable that the experimenter manipulates. In the previous example, the amount of sleep an individual gets would be the independent variable.

A hypothesis is a tentative statement or a guess about the possible relationship between two or more variables. In looking at how sleep influences test scores, the researcher might hypothesize that people who get more sleep will perform better on a math test the following day. The purpose of the experiment, then, is to either support or reject this hypothesis.

Operational definitions are necessary when performing an experiment. When we say that something is an independent or dependent variable, we must have a very clear and specific definition of the meaning and scope of that variable.

Extraneous Variables

Extraneous variables are other variables that may also affect the outcome of an experiment. Types of extraneous variables include participant variables, situational variables, demand characteristics, and experimenter effects. In some cases, researchers can take steps to control for extraneous variables.

Demand Characteristics

Demand characteristics are subtle hints that indicate what an experimenter is hoping to find in a psychology experiment. This can sometimes cause participants to alter their behavior, which can affect the results of the experiment.

Intervening Variables

Intervening variables are factors that can affect the relationship between two other variables. 

Confounding Variables

Confounding variables are variables that can affect the dependent variable, but that experimenters cannot control for. Confounding variables can make it difficult to determine if the effect was due to changes in the independent variable or if the confounding variable may have played a role.

Psychologists, like other scientists, use the scientific method when conducting an experiment. The scientific method is a set of procedures and principles that guide how scientists develop research questions, collect data, and come to conclusions.

The five basic steps of the experimental process are:

  • Identifying a problem to study
  • Devising the research protocol
  • Conducting the experiment
  • Analyzing the data collected
  • Sharing the findings (usually in writing or via presentation)

Most psychology students are expected to use the experimental method at some point in their academic careers. Learning how to conduct an experiment is important to understanding how psychologists prove and disprove theories in this field.

There are a few different types of experiments that researchers might use when studying psychology. Each has pros and cons depending on the participants being studied, the hypothesis, and the resources available to conduct the research.

Lab Experiments

Lab experiments are common in psychology because they allow experimenters more control over the variables. These experiments can also be easier for other researchers to replicate. The drawback of this research type is that what takes place in a lab is not always what takes place in the real world.

Field Experiments

Sometimes researchers opt to conduct their experiments in the field. For example, a social psychologist interested in researching prosocial behavior might have a person pretend to faint and observe how long it takes onlookers to respond.

This type of experiment can be a great way to see behavioral responses in realistic settings. But it is more difficult for researchers to control the many variables existing in these settings that could potentially influence the experiment's results.

Quasi-Experiments

While lab experiments are known as true experiments, researchers can also utilize a quasi-experiment. Quasi-experiments are often referred to as natural experiments because the researchers do not have true control over the independent variable.

A researcher looking at personality differences and birth order, for example, is not able to manipulate the independent variable in the situation (personality traits). Participants also cannot be randomly assigned because they naturally fall into pre-existing groups based on their birth order.

So why would a researcher use a quasi-experiment? This is a good choice in situations where scientists are interested in studying phenomena in natural, real-world settings. It's also beneficial if there are limits on research funds or time.

Field experiments can be either quasi-experiments or true experiments.

Examples of the Experimental Method in Use

The experimental method can provide insight into human thoughts and behaviors, Researchers use experiments to study many aspects of psychology.

A 2019 study investigated whether splitting attention between electronic devices and classroom lectures had an effect on college students' learning abilities. It found that dividing attention between these two mediums did not affect lecture comprehension. However, it did impact long-term retention of the lecture information, which affected students' exam performance.

An experiment used participants' eye movements and electroencephalogram (EEG) data to better understand cognitive processing differences between experts and novices. It found that experts had higher power in their theta brain waves than novices, suggesting that they also had a higher cognitive load.

A study looked at whether chatting online with a computer via a chatbot changed the positive effects of emotional disclosure often received when talking with an actual human. It found that the effects were the same in both cases.

One experimental study evaluated whether exercise timing impacts information recall. It found that engaging in exercise prior to performing a memory task helped improve participants' short-term memory abilities.

Sometimes researchers use the experimental method to get a bigger-picture view of psychological behaviors and impacts. For example, one 2018 study examined several lab experiments to learn more about the impact of various environmental factors on building occupant perceptions.

A 2020 study set out to determine the role that sensation-seeking plays in political violence. This research found that sensation-seeking individuals have a higher propensity for engaging in political violence. It also found that providing access to a more peaceful, yet still exciting political group helps reduce this effect.

While the experimental method can be a valuable tool for learning more about psychology and its impacts, it also comes with a few pitfalls.

Experiments may produce artificial results, which are difficult to apply to real-world situations. Similarly, researcher bias can impact the data collected. Results may not be able to be reproduced, meaning the results have low reliability .

Since humans are unpredictable and their behavior can be subjective, it can be hard to measure responses in an experiment. In addition, political pressure may alter the results. The subjects may not be a good representation of the population, or groups used may not be comparable.

And finally, since researchers are human too, results may be degraded due to human error.

What This Means For You

Every psychological research method has its pros and cons. The experimental method can help establish cause and effect, and it's also beneficial when research funds are limited or time is of the essence.

At the same time, it's essential to be aware of this method's pitfalls, such as how biases can affect the results or the potential for low reliability. Keeping these in mind can help you review and assess research studies more accurately, giving you a better idea of whether the results can be trusted or have limitations.

Colorado State University. Experimental and quasi-experimental research .

American Psychological Association. Experimental psychology studies human and animals .

Mayrhofer R, Kuhbandner C, Lindner C. The practice of experimental psychology: An inevitably postmodern endeavor . Front Psychol . 2021;11:612805. doi:10.3389/fpsyg.2020.612805

Mandler G. A History of Modern Experimental Psychology .

Stanford University. Wilhelm Maximilian Wundt . Stanford Encyclopedia of Philosophy.

Britannica. Gustav Fechner .

Britannica. Hermann von Helmholtz .

Meyer A, Hackert B, Weger U. Franz Brentano and the beginning of experimental psychology: implications for the study of psychological phenomena today . Psychol Res . 2018;82:245-254. doi:10.1007/s00426-016-0825-7

Britannica. Georg Elias Müller .

McCambridge J, de Bruin M, Witton J.  The effects of demand characteristics on research participant behaviours in non-laboratory settings: A systematic review .  PLoS ONE . 2012;7(6):e39116. doi:10.1371/journal.pone.0039116

Laboratory experiments . In: The Sage Encyclopedia of Communication Research Methods. Allen M, ed. SAGE Publications, Inc. doi:10.4135/9781483381411.n287

Schweizer M, Braun B, Milstone A. Research methods in healthcare epidemiology and antimicrobial stewardship — quasi-experimental designs . Infect Control Hosp Epidemiol . 2016;37(10):1135-1140. doi:10.1017/ice.2016.117

Glass A, Kang M. Dividing attention in the classroom reduces exam performance . Educ Psychol . 2019;39(3):395-408. doi:10.1080/01443410.2018.1489046

Keskin M, Ooms K, Dogru AO, De Maeyer P. Exploring the cognitive load of expert and novice map users using EEG and eye tracking . ISPRS Int J Geo-Inf . 2020;9(7):429. doi:10.3390.ijgi9070429

Ho A, Hancock J, Miner A. Psychological, relational, and emotional effects of self-disclosure after conversations with a chatbot . J Commun . 2018;68(4):712-733. doi:10.1093/joc/jqy026

Haynes IV J, Frith E, Sng E, Loprinzi P. Experimental effects of acute exercise on episodic memory function: Considerations for the timing of exercise . Psychol Rep . 2018;122(5):1744-1754. doi:10.1177/0033294118786688

Torresin S, Pernigotto G, Cappelletti F, Gasparella A. Combined effects of environmental factors on human perception and objective performance: A review of experimental laboratory works . Indoor Air . 2018;28(4):525-538. doi:10.1111/ina.12457

Schumpe BM, Belanger JJ, Moyano M, Nisa CF. The role of sensation seeking in political violence: An extension of the significance quest theory . J Personal Social Psychol . 2020;118(4):743-761. doi:10.1037/pspp0000223

By Kendra Cherry, MSEd Kendra Cherry, MS, is a psychosocial rehabilitation specialist, psychology educator, and author of the "Everything Psychology Book."

Experimental Method In Psychology

Saul McLeod, PhD

Editor-in-Chief for Simply Psychology

BSc (Hons) Psychology, MRes, PhD, University of Manchester

Saul McLeod, PhD., is a qualified psychology teacher with over 18 years of experience in further and higher education. He has been published in peer-reviewed journals, including the Journal of Clinical Psychology.

Learn about our Editorial Process

Olivia Guy-Evans, MSc

Associate Editor for Simply Psychology

BSc (Hons) Psychology, MSc Psychology of Education

Olivia Guy-Evans is a writer and associate editor for Simply Psychology. She has previously worked in healthcare and educational sectors.

On This Page:

The experimental method involves the manipulation of variables to establish cause-and-effect relationships. The key features are controlled methods and the random allocation of participants into controlled and experimental groups .

What is an Experiment?

An experiment is an investigation in which a hypothesis is scientifically tested. An independent variable (the cause) is manipulated in an experiment, and the dependent variable (the effect) is measured; any extraneous variables are controlled.

An advantage is that experiments should be objective. The researcher’s views and opinions should not affect a study’s results. This is good as it makes the data more valid  and less biased.

There are three types of experiments you need to know:

1. Lab Experiment

A laboratory experiment in psychology is a research method in which the experimenter manipulates one or more independent variables and measures the effects on the dependent variable under controlled conditions.

A laboratory experiment is conducted under highly controlled conditions (not necessarily a laboratory) where accurate measurements are possible.

The researcher uses a standardized procedure to determine where the experiment will take place, at what time, with which participants, and in what circumstances.

Participants are randomly allocated to each independent variable group.

Examples are Milgram’s experiment on obedience and  Loftus and Palmer’s car crash study .

  • Strength : It is easier to replicate (i.e., copy) a laboratory experiment. This is because a standardized procedure is used.
  • Strength : They allow for precise control of extraneous and independent variables. This allows a cause-and-effect relationship to be established.
  • Limitation : The artificiality of the setting may produce unnatural behavior that does not reflect real life, i.e., low ecological validity. This means it would not be possible to generalize the findings to a real-life setting.
  • Limitation : Demand characteristics or experimenter effects may bias the results and become confounding variables .

2. Field Experiment

A field experiment is a research method in psychology that takes place in a natural, real-world setting. It is similar to a laboratory experiment in that the experimenter manipulates one or more independent variables and measures the effects on the dependent variable.

However, in a field experiment, the participants are unaware they are being studied, and the experimenter has less control over the extraneous variables .

Field experiments are often used to study social phenomena, such as altruism, obedience, and persuasion. They are also used to test the effectiveness of interventions in real-world settings, such as educational programs and public health campaigns.

An example is Holfing’s hospital study on obedience .

  • Strength : behavior in a field experiment is more likely to reflect real life because of its natural setting, i.e., higher ecological validity than a lab experiment.
  • Strength : Demand characteristics are less likely to affect the results, as participants may not know they are being studied. This occurs when the study is covert.
  • Limitation : There is less control over extraneous variables that might bias the results. This makes it difficult for another researcher to replicate the study in exactly the same way.

3. Natural Experiment

A natural experiment in psychology is a research method in which the experimenter observes the effects of a naturally occurring event or situation on the dependent variable without manipulating any variables.

Natural experiments are conducted in the day (i.e., real life) environment of the participants, but here, the experimenter has no control over the independent variable as it occurs naturally in real life.

Natural experiments are often used to study psychological phenomena that would be difficult or unethical to study in a laboratory setting, such as the effects of natural disasters, policy changes, or social movements.

For example, Hodges and Tizard’s attachment research (1989) compared the long-term development of children who have been adopted, fostered, or returned to their mothers with a control group of children who had spent all their lives in their biological families.

Here is a fictional example of a natural experiment in psychology:

Researchers might compare academic achievement rates among students born before and after a major policy change that increased funding for education.

In this case, the independent variable is the timing of the policy change, and the dependent variable is academic achievement. The researchers would not be able to manipulate the independent variable, but they could observe its effects on the dependent variable.

  • Strength : behavior in a natural experiment is more likely to reflect real life because of its natural setting, i.e., very high ecological validity.
  • Strength : Demand characteristics are less likely to affect the results, as participants may not know they are being studied.
  • Strength : It can be used in situations in which it would be ethically unacceptable to manipulate the independent variable, e.g., researching stress .
  • Limitation : They may be more expensive and time-consuming than lab experiments.
  • Limitation : There is no control over extraneous variables that might bias the results. This makes it difficult for another researcher to replicate the study in exactly the same way.

Key Terminology

Ecological validity.

The degree to which an investigation represents real-life experiences.

Experimenter effects

These are the ways that the experimenter can accidentally influence the participant through their appearance or behavior.

Demand characteristics

The clues in an experiment lead the participants to think they know what the researcher is looking for (e.g., the experimenter’s body language).

Independent variable (IV)

The variable the experimenter manipulates (i.e., changes) is assumed to have a direct effect on the dependent variable.

Dependent variable (DV)

Variable the experimenter measures. This is the outcome (i.e., the result) of a study.

Extraneous variables (EV)

All variables which are not independent variables but could affect the results (DV) of the experiment. EVs should be controlled where possible.

Confounding variables

Variable(s) that have affected the results (DV), apart from the IV. A confounding variable could be an extraneous variable that has not been controlled.

Random Allocation

Randomly allocating participants to independent variable conditions means that all participants should have an equal chance of participating in each condition.

The principle of random allocation is to avoid bias in how the experiment is carried out and limit the effects of participant variables.

Order effects

Changes in participants’ performance due to their repeating the same or similar test more than once. Examples of order effects include:

(i) practice effect: an improvement in performance on a task due to repetition, for example, because of familiarity with the task;

(ii) fatigue effect: a decrease in performance of a task due to repetition, for example, because of boredom or tiredness.

Print Friendly, PDF & Email

Experimental Research Design

  • First Online: 10 November 2021

Cite this chapter

research design experimental method

  • Stefan Hunziker 3 &
  • Michael Blankenagel 3  

3414 Accesses

1 Citations

This chapter addresses the peculiarities, characteristics, and major fallacies of experimental research designs. Experiments have a long and important history in the social, natural, and medicinal sciences. Unfortunately, in business and management this looks differently. This is astounding, as experiments are suitable for analyzing cause-and-effect relationships. A true experiment is a brilliant method for finding out if one element really causes other elements. Also, researchers find relevant information on how to write an experimental research design paper and learn about typical methodologies used for this research design. The chapter closes with referring to overlapping and adjacent research designs.

This is a preview of subscription content, log in via an institution to check access.

Access this chapter

Subscribe and save.

  • Get 10 units per month
  • Download Article/Chapter or eBook
  • 1 Unit = 1 Article or 1 Chapter
  • Cancel anytime
  • Available as PDF
  • Read on any device
  • Instant download
  • Own it forever
  • Available as EPUB and PDF

Tax calculation will be finalised at checkout

Purchases are for personal use only

Institutional subscriptions

Aronson, E., Ellsworth, P., Carlsmith, J., & Gonzales, M. (1990). Methods of research in social psychology (2nd ed.). McGraw-Hill.

Google Scholar  

Bargh, J., Chen, M., & Burrows, L. (1996). Automaticity of social behavior: Direct effects of trait construct and stereotype activation on action. Journal of Personality and Social Psychology., 71 (2), 230–244.

Article   Google Scholar  

Biais, B., & Weber, M. (2009). Hindsight bias, risk perception, and investment performance. Management Science, 55 (6), 1018–1029.

Bortz, J. & Döring, N. (2006). Forschungsmethoden und evaluation . Springer.

Bowlin, K. O., Hales, J., & Kachelmeier, S. J. (2009). Experimental evidence of how prior experience as an auditor influences managers’ strategic reporting decisions. Rev Account Stud, 14 (1), 63–87.

Burmeister, K., & Schade, C. (2007). Are entrepreneurs’ decisions more biased? An experimental investigation of the susceptibility to status quo bias. Journal of Business Venturing, 22 (3), 340–362.

Christensen, L. B. (2007). Experimental methodology . Pearson/Allyn and Bacon.

de Vaus, D. A. (2001). Research design in social research . Reprinted. Los Angeles: SAGE Publications, Inc.

Doyle, A. C. (1890). The sign of the four. Lippincott’s Monthly Magazine . Ward, Lock & Co.

Franke, N., Schreier, M., & Kaiser, U. (2010). The “I designed it myself” effect in mass customization. Management Science, 56 (1), 125–140.

Friese, M., Wilhelm, H., & Michaela, W. (2009). The impulsive consumer: Predicting consumer behavior with implicit reaction time measurements. Social Psychology of Consumer Behavior (pp. 335–364). Psychology Press.

Fromkin, H. L., & Streufert, S. (1976). Laboratory experimentation. In M. D. Dunnette (Ed.), Handbook of industrial and organizational psychology (pp. 415–465). Rand McNally College.

Harbring, C., & Irlenbusch, B. (2011). Sabotage in tournaments: evidence from a laboratory experiment. Management Science, 57 (4), 611–627.

Hennig-Thurau, T., Groth, M., Paul, M., & Gremler, D. D. (2006). Are all smiles created equal? How emotional contagion and emotional labor affect service relationships. Journal of Marketing, 70 (3), 58–73.

Homburg, C., Koschate, N., & Hoyer, W. D. (2005). Do Satisfied customers really pay more? A study of the relationship between customer satisfaction and willingness to pay. Journal of Marketing, 69 (2), 84–96.

Johnson, B. (2001). Toward a new classification of nonexperimental quantitative research. Educational Researcher, 30 (2), 3–13.

Koschate-Fischer, N., & Schandelmeier, S. (2014). A Guideline for Designing Experimental Studies in Marketing research and a Critical Discussion of Selected Problem Areas. Journal of Business Economics, 84 (6), 793–826.

Krishnaswamy K. N., Sivakumar A. I. & Mathirajan M. (2009). Management research methodology: Integration of principles, methods and techniques . Dorling Kindersley.

Lödding, H., & Lohmann, S. (2012). INCAP – applying short-term flexibility to control inventories. International Journal of Production Research, 50 (3), 909–919.

Mohnen, A., Pokorny, K., & Sliwka, D. (2008). Transparency, inequity aversion, and the dynamics of peer pressure in teams: Theory and evidence. Journal of Labor Economics, 26 (4), 693–720.

Perdue, B. C., & Summers, J. O. (1986). Checking the success of manipulations in marketing experiments. Journal of Marketing Research, 23 (4), 317–326.

Robson, C. (2011). Real world research: A resource for users of social research methods in applied settings (3rd ed.). Wiley.

Rogers, W. S. (2003). Social psychology: Experimental and critical approaches . Open University Press.

Sandri, S., Schade, C., Mußhoff, O., & Odening, M. (2010). Holding on for too long? An experimental study on inertia in entrepreneurs’ and non-entrepreneurs’ disinvestment choices. Journal of Economic Behavior & Organization, 76 (1), 30–44.

Schoen, K., & Crilly, N. (2012). Implicit methods for testing product preference: Exploratory studies with the affective simon task. In J. Brasset, J. McDonnell, & M. Malpass (Eds.), Proceedings of 8th international design and emotion conference, ed. London: Central Saint Martins College of Art and Design.

Stier, W. (1999). Empirische Forschungsmethoden . Springer.

Trochim, W. (2005). Research methods: The concise knowledge base. Atomic Dog Pub.

Weber, M., & Zuchel, H. (2005). How do prior outcomes affect risk attitude? Comparing escalation of commitment and the house-money effect. Decision Analysis, 2 (1), 30–43.

Download references

Author information

Authors and affiliations.

Wirtschaft/IFZ – Campus Zug-Rotkreuz, Hochschule Luzern, Zug-Rotkreuz, Zug , Switzerland

Stefan Hunziker & Michael Blankenagel

You can also search for this author in PubMed   Google Scholar

Corresponding author

Correspondence to Stefan Hunziker .

Rights and permissions

Reprints and permissions

Copyright information

© 2021 The Author(s), under exclusive license to Springer Fachmedien Wiesbaden GmbH, part of Springer Nature

About this chapter

Hunziker, S., Blankenagel, M. (2021). Experimental Research Design. In: Research Design in Business and Management. Springer Gabler, Wiesbaden. https://doi.org/10.1007/978-3-658-34357-6_12

Download citation

DOI : https://doi.org/10.1007/978-3-658-34357-6_12

Published : 10 November 2021

Publisher Name : Springer Gabler, Wiesbaden

Print ISBN : 978-3-658-34356-9

Online ISBN : 978-3-658-34357-6

eBook Packages : Business and Economics (German Language)

Share this chapter

Anyone you share the following link with will be able to read this content:

Sorry, a shareable link is not currently available for this article.

Provided by the Springer Nature SharedIt content-sharing initiative

  • Publish with us

Policies and ethics

  • Find a journal
  • Track your research

Thank you for visiting nature.com. You are using a browser version with limited support for CSS. To obtain the best experience, we recommend you use a more up to date browser (or turn off compatibility mode in Internet Explorer). In the meantime, to ensure continued support, we are displaying the site without styles and JavaScript.

  • View all journals
  • Explore content
  • About the journal
  • Publish with us
  • Sign up for alerts
  • Open access
  • Published: 28 August 2024

An experimental and theoretical study on the creep behavior of silt soil in the Yellow River flood area of Zhengzhou City

  • Zhanfei Gu 1 , 2 ,
  • Hailong Wei 1 &
  • Zhikui Liu 1  

Scientific Reports volume  14 , Article number:  20002 ( 2024 ) Cite this article

Metrics details

  • Civil engineering
  • Natural hazards

We took the silt soil in the Yellow River flood area of Zhengzhou City as the research object and carried out triaxial shear and triaxial creep tests on silt soil with different moisture contents (8%, 10%, 12%, 14%) to analyze the effect of moisture content on silt soil. In addition, the influence of moisture contents on soil creep characteristics and long-term strength was analyzed. Based on the fractional derivative theory, we established a fractional derivative model that can effectively describe the creep characteristics of silt soil in all stages, and used the Levenberg–Marquardt algorithm to inversely identify the relevant parameters of the fractional derivative creep model. The results show that the shear strengths of silt soil samples with moisture contents of 8%, 10%, 12% and 14% are 294 kPa, 236 kPa, 179 kPa and 161 kPa, respectively. The shear strength of silt soil decreases with increasing moisture content. When the moisture content increases, the cohesion of the silt soil decreases. Under the same deviatoric stress, the higher the moisture content of the silt soil, the greater the deformation will be. The long-term strength of silt soil decreases exponentially with the increase of moisture content. If the moisture content is 12%, the long-term strength loss rate of silt soil is the smallest, with a value of 32.96%. The calculated values of our creep model based on fractional derivatives have a high goodness of fit with the experimental results. This indicates that our model can better simulate the creep characteristics of silt soil. This study can provide a theoretical basis for engineering construction and geological disaster prevention in silt soil areas in the Yellow River flood area.

Introduction

The soil on the Loess Plateau is loose and susceptible to water and wind erosion. For water erosion, sediment pours into the Yellow River in the upper reaches and is then deposited in the middle and lower reaches where the flow is gentle. Historically, the Yellow River has changed its course many times and flooded in the lower reaches. Most of the soil along the Yellow River was formed by sedimentation carried by the Yellow River. The soil deposited in the Yellow River flood zone is mainly silt soil. Silt soil has the characteristics of poor plasticity, low cohesion, high collapsibility and easy erosion. Under the long-term effects of rainfall, river infiltration, artificial irrigation, and external loads, silt soil is prone to creep deformation, which can lead to geological disasters such as landslides, land subsidence, and subgrade collapse 1 , 2 , 3 . As an emerging first-tier city and an important comprehensive transportation hub in the country, Zhengzhou City has built a large number of large-scale engineering facilities such as high-speed railways, tunnels, and subway tunnels in recent years. Due to the poor engineering properties of silt soil, environmental disaster problems caused by engineering construction are becoming increasingly serious. Especially since the subway was put into operation, the soil around the subway tunnel has settled to varying degrees and has a tendency to continue to sink. Among them, Zhengzhou Metro Line 10 passes through the main canal of the middle line of the South-to-North Water Diversion Project, and the continued subsidence of the soil around the subway tunnel will seriously threaten the safety of the channel 4 , 5 . Some studies have found that land subsidence has occurred near the tunnel where the middle line of the South-to-North Water Diversion Project crosses the Yellow River 6 . Silt soil exhibits significant creep characteristics under the long-term effects of external loads and groundwater seepage.

Many scholars studied the creep properties of silt soil and achieved some important results. Chang et al. 7 conducted triaxial drained shear creep tests on silt soil at different confining pressures and proposed a new fractional-order creep constitutive model for silt soil by concatenating the improved Maxwell fractional order model with the Bingham fractional order model. Finally, the comparison of the predicted values with the measured values showed that the model accurately capture the mechanical behavior throughout the entire creep process of silt soil. Wang et al. 8 conducted triaxial creep tests on hydrate-bearing silt, and the test results showed that the axial strain increased with an increase of axial stress, and under greater axial stress, the hydrate-bearing silt samples exhibited an accelerated creep stage. Wu et al. 9 studied the influence of confining pressure and deviatoric stress on the creep behavior of unsaturated silt, and established an improved fractional-order Nishihara model by using fractional calculus theory. The results showed that the fitting curve of the improved fractional-order Nishihara model was in good agreement with the experimental curve, accurately describe the creep properties of unsaturated silt. Xiao et al. 10 found in triaxial creep tests on silt soil that at the same final deviatoric stress, the final deviatoric strain of the sample was closely related to the number of loading stages of the deviatoric stress. They then fitted the creep curves of silt soil using the logarithmic and hyperbolic models, and the results showed that the hyperbolic model had a better fitting effect than the logarithmic model. Yin et al. 11 studied the creep characteristics of silt through triaxial consolidation-drained creep tests and proposed a creep model based on fractional calculus theory. The research results showed that the model could accurately represent the creep characteristics of silt. Deng et al. 12 analyzed the creep law of silt under different deviatoric stress conditions and predicted the creep behavior of silt soil samples using the Merchant model and the Burgers model. The test results indicated that the Burgers model could accurately describe the creep characteristics of silt. Hu et al. 13 investigated the creep characteristics of silt through indoor triaxial tests and established a hyperbolic model that accurately describe the creep characteristics of silt. However, the above studies have investigated the creep properties of silt. They have not considered to the effect of the change of moisture content on the creep properties of silt, and most of studies on the creep properties of materials with moisture content have been focused on rocky materials 14 , 15 . Therefore, it is necessary to find out the effect of moisture content on the creep properties of silt and to develop a nonlinear creep damage model that accurately describes the creep properties of silt.

Fractional-order calculus is a branch of calculus theory that studies the properties of differential and integral operators of arbitrary order, effectively solving mechanical modelling problems. In recent years, many scholars applied the fractional-order integral theory to the rock creep model, achieving fruitful results 16 , 17 , 18 , 19 . Xu, Wu, Kamdem et al. 20 , 21 , 22 established a nonlinear viscoelastic-plastic creep model based on fractional derivatives to describe the creep characteristics of rocks. Yu et al. 23 conducted a triaxial creep test on carbonaceous mudstone in a saturated state, and established a fractional derivative creep model that accurately predict the creep characteristics of carbonaceous mudstone. Wang et al. 24 established a creep damage model based on fractional derivatives to fit the creep curve of coal and rock with good fitness. Most of the above studies have applied fractional derivative theory to rock creep models. The deformation of soil is much greater than that of rock, because the strength of soil is much weaker than that of rock, under the long-term external loading. Therefore, it is necessary to further study the fractional derivative theory for the creep characteristics of soil.

In summary, by hierarchical loading method, we used silt soil with different moisture contents to conduct triaxial creep tests. We systematically analyzed the influence of moisture content changes on the creep deformation and long-term strength of silt soil, and established a fractional derivative creep model that can describe the entire creep process of silt soil. The Levenberg–Marquardt algorithm was used to fit the parameters of the fractional derivative creep model and determine the parameters in the model, thereby verifying the applicability and accuracy of the model.

The establishment of viscoplastic and creep damage model based on fractional derivatives

Fractional derivatives and abel dashpot.

The Riemann–Liouville fractional calculus is defined as: If \(f\left( t \right)\) is continuous on \(\left( {0, + \infty } \right)\) and integrable on any subinterval of \(\left[ {0, + \infty } \right]\) , for \(t > 0\) , \({\text{Re}} \left( \gamma \right) > 0\) , then Eq. ( 1 ) is the \(\gamma\) order RL fractional calculus of the function \(f\left( t \right)\) 25 .

where \(\Gamma \left( \gamma\right) = \int_{0}^{\infty } {t^{\gamma - 1} e^{ - t} {\text{d}}t}\) is Gamma function; \(\gamma\) is fractional order.

The stress–strain relationships of ideal fluids and ideal solids obey both Newton's law and Hooke's law, as shown in Eqs. ( 2 ) and ( 3 ). However, there is no ideal fluids and solids in reality, so approximate calculations are usually required during calculations. Since the material properties of rock and soil are between ideal fluids and ideal solids, we established the Abel dashpot constitutive equation based on fractional derivatives, in Eq. ( 4 ).

where \(\sigma_{f} \left( t \right)\) is the stress on the ideal fluid; \(\sigma_{s} \left( t \right)\) is the stress on the ideal solid; \(\sigma_{A} \left( t \right)\) is the stress on Abel dashpot; \(\varepsilon \left( t \right)\) is the strain of the material; \(E\) is the elastic modulus; \(\eta\) is the viscosity coefficient; \(t\) is time; \(\gamma \in \left[ {0,1} \right]\) , when \(\gamma = 0\) , Eq. ( 4 ) describes an ideal solid; when \(\gamma = 1\) , Eq. ( 4 ) describes an ideal fluid.

For the state of a material between an ideal solid and an ideal fluid, we used Abel dashpot to describe (Fig.  1 ). If the stress is constant ( \(\sigma \left( t \right) = {\text{const}}\) ), the software component can describe the creep deformation of the material. By performing fractional calculus on both sides of Eq. ( 4 ), according to the Riemann–Liouville fractional derivative theory, we have

figure 1

Component model. ( a ) Software component model; ( b ) Newton dashpot.

In Eq. ( 5 ), the values of \(\gamma\) are different, and the creep curve is shown in Fig.  2 . The relationship between the strain generated by the software component and time shows a linear trend as the value of \(\gamma\) increases. When \(\gamma = 1\) , the software component becomes a Newton dashpot, and the relationship between strain and time is completely linear.

figure 2

The creep curve of Abel dashpot.

The establishment of creep damage model based on fractional derivatives

The creep stages of rock and soil are generally divided into: elastic deformation stage, attenuation creep stage, steady-state creep stage and accelerated creep stage 26 , 27 . Scholars generally use the four-element Burgers model to describe the creep characteristics of soil 28 , 29 . However, the Burgers model is a linear model that can only describe the elastic deformation, attenuation creep and steady-state creep stages of creep. The Burgers model cannot describe the accelerated creep stage. In order to describe the whole process of creep, we replaced the Newton dashpot in the Burgers model with the Abel dashpot. In addition, we introduced a nonlinear starting element in series with the improved Burgers model, which is composed of a friction slider and an Abel dashpot in parallel (Fig.  3 ). Therefore, a silt soil creep constitutive model based on fractional derivatives was constructed.

figure 3

Diagram of creep model.

The total creep deformation of silt soil can be expressed as:

where \(\varepsilon\) is the total strain value; \(\varepsilon_{1}\) is the strain value of the spring in the Maxwell model; \(\varepsilon_{2}\) is the strain value of the Kelvin model; \(\varepsilon_{3}\) is the strain value of the Abel dashpot in the Maxwell model; \(\varepsilon_{4}\) is the strain value in the accelerated creep stage.

Strain of spring in Maxwell model

The elastic shear deformation can be solved according to Hooke's law, as shown in Eq. ( 7 ):

where \(\sigma\) is the applied stress; \(E_{1}\) is the elastic modulus of silt soil.

Strain of Kelvin model

As shown Fig.  3 , the deformation in the attenuation creep stage is controlled by the spring and the Abel dashpot in parallel. According to the combination model theory, we have:

where \(\varepsilon_{A}\) is the strain of Abel dashpot; \(\varepsilon_{H}\) is the spring strain; \(E_{2}\) is the elastic modulus of the spring; \(\eta_{1}\) is the viscosity coefficient of Abel dashpot in the Kelvin model.

Rearranging Eq. ( 8 ), we can obtain:

According to the fractional calculus theory and existing literature 30 , we have:

Introducing the Mittag–Leffler function:

Substituting Eq. ( 11 ) into Eq. ( 10 ), we have:

where t is the creep time.

Strain of Abel dashpot in Maxwell model

The steady-state creep stage is controlled by Abel dashpot, and the produced deformation can be obtained by Eq. ( 9 ).

where \(\eta_{2}\) is the viscosity coefficient of Abel dashpot in the Maxwell model.

Strain in accelerated creep stage

During the creep process, especially the accelerated creep stage, the creep parameters of the soil change with time. Due to the influence of stress application time, we introduced damage variables to describe the deterioration of the viscosity coefficient \(\eta\) of Abel dashpot as follows:

where \(\eta^{\prime}\) is the viscosity coefficient of the variable coefficient Abel dashpot; \(D\) is the damage variable of the soil.

If the damage variable and time of silt soil during the creep process satisfy a negative exponential relationship 31 , 32 , we have:

where \(\alpha\) is a material-related parameter, related to creep properties, and its value is determined by testing; t is the creep time.

Substituting Eqs. ( 14 ) and ( 15 ) into Eq. ( 4 ), and integrating on both sides of equation, the constitutive relationship of the Abel dashpot with variable coefficients is:

The accelerated creep stage is composed of a friction slider and a variable coefficient Abel dashpot connected in parallel. The stress \(\sigma_{p}\) on the friction slider is:

where \(\sigma_{d}\) is the shear strength.

From the combination model theory, we have:

where \(\sigma\) is the total stress; \(\sigma_{\delta }\) is the stress in the variable coefficient Abel dashpot.

If \(\sigma < \sigma_{d}\) , with Eqs. ( 13 ) and ( 14 ), we have \(\sigma_{\delta } = 0\) , that is:

If \(\sigma \ge \sigma_{d}\) , with the constitutive relation of variable coefficient Abel dashpot, we have

Equation ( 16 ) can be solved by Laplace transform and inverse Laplace transform:

Substituting Eq. ( 11 ) into Eq. ( 21 ), we have:

Therefore, the deformation in the accelerated creep stage can be expressed as:

where \(\eta_{3}\) is the viscosity coefficient of the Abel dashpot with variable coefficients; t is the creep time. Infinite series can be calculated using the finite term truncation method 33 .

In summary, according to the expressions of the four strain stages, the creep constitutive equation of silt soil is

In existing studies, the fractional-order calculus theory has been commonly used to establish creep models for the creep properties of rocks 30 , 40 . However, there are few about the creep properties of soils. Equation ( 24 ) represents a fractional-order creep model, which improves upon the traditional Burgers creep model by primarily replacing the Abel dashpots. Since the Burgers creep model fails to describe accelerated creep, we introduced a new set of components into the model with a damage coefficient to describe the accelerated creep stage of silt soil. Therefore, Eq. ( 24 ) can describe all creep stages of silt soil in the Yellow River Flood Area.

Triaxial creep test of silt soil

Materials and methods.

Zhengzhou is located in the middle and lower reaches of the Yellow River. The Yellow River passes through the city. The terrain is gentle and in the Yellow River flood area. The soil used in this paper was taken from a construction site in Zhengzhou City and was yellow–brown in color (Fig.  4 a). As shown Table 1 , the particle mass of this type of soil with a particle size of 0.075 mm accounts for 58.4%. The plasticity index is less than 10, which is a type of typical silt soil. As shown in Fig.  4 b, the XRD (X-Ray Diffraction) pattern of silt soil shows that the main minerals are quartz (SiO 2 ), calcite (CaCO 3 ), albite (NaAlSi 3 O 8 ), potassium feldspar (KAlSi 3 O 8 ), dolomite (CaMg(CO 3 ) 2 ), dolomite Mother (KAl 3 Si 3 O 10 (OH) 2 ), etc.

figure 4

Silt soil sample for test and its XRD analysis spectrum. ( a ) Silt soil, ( b ) XRD.

The specimens used in triaxial shear and creep tests are cylindrical, with a diameter of 39.1 mm and a height of 80 mm. The sample preparation process is carried out step by step in accordance with the relevant provisions in the Standard for Geotechnical Testing Methods ( GB/T 50123-2019 ): first, soil materials with different moisture contents are prepared; then, the mass of soil corresponding to specimens with different moisture contents is calculated. Next, the soil with the set mass is weighed and compacted in layers to prepare silt soil samples with varying moisture contents.

Experiment design

In order to analyze the effect of changes in moisture content on the mechanical properties of silt soil, we prepared four groups of soil samples with moisture contents of 8%, 10%, 12%, and 14%, respectively. Silt soil with different moisture contents was prepared into cylindrical samples with a diameter of 39.1 mm and a height of 80 mm. Then, triaxial shear tests and creep tests were performed on those samples under a cell pressure of 100 kPa. First, we loaded the sample into the test instrument and allowed it to complete consolidation under a cell pressure of 100 kPa. We conducted triaxial consolidated undrained shear tests to determine the failure deviator stress \(q_{f}\) of the specimens under different moisture contents (Fig.  5 ). The shear strength of silt soil decreases as the moisture content increases. This is due to the significant softening effect of water on silt soil. The increase in moisture content causes a thicker bound water film to form on the surface of silt soil particles. It plays a lubricating role between soil particles, and water weakens the cementing ability between silt soil particles. This causes the cohesion of silt soil to decrease and make it more likely to deform under pressure 34 , 35 .

figure 5

Triaxial shear test results of silt soil.

When silt soil is subjected to consolidated undrained shear tests, the stress–strain curve exhibits a strain-hardening type. Therefore, the failure deviatoric stress is the deviatoric stress corresponding to the axial strain of 15% 36 . Then, we determined the loading level of the creep test based on the failure deviatoric stress \(q_{f}\) , and finally conducted the creep test using graded loading, as shown in Table 2 . The creep stability criterion selected in this paper is that the axial deformation of the sample within 10000 s is less than 0.01 mm 37 . The results show that the silt soil sample can reach the stability criterion within 24 h of loading. Therefore, the loading time of each level of load is set to 24 h.

Test results and analysis

Creep curve analysis of the whole process

Figure  6 shows the creep curves of the whole process of silt soil under different moisture contents. Under the action of various levels of deviatoric stress, the stress–strain curve is divided into elastic deformation stage, attenuation creep stage and steady-state creep stage. When the deviatoric stress exceeds the shear strength of the silt soil, the axial strain value of the silt soil sample continues to increase under a constant load, and an accelerated creep stage occurs. During the accelerated creep stage, the axial load on the silt soil sample is greater than the shear strength, and the axial strain continues to increase. In addition, the silt soil sample suffers shear dilatation failure (Fig.  7 ). If the first level of load \(q\)  = 70 kPa is applied, the creep curve with a moisture content of 8% is below all curves. This is because the shear strength of silt soil samples with a moisture content of 8% is greater than that of samples with other moisture contents. The greater the shear strength of the silt sample, the smaller the deformation caused by external force. Therefore, when the same magnitude of load is applied, the greater the shear strength of the silt soil sample, the smaller the axial deformation.

figure 6

The creep curve of silt soil of the whole process.

figure 7

Comparison between silt soil samples before and after creep test (right, post-test; left, pre-test).

Creep curve analysis of graded loading

To analyze the creep characteristics of silt soil with different moistue contents under various levels of deviatoric stress, we used the “Chen's method” to process the data of the creep curve of the whole process 38 to obtain the graded loading curve of silt soil (Fig.  8 ). Silt soil undergoes large deformation during the application of deviatoric stress. The axial strain increases with the increase of deviatoric stress. Then, the silt soil shows creep deformation characteristics under the action of various levels of deviatoric stress. When the applied deviatoric stress does not exceed the shear strength of the silt soil, the creep deformation of the silt soil continues to increase with time. However, the creep rate of silt soil continues to decrease, and the axial deformation shows an attenuation trend. When the applied deviatoric stress exceeds the shear strength of the silt soil, the axial strain of the silt soil sample increases rapidly with time until failure.

figure 8

Graded loading curve of silt soil. ( a ) \(\omega\)  = 8%, ( b ) \(\omega\)  = 10%, ( c ) \(\omega\)  = 12%, ( d ) \(\omega\)  = 14%.

Long-term strength analysis

Long-term strength refers to the strength of rock and soil under long-term load. Methods to determine long-term strength include isochronous curve inflection point method, steady-state creep rate inflection point method, transition creep method, etc. 39 . Among them, the isochronous curve inflection point method is to find the relationship between creep deformation and stress level at the same time in a set of creep curves with different stress levels. It is simple and convenient to operate, and more accurate long-term strength values can be obtained. The results from the long-term strength calculation using the steady-state creep rate inflection point method are greater than those from the isochronous curve inflection point method. The transition creep method can only provide the range of long-term strength of materials and cannot determine accurate values. It is not conducive to on-site engineering. Therefore, we used the isochronous curve inflection point method to determine the long-term strength of silt soil. We only show the isochronous curve of the sample with 12% moisture content (Fig.  9 ). Through the inflection point method of isochronous curves, we identified the points that the straight lines of each isochronous curve transform into curves 26 . The point represents the boundary between viscoelasticity and visco-plasticity, that is the process of viscoelastic deformation to visco-plastic deformation, and can be regarded as a long-term strength point. The asymptotes connecting the inflection points of each isochronous curve will tend to a stable value, similar to the stress value corresponding to the asymptote formed by the yield stress. The strength corresponding to this value is the long-term strength value of the silt soil.

figure 9

Stress–strain isochronous curve of sample creep with 12% moisture content.

The failure deviatoric stress ( \(q_{f}\) ) and long-term strength ( \(q_{f}^{\prime}\) ) of silt soil at different moisture contents are shown in Table 3 . The long-term strengths of silt soil samples with different moisture contents have different attenuation. For the convenience of comparison, we defined the long-term strength loss rate of silt soil \(\psi\) as:

In Fig.  10 , the failure deviatoric stress and long-term strength of silt soil decrease as the moisture content of silt soil samples increases. The difference between them is greater. According to Eq. ( 25 ), we calculated the long-term strength loss rate of silt soil (Fig.  11 ). The long-term strength loss rate of the silt soil sample is the smallest at moisture content of 12%. The long-term strength loss rate of silt soil is as high as 51.55% at moisture content of 14%. Therefore, it is necessary to consider the creep characteristics of silt soil as the moisture content increases in further study. The long-term strength value of silt soil was fitted and analyzed. The long-term strength of silt soil decreased exponentially with the increase of moisture content. The specific relationship is shown in Eq. ( 26 ). When analysis the long-term strength of silt soil in the Yellow River Flood Area under different water content conditions, Eq. ( 26 ) can be used for calculation and analysis.

figure 10

The relationship between instantaneous/long-term strength and moisture content.

figure 11

Long-term strength loss rate of silt soil.

Model verification and comparison

Methods for determining the creep model parameters of rock and soil include: creep curve decomposition method, least squares method, regression inversion method, etc. Among them, the application of least squares method to fit the creep curve is the most common and effective. However, the least squares method has a strong dependence on the selection of parameter initial values, and its fitting effect for nonlinear problems is not ideal. The nonlinear least squares method based on the Levenberg–Marquardt (LM) algorithm is not strongly dependent on the initial value and is not easy to converge to a local minimum. It can effectively solve the problem of nonlinear curve fitting 40 . Therefore, we used the nonlinear least squares method based on the LM algorithm to fit the creep curve.

To verify the superiority of the creep model established in this paper, we choose the classical Burgers model to fit the same set of test results. The classical Burgers model is composed of Maxwell model and Kelvin model in series, and its constitutive relation is:

where \(E_{1}\) , \(E_{2}\) is the modulus of elasticity of the spring in the Maxwell and Kelvin models; \(\eta_{1}^{\prime}\) , \(\eta_{2}^{\prime}\) is the coefficient of viscosity of the dashpot in the Maxwell and Kelvin models; t is the creep time.

The two models were used to fit the creep test data of the silt soil with 12% moisture content, respectively. The fitting results are shown in Table 5 and Fig.  12 . In Table 4 , the correlation coefficient R2 of the fractional-order creep model is greater than that in the Burgers model. This indicate that the fit of the fractional-order creep model is better than that of the Burgers model. In Fig.  12 , the fractional-order creep model has higher fitting accuracy and better prediction results than the classical creep model. Therefore, the fractional order creep model was chosen to analyze and study the creep properties of silt soils in the Yellow River flood area.

figure 12

Comparison of the fitting effect of different creep models.

The model in this paper was used to conduct parameter inversion and curve fitting of the graded loading curves of silt soil with different moisture contents. The results are shown in Fig.  13 and Table 5 . As shown in Fig.  13 , the established fractional derivatives creep model can better simulate the creep characteristics of silt soil. In Table 4 , the goodness of fit \(R^{2}\) of the fitting curve and the test curve are both above 0.84. If the moisture content of silt soil is 12%, the goodness of fit \(R^{2}\) between the fitting curve and the experimental curve under the action of deviatoric stress greater than 70 kPa is as high as 0.99. This indicates that the fractional derivative creep model is most effective in describing the creep characteristics of silt soil with a moisture content of 12% and the stress greater than 70 kPa. In addition, the goodness of fit \(R^{2}\) during the accelerated creep stage reaches 0.99. This indicates that the fractional derivative model can better characterize the accelerated creep behavior of silt soil, and verifies the rationality and applicability of the model in this paper. When the deviatoric stress on the silt soil is less than the shear strength, the creep curve only includes the attenuation creep stage and the steady-state creep stage. When the deviatoric stress is greater than the shear strength, the fractional derivative creep model can better simulate the attenuation creep stage, steady-state creep stage and accelerated creep stags of the creep curve. Therefore, the fractional derivative creep model is feasible and has certain application value. This further indicates that fractional calculus theory is applicable in solving nonlinear engineering problems. In summary, for practical engineering problems such as engineering design, reinforcement and post-construction settlement prediction of silt soil slopes and foundation works (roadbeds and foundations) in the Yellow River Flood Area. The creep model (Eq.  24 ) established in this paper can be used for analysis, and the model parameters can be selected for value calculation according to Table 5 .

figure 13

The comparison between experimental data and model fitting results. ( a ) \(\omega\)  = 8%, ( b ) \(\omega\)  = 10%, ( c ) \(\omega\)  = 12%, ( d ) \(\omega\)  = 24%.

Conclusions

The shear strengths of silt soil samples with moisture contents of 8%, 10%, 12% and 14% are 294 kPa, 236 kPa, 179 kPa and 161 kPa, respectively. The shear strength of silt soil decreases with the increase of moisture content. When the moisture content of silt soil increases, the thickness of the bound water film on the surface of silt soil particles increases, and the degree of cementation between particles decreases. In addition, the bound water film lubricates the silt soil particles, causing the cohesion of the silt soil to decrease. Under the same deviatoric stress, the higher the moisture content of the silt soil, the greater the deformation will be.

Through the isochronous curve inflection point method, we obtained the long-term strengths of silt soil with different moisture contents: 174 kPa, 155 kPa, 120 kPa and 78 kPa, respectively. The long-term strength of silt soil decreases exponentially with the increase of moisture content. If the moisture content is 12%, the long-term strength loss rate of silt soil is the smallest, with a value of 32.96%.

By analyzing the graded loading creep curve of silt soil, we established a fractional derivative creep model to describe the creep characteristics of silt soil in the Yellow River flood area. Then, we used the fractional derivative creep model to perform nonlinear fitting of the experimental data. The calculated values of the fractional derivative creep model have a high goodness of fit with the experimental results, indicating that the model can better simulate the creep characteristics of silt soil.

We conducted creep tests on silt soil with four selected moisture contents. The results may be different from the actual engineering silt soil moisture contents. In addition, since the established fractional derivative creep model contains many parameters, the parameters to be solved are more random in performing fitting analysis. Therefore, it is necessary to further optimize the model and calculation methods for the optimal solution in future study.

Data availability

The data that support the findings of this study are available from the corresponding author upon reasonable request.

Huang, C. X. et al. Effects of non-plastic fines on liquefaction properties of saturated silt using discrete element modeling. Eng. Geol. 317 , 107091 (2023).

Article   Google Scholar  

Gu, Z. F., Wei, H. L., Liu, Z. K. & Zhang, M. F. Dynamic response mechanism of silt ground under vibration load. Sustainability. 14 , 10335 (2022).

Gu, Z. F., Zhao, X. W. & Zhang, M. F. Experimental study on the strength characteristics and microstructure of fiber-reinforced red clay. J. North China Univ. Water Resour. Electr. Power (Nat. Sci. Ed.) 45 , 83–89 (2024).

Google Scholar  

Ye, Y. C., Yan, C. D., Luo, X. X., Zhang, R. F. & Yuan, G. J. Analysis of ground subsidence along Zhengzhou metro based on time series InSAR. National Remote Sensing Bulletin. 26 , 1342–1353 (2022).

Du, J. Q. et al. Accumulated settlement characteristics of main canal of middle route of South-to-North Water Diversion Project induced by long-term vibration load of subway. J. Hefei Univ. Technol. (Nat. Sci.) 46 , 1685–1693 (2023).

Zhang, S. C. et al. Land subsidence monitoring along the middle route of South-North Water Diversion Project by SBAS-InSAR. J. Geodesy Geodyn. 42 , 1300–1306 (2022).

Chang, L. C., Wang, H., Wang, H. Y., Wang, Y. & Liu, X. H. Triaxial creep behavior of silted soil in front of dam based on fraction derivatives theory. KSCE J. Civ. Eng. 26 , 3863–3875 (2022).

Wang, L., Shen, S., Wu, Z. R., Wu, D. J. & Li, Y. H. Strength and creep characteristics of methane hydrate-bearing clayey silts of the South China Sea. Energy. 294 , 130789 (2024).

Article   CAS   Google Scholar  

Wu, D. G., Chen, G. Y., Xia, Z. Z., Peng, J. H. & Mao, J. Y. Fractional creep model and experimental study of unsaturated silty clay in Fuyang. Front. Earth Sci. 10 , 1029420 (2023).

Article   ADS   Google Scholar  

Xiao, B., Zhou, P. J. & Wu, S. C. Creep characteristics of reconstituted silty clay under different pre-loading path histories. Buildings. 14 , 1445 (2024).

Yin, Q. et al. A fractal order creep-damage constitutive model of silty clay. Acta Geotech. 18 , 3997–4016 (2023).

Deng, H. Y., Dai, G. L., Qiu, G. Y., Chen, Z. S. & Lin, X. Drained creep test and component creep model of soft silty clay in Hangzhou Bay. J. Southeast Univ. (Nat. Sci. Ed.) 51 , 318–324 (2021).

Hu, M. Y., Xiao, B., Wu, S. C. & Zhou, P. J. Research on creep characteristics and creep model of reconstituted silty clay. Chin. J. Undergr. Sp. Eng. 14 , 332–340 (2018).

Sun, X. M. et al. Experimental study on creep mechanical properties of sandstone with different water contents in Wanfu coal mine. Rock Soil Mech. 44 , 624–636 (2023).

Wan, Y., Chen, G. Q., Sun, X. & Zhang, G. Z. Triaxial creep characteristics and damage model for red sandstone subjected to freeze-thaw cycles under different water contents. Chin. J. Geotech. Eng. 43 , 1463–1472 (2021).

Chao, L. et al. A creep model for ultra-deep salt rock considering thermal-mechanical damage under triaxial stress conditions. J. Rock Mech. Geotech. Eng. 16 , 588–596 (2024).

Liu, G. Y., Chen, Y. L., Du, X. & Azzam, R. A fractional viscoplastic model to predict the time-dependent displacement of deeply buried tunnels in swelling rock. Comput. Geotech. 129 , 103901 (2021).

Cao, J. J., Hu, B., Wang, Z. Q. & Li, J. Creep damage model of weak interlayer based on fractional order integral. Rock Soil Mech. 45 , 454–464 (2024).

Li, D. J., Liu, X. L. & Han, C. Variable-order fractional damage creep model based on equivalent viscoelasticity for rock. Rock Soil Mech 41 , 3831–3839 (2020).

Xu, J. et al. Establishment of generalized rheological model for rock under triaxial stress. J. Min. Saf. Eng. 40 , 1264–1272 (2023).

Wu, J. et al. A novel nonlinear fractional viscoelastic–viscoplastic damage creep model for rock-like geomaterials. Comput. Geotech. 163 , 105726 (2023).

Kamdem, T. C., Richard, K. G. & Béda, T. New description of the mechanical creep response of rocks by fractional derivative theory. Appl. Math. Model. 116 , 624–635 (2023).

Article   MathSciNet   Google Scholar  

Yu, M. Y. et al. Creep behavior of carbonaceous mudstone under triaxial hydraulic coupling condition and constitutive modelling. Int. J. Rock Mech. Min. Sci. 164 , 105357 (2023).

Wang, J., Yang, S., Qi, Y. & Cong, Y. R. Creep characteristics and damage model of coal–rock combinations with different height ratios. Sci. Rep. 13 , 23072 (2023).

Article   ADS   CAS   PubMed   PubMed Central   Google Scholar  

Chen, X. W., Chen, W. B. & Yue, Z. Q. Consolidation of multilayered soil with fractional derivative viscoelasticity due to surface loading and internal pumping. Transportation Geotechnics. 42 , 101083 (2023).

Wang, X. G. et al. An experimental study of the creep characteristics of loess landslide sliding zone soil with different water content. Hydrogeol. Eng. Geol. 49 , 137–143 (2022).

Luo, Z. S. et al. Creep simulation and deterioration mechanism of sandstone under water-rock interaction based on parallel bond model. Rock Soil Mech. 44 , 2445–2457 (2023).

Leng, W. M. et al. A prestress loss model for subgrade considering creep effect of subgrade soil. Rock Soil Mech. 43 , 1671–1682 (2022).

Wang, Y. C. et al. Creep behaviour of saturated purple mudstone under triaxial compression. Eng. Geol 288 , 106159 (2021).

Zhou, H. W., Wang, C. P., Duan, Z. Q., Zhang, M. & Liu, J. F. Time-based fractional derivative approach to creep constitutive model of salt rock. Sci. Sin. Phys. Mech. Astron. 42 , 310–318 (2012).

Yang, S. Q., Xu, P. & Ranjith, P. G. Damage model of coal under creep and triaxial compression. Int. J. Rock Mech. Min.Sci. 80 , 337–345 (2015).

Li, R. J., Ji, F., Shi, Y. C., Pan, Y. J. & Zhang, B. Model test research on creep characteristics of discontinuous structural surfaces slope. Transport. Geotech. 37 , 100863 (2022).

He, Z. L., Zhu, Z. D., Zhu, M. L. & Li, Z. J. An unsteady creep constitutive model based on fractional order derivatives. Rock Soil Mech. 37 , 737–744+775 (2016).

Wang, C. P. et al. Study on the influence of stress and water content on creep characteristics of fractured granite. Chin. J. Rock Mech. Eng. https://doi.org/10.13722/j.cnki.jrme.2023.0562 (2023).

Li, Y. P. et al. Experimental study on the influence of different remediation technologies on the engineering properties of petroleum hydrocarbon-contaminated silty sand. Rock Soil Mech. 44 , 2833–2842 (2023).

Wei, H. L., Gu, Z. F., Liu, Z. K., Wang, Y. P. & Shi, Y. S. Creep properties and creep modelling of Guilin red clay. Appl. Sci. 13 , 12052 (2023).

Li, N., Chen, C. F., Zhu, S. M. & Mao, F. S. Research on creep characteristics and creep model of red clay considering effect of dry density. J. Central South Univ. (Sci. Technol.). 51 , 2174–2182 (2020).

Xu, X. B. et al. Study on creep characteristics and fractional constitutive model of loss in the Ningmeng River reach of Yellow River. J. North China Univ. Water Resour. Electr. Power (Nat. Sci. Ed.) 44 , 61–68 (2023).

Liu, D., Xu, J. C. & Pu, H. Experimental study on creep characteristics of gangue cemented fillers with different water content. J. Min. Saf. Eng. 38 , 1055–1062 (2021).

Yang, J. T. et al. A creep constitutive model of salt rock considering hardening and damage effects. Rock Soil Mech. 44 , 2953–2966 (2023).

Download references

Acknowledgements

All authors would like to thank Guilin University of Technology and Zhengzhou University of Aeronautics for their support.

This research was funded by the Key R&D and Promotion Projects in Henan Province (tackling key problems in science and technology) (Grant No. 232102321010) and the Foundation of Technical Innovation Center of Mine Geological Environmental Restoration Engineering in Southern Area (Grant No. CXZX2020002).

Author information

Authors and affiliations.

School of Civil Engineering, Guilin University of Technology, Guilin, 541004, China

Zhanfei Gu, Hailong Wei & Zhikui Liu

School of Civil Engineering and Environment, Zhengzhou University of Aeronautics, Zhengzhou, 450046, China

You can also search for this author in PubMed   Google Scholar

Contributions

Conceptualization: Z.G. and H.W. Methodology: Z.G. and H.W. Software: Z.G. and H.W. Validation: Z.G. and Z.L. Formal analysis: Z.G. and H.W. Data curation: H.W. Writing—original draft preparation: Z.G. and H.W. Writing—review and editing: Z.L. and Z.G. Supervision: Z.G. and Z.L. All authors have read and agreed to the published version of the manuscript. The Author agrees to publication in the Journal indicated below and also to publication of the article in English by Springer in Springer’s corresponding English-language journal.

Corresponding authors

Correspondence to Zhanfei Gu or Zhikui Liu .

Ethics declarations

Competing interests.

The authors declare no competing interests.

Ethics approval

The entire content of the article are written in accordance with ethical standards.

Additional information

Publisher's note.

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Rights and permissions

Open Access This article is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License, which permits any non-commercial use, sharing, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if you modified the licensed material. You do not have permission under this licence to share adapted material derived from this article or parts of it. The images or other third party material in this article are included in the article’s Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by-nc-nd/4.0/ .

Reprints and permissions

About this article

Cite this article.

Gu, Z., Wei, H. & Liu, Z. An experimental and theoretical study on the creep behavior of silt soil in the Yellow River flood area of Zhengzhou City. Sci Rep 14 , 20002 (2024). https://doi.org/10.1038/s41598-024-70947-w

Download citation

Received : 28 March 2024

Accepted : 22 August 2024

Published : 28 August 2024

DOI : https://doi.org/10.1038/s41598-024-70947-w

Share this article

Anyone you share the following link with will be able to read this content:

Sorry, a shareable link is not currently available for this article.

Provided by the Springer Nature SharedIt content-sharing initiative

  • Fractional derivative
  • Creep characteristics
  • Creep model
  • Yellow River flood area

By submitting a comment you agree to abide by our Terms and Community Guidelines . If you find something abusive or that does not comply with our terms or guidelines please flag it as inappropriate.

Quick links

  • Explore articles by subject
  • Guide to authors
  • Editorial policies

Sign up for the Nature Briefing newsletter — what matters in science, free to your inbox daily.

research design experimental method

Information

  • Author Services

Initiatives

You are accessing a machine-readable page. In order to be human-readable, please install an RSS reader.

All articles published by MDPI are made immediately available worldwide under an open access license. No special permission is required to reuse all or part of the article published by MDPI, including figures and tables. For articles published under an open access Creative Common CC BY license, any part of the article may be reused without permission provided that the original article is clearly cited. For more information, please refer to https://www.mdpi.com/openaccess .

Feature papers represent the most advanced research with significant potential for high impact in the field. A Feature Paper should be a substantial original Article that involves several techniques or approaches, provides an outlook for future research directions and describes possible research applications.

Feature papers are submitted upon individual invitation or recommendation by the scientific editors and must receive positive feedback from the reviewers.

Editor’s Choice articles are based on recommendations by the scientific editors of MDPI journals from around the world. Editors select a small number of articles recently published in the journal that they believe will be particularly interesting to readers, or important in the respective research area. The aim is to provide a snapshot of some of the most exciting work published in the various research areas of the journal.

Original Submission Date Received: .

  • Active Journals
  • Find a Journal
  • Proceedings Series
  • For Authors
  • For Reviewers
  • For Editors
  • For Librarians
  • For Publishers
  • For Societies
  • For Conference Organizers
  • Open Access Policy
  • Institutional Open Access Program
  • Special Issues Guidelines
  • Editorial Process
  • Research and Publication Ethics
  • Article Processing Charges
  • Testimonials
  • Preprints.org
  • SciProfiles
  • Encyclopedia

electronics-logo

Article Menu

research design experimental method

  • Subscribe SciFeed
  • Recommended Articles
  • Google Scholar
  • on Google Scholar
  • Table of Contents

Find support for a specific problem in the support section of our website.

Please let us know what you think of our products and services.

Visit our dedicated information section to learn more about MDPI.

JSmol Viewer

Research on predictive speed control scheme for surface-mounted permanent magnet servo systems.

research design experimental method

1. Introduction

2. deadbeat predictive speed control, 2.1. dpsc controller design, 2.2. determination of control parameters, 3. control performance analysis, 3.1. comparison of control performance, 3.2. parameter mismatch impact, 4. esmo torque observer, 4.1. the observer design, 4.2. principle of system control, 5. experimental research, 5.1. observer performance analysis, 5.2. dynamic response analysis, 5.3. disturbance rejection performance analysis, 6. conclusions.

  • The inertia error and torque error have corresponding effects on the deadbeat predictive speed control. Specifically, the current error of the predictive control output increases with the increase of the inertia error and torque error, but is more significantly influenced by torque error, being more sensitive to it.
  • The designed ESMO observer can rapidly and accurately observe the load torque, with a fast dynamic response to track load changes and small steady-state error. The observation accuracy is 94.37%, which can provide disturbance compensation for speed control.
  • The DPSC control method with an ESMO observer can effectively improve the system’s dynamic response and disturbance rejection performance. Compared to conventional PI control, the speed step response time is reduced from 0.675 s to 0.650 s, and when subjected to a load disturbance of 0.4 Nm, the speed fluctuation and settling time decrease from 9 rpm and 1.7 s to 6 rpm and 0.5 s, respectively.
  • The method proposed in this article has significant theoretical significance for improving the control performance of an SPMSM speed system and can be applied to control scenarios with fast speed response requirements, such as industrial robots, CNC machine tools, and electric vehicles.

Author Contributions

Data availability statement, acknowledgments, conflicts of interest.

  • Qiu, Z.; Chen, Y.; Kang, Y.; Liu, X.; Gu, F. Investigation into periodic signal-based dithering modulations for suppression sideband vibro-acoustics in PMSM used by electric vehicles. IEEE Trans. Energy Convers. 2020 , 36 , 1787–1796. [ Google Scholar ] [ CrossRef ]
  • Sun, Y.; Yang, M.; Wang, B.; Chen, Y.; Xu, D. Precise position control based on resonant controller and second-order sliding mode observer for PMSM-driven feed servo system. IEEE Trans. Transp. Electrif. 2022 , 9 , 196–209. [ Google Scholar ] [ CrossRef ]
  • Zhao, T.; Wu, S.; Cui, S. Multiphase PMSM with asymmetric windings for more electric aircraft. IEEE Trans. Transp. Electrif. 2020 , 6 , 1592–1602. [ Google Scholar ] [ CrossRef ]
  • Fang, S.; Wang, Y.; Wang, W.; Chen, Y.; Chen, Y. Design of permanent magnet synchronous motor servo system based on improved particle swarm optimization. IEEE Trans. Power Electron. 2021 , 37 , 5833–5846. [ Google Scholar ] [ CrossRef ]
  • Wu, J.; Zhang, J.; Nie, B.; Liu, Y.; He, X. Adaptive control of PMSM servo system for steering-by-wire system with disturbances observation. IEEE Trans. Transp. Electrif. 2021 , 8 , 2015–2028. [ Google Scholar ] [ CrossRef ]
  • Wang, Y.; Feng, Y.; Zhang, X.; Liang, J. A new reaching law for antidisturbance sliding-mode control of PMSM speed regulation system. IEEE Trans. Power Electron. 2019 , 35 , 4117–4126. [ Google Scholar ] [ CrossRef ]
  • Xu, W.; Junejo, A.K.; Liu, Y.; Hussien, M.G.; Zhu, J. An efficient antidisturbance sliding-mode speed control method for PMSM drive systems. IEEE Trans. Power Electron. 2020 , 36 , 6879–6891. [ Google Scholar ] [ CrossRef ]
  • Vadivel, R.; Joo, Y.H. Reliable fuzzy H ∞ control for permanent magnet synchronous motor against stochastic actuator faults. IEEE Trans. Syst. Man Cybern. Syst. 2019 , 51 , 2232–2245. [ Google Scholar ] [ CrossRef ]
  • Mani, P.; Rajan, R.; Shanmugam, L.; Joo, Y.H. Adaptive fractional fuzzy integral sliding mode control for PMSM model. IEEE Trans. Fuzzy Syst. 2018 , 27 , 1674–1686. [ Google Scholar ] [ CrossRef ]
  • Gao, S.; Wei, Y.; Zhang, D.; Qi, H.; Wei, Y.; Yang, Z. Model-free hybrid parallel predictive speed control based on ultralocal model of PMSM for electric vehicles. IEEE Trans. Ind. Electron. 2022 , 69 , 9739–9748. [ Google Scholar ] [ CrossRef ]
  • Li, Z.; Wang, F.; Ke, D.; Li, J.; Zhang, W. Robust continuous model predictive speed and current control for PMSM with adaptive integral sliding-mode approach. IEEE Trans. Power Electron. 2021 , 36 , 14398–14408. [ Google Scholar ] [ CrossRef ]
  • Nguyen, T.T.; Tran, H.N.; Nguyen, T.H.; Jeon, J.W. Recurrent neural network-based robust adaptive model predictive speed control for PMSM with parameter mismatch. IEEE Trans. Ind. Electron. 2022 , 70 , 6219–6228. [ Google Scholar ] [ CrossRef ]
  • Hang, J.; Shu, X.; Ding, S.; Huang, Y. Robust open-circuit fault diagnosis for PMSM drives using wavelet convolutional neural network with small samples of normalized current vector trajectory graph. IEEE Trans. Ind. Electron. 2023 , 70 , 7653–7663. [ Google Scholar ] [ CrossRef ]
  • He, L.; Wang, F.; Wang, J.; Rodríguez, J. Zynq implemented Luenberger disturbance observer based predictive control scheme for PMSM drives. IEEE Trans. Power Electron. 2019 , 35 , 1770–1778. [ Google Scholar ] [ CrossRef ]
  • Li, S.; Xu, Y.; Zhang, W.; Zou, J. Robust deadbeat predictive direct speed control for PMSM with dual second-order sliding-mode disturbance observers and sensitivity analysis. IEEE Trans. Power Electron. 2023 , 38 , 8310–8326. [ Google Scholar ] [ CrossRef ]
  • Kawai, H.; Zhang, Z.; Kennel, R.; Doki, S. Direct speed control based on finite control set model predictive control with voltage smoother. IEEE Trans. Ind. Electron. 2022 , 70 , 2363–2372. [ Google Scholar ] [ CrossRef ]
  • Zhang, X.; He, Y. Direct voltage-selection based model predictive direct speed control for PMSM drives without weighting factor. IEEE Trans. Power Electron. 2018 , 34 , 7838–7851. [ Google Scholar ] [ CrossRef ]
  • Wang, Z.; Chai, J.; Xiang, X.; Sun, X.; Lu, H. A novel online parameter identification algorithm designed for deadbeat current control of the permanent-magnet synchronous motor. IEEE Trans. Ind. Appl. 2021 , 58 , 2029–2041. [ Google Scholar ] [ CrossRef ]
  • Feng, G.; Lai, C.; Tan, X.; Wang, B.; Kar, N.C. Optimal current modeling and identification for fast and efficient torque ripple minimization of PMSM using theoretical and experimental models. IEEE Trans. Ind. Electron. 2020 , 68 , 11806–11816. [ Google Scholar ] [ CrossRef ]
  • Liu, H.; Lin, W.; Liu, Z.; Buccella, C.; Cecati, C. Model predictive current control with model-aid extended state observer compensation for PMSM drive. IEEE Trans. Power Electron. 2022 , 38 , 3152–3162. [ Google Scholar ] [ CrossRef ]
  • Wang, F.; He, L. FPGA-based predictive speed control for PMSM system using integral sliding-mode disturbance observer. IEEE Trans. Ind. Electron. 2020 , 68 , 972–981. [ Google Scholar ] [ CrossRef ]
  • Gao, F.; Yin, Z.; Li, L.; Li, T.; Liu, J. Gaussian noise suppression in deadbeat predictive current control of permanent magnet synchronous motors based on augmented fading Kalman filter. IEEE Trans. Energy Convers. 2022 , 38 , 1410–1420. [ Google Scholar ] [ CrossRef ]
  • Alma, Y.A.; Gustavo, M.-G.; Jorge, R. Nested High Order Sliding Mode Controller with Back-EMF Sliding Mode Observer for a Brushless Direct Current Motor. Electronics 2020 , 9 , 1041. [ Google Scholar ] [ CrossRef ]
  • Du, S.; Liu, Y.; Wang, Y.; Li, Y.; Yan, Z. Research on a Permanent Magnet Synchronous Motor Sensorless Anti-Disturbance Control Strategy Based on an Improved Sliding Mode Observer. Electronics 2023 , 12 , 4188. [ Google Scholar ] [ CrossRef ]
  • Yao, G.; Gao, J.; Lei, J.; Han, S.; Xiao, Y. Design of Fractional-Order Non-Singular Terminal Sliding Mode Observer Sensorless System for Surface-Mounted Permanent Magnet Synchronous Motor. Electronics 2024 , 13 , 1601. [ Google Scholar ] [ CrossRef ]
  • Tang, P.; Dai, Y.; Li, Z. Unified Predictive Current Control of PMSMs with Parameter Uncertainty. Electronics 2019 , 8 , 1534. [ Google Scholar ] [ CrossRef ]
  • Zhu, Y.; Tao, B.; Xiao, M.; Yang, G.; Zhang, X.; Lu, K. Luenberger Position Observer Based on Deadbeat-Current Predictive Control for Sensorless PMSM. Electronics 2020 , 9 , 1325. [ Google Scholar ] [ CrossRef ]
  • Mohamed, A.; Christoph, H.; Ralph, K. Robust Predictive Control Scheme for Permanent-Magnet Synchronous Generators Based Modern Wind Turbines. Electronics 2021 , 10 , 1596. [ Google Scholar ] [ CrossRef ]
  • Zhang, X.; Cheng, Y.; Zhao, Z.; He, Y. Robust Model Predictive Direct Speed Control for SPMSM Drives Based on Full Parameter Disturbances and Load Observer. IEEE Trans. Power Electron. 2020 , 35 , 8361–8373. [ Google Scholar ] [ CrossRef ]
  • Yang, L.; Li, H.; Huang, J.; Zhang, Z.; Zhao, H. Model Predictive Direct Speed Control with Novel Cost Function for SMPMSM Drives. IEEE Trans. Power Electron. 2022 , 37 , 9586–9596. [ Google Scholar ] [ CrossRef ]
  • Yim, J.; You, S.; Lee, Y.; Kim, W. Chattering attenuation disturbance observer for sliding mode control: Application to permanent magnet synchronous motors. IEEE Trans. Ind. Electron. 2022 , 70 , 5161–5170. [ Google Scholar ] [ CrossRef ]
  • Kashif, M.; Singh, B. Modified active-power MRAS based adaptive control with reduced sensors for PMSM operated solar water pump. IEEE Trans. Energy Convers. 2022 , 38 , 38–52. [ Google Scholar ] [ CrossRef ]
  • Lu, W.; Tang, B.; Ji, K.; Lu, K.; Wang, D.; Yu, Z. A new load adaptive identification method based on an improved sliding mode observer for PMSM position servo system. IEEE Trans. Power Electron. 2020 , 36 , 3211–3223. [ Google Scholar ] [ CrossRef ]

Click here to enlarge figure

ParametersValueParametersValue
Rated power (kW)3Stator inductance (mH)23.1
Rated torque (Nm)5Stator resistance (Ω)1.386
Rated speed (rpm)1500Rotational inertia (kg·m )2.34 × 10
Rated current (A)5Friction coefficient (N·s/m)3.01 × 10
Number of pole pairs2
Control MethodSettling TimeFluctuate Error
PI0.675 s4 rpm
PI + ESMO0.675 s3 rpm
DPSC + ESMO0.65 s2 rpm
Control MethodOvershootSettling Time
PI9 rpm1.7 s
PI + ESMO9 rpm0.9 s
DPSC + ESMO6 rpm0.5 s
Control MethodOvershootSettling Time
PI12 rpm2.4 s
PI + ESMO9 rpm1.4 s
DPSC + ESMO7 rpm0.7 s
The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

Song, Z.; Zhou, W.; Mo, Y. Research on Predictive Speed Control Scheme for Surface-Mounted Permanent Magnet Servo Systems. Electronics 2024 , 13 , 3421. https://doi.org/10.3390/electronics13173421

Song Z, Zhou W, Mo Y. Research on Predictive Speed Control Scheme for Surface-Mounted Permanent Magnet Servo Systems. Electronics . 2024; 13(17):3421. https://doi.org/10.3390/electronics13173421

Song, Zhe, Weihong Zhou, and Yu Mo. 2024. "Research on Predictive Speed Control Scheme for Surface-Mounted Permanent Magnet Servo Systems" Electronics 13, no. 17: 3421. https://doi.org/10.3390/electronics13173421

Article Metrics

Article access statistics, further information, mdpi initiatives, follow mdpi.

MDPI

Subscribe to receive issue release notifications and newsletters from MDPI journals

IMAGES

  1. Experimental Study Design: Types, Methods, Advantages

    research design experimental method

  2. 15 Experimental Design Examples (2024)

    research design experimental method

  3. Basics of Experimental Research Design

    research design experimental method

  4. PPT

    research design experimental method

  5. Experimental Design Steps

    research design experimental method

  6. PPT

    research design experimental method

COMMENTS

  1. Experimental Design

    Learn how to plan and conduct scientific experiments to test hypotheses or research questions. Explore different types of experimental design, methods, data collection and analysis techniques, and examples.

  2. Guide to Experimental Design

    Learn how to design an experiment to study causal relationships between variables. Follow five steps: define your variables, write your hypothesis, design your treatments, assign your subjects, and measure your dependent variable.

  3. Experimental Research Designs: Types, Examples & Advantages

    Learn how to design and conduct experimental research with a scientific approach using two sets of variables. Find out the types, advantages, and mistakes to avoid in experimental research designs.

  4. Exploring Experimental Research: Methodologies, Designs, and

    Experimental research serves as a fundamental scientific method aimed at unraveling. cause-and-effect relationships between variables across various disciplines. This. paper delineates the key ...

  5. What Is a Research Design

    Learn how to design a research strategy using empirical data. Compare different types of research design, such as experimental, correlational, qualitative and mixed methods, and see examples for each type.

  6. Experimental Design: Types, Examples & Methods

    Three types of experimental designs are commonly used: 1. Independent Measures. Independent measures design, also known as between-groups, is an experimental design where different participants are used in each condition of the independent variable. This means that each condition of the experiment includes a different group of participants.

  7. A Quick Guide to Experimental Design

    Learn how to design an experiment to test a causal hypothesis. Follow the five steps: define variables, write hypothesis, design treatments, assign subjects, measure dependent variable.

  8. Experimental research

    10 Experimental research. 10. Experimental research. Experimental research—often considered to be the 'gold standard' in research designs—is one of the most rigorous of all research designs. In this design, one or more independent variables are manipulated by the researcher (as treatments), subjects are randomly assigned to different ...

  9. Research Design

    Learn how to design a research strategy using empirical data. Compare different types of research design, such as experimental, quasi-experimental, correlational, and qualitative, and choose the most suitable one for your question.

  10. Experimental Research Design

    Experimental research design is centrally concerned with constructing research that is high in causal (internal) validity. Randomized experimental designs provide the highest levels of causal validity. Quasi-experimental designs have a number of potential threats to their causal validity. Yet, new quasi-experimental designs adopted from fields ...

  11. Guide to experimental research design

    Experimental design is a research method that enables researchers to assess the effect of multiple factors on an outcome.. You can determine the relationship between each of the variables by: Manipulating one or more independent variables (i.e., stimuli or treatments). Applying the changes to one or more dependent variables (i.e., test groups or outcomes)

  12. An Introduction to Experimental Design Research

    This book explicitly answers the need articulated in Sect. 1.1: to develop a tradition of experimentation that is both grounded in rigorous methodology and tailored to the specific challenges of design research; to support design researchers in the following: Fig. 1.2. The middle ground between methodology and methods.

  13. Experiments and Quantitative Research

    Here is a brief overview from the SAGE Encyclopedia of Survey Research Methods: Experimental design is one of several forms of scientific inquiry employed to identify the cause-and-effect relation between two or more variables and to assess the magnitude of the effect (s) produced. The independent variable is the experiment or treatment applied ...

  14. Experimental Research Designs: Types, Examples & Methods

    Learn about the different types of experimental research designs, such as pre-experimental, quasi-experimental, and true experimental, and how they are used in various fields. See examples of experimental research methods and their characteristics, such as randomization, control group, and statistical analysis.

  15. Types of Research Designs Compared

    You can also create a mixed methods research design that has elements of both. Descriptive research vs experimental research. Descriptive research gathers data without controlling any variables, while experimental research manipulates and controls variables to determine cause and effect.

  16. Experimental Design: Definition and Types

    An experimental design is a detailed plan for collecting and using data to identify causal relationships. Through careful planning, the design of experiments allows your data collection efforts to have a reasonable chance of detecting effects and testing hypotheses that answer your research questions. An experiment is a data collection ...

  17. Experimental Research

    Experimental science is the queen of sciences and the goal of all speculation. Roger Bacon (1214-1294) Experiments are part of the scientific method that helps to decide the fate of two or more competing hypotheses or explanations on a phenomenon. The term 'experiment' arises from Latin, Experiri, which means, 'to try'.

  18. (PDF) An Introduction to Experimental Design Research

    Abstract and Figures. Design research brings together influences from the whole gamut of social, psychological, and more technical sciences to create a tradition of empirical study stretching back ...

  19. Research Design

    This will guide your research design and help you select appropriate methods. Select a research design: There are many different research designs to choose from, including experimental, survey, case study, and qualitative designs. Choose a design that best fits your research question and objectives.

  20. Study/Experimental/Research Design: Much More Than Statistics

    Study, experimental, or research design is the backbone of good research. It directs the experiment by orchestrating data collection, defines the statistical analysis of the resultant data, and guides the interpretation of the results. When properly described in the written report of the experiment, it serves as a road map to readers, 1 helping ...

  21. How the Experimental Method Works in Psychology

    The experimental method involves manipulating one variable to determine if this causes changes in another variable. This method relies on controlled research methods and random assignment of study subjects to test a hypothesis. For example, researchers may want to learn how different visual patterns may impact our perception.

  22. Experimental Method In Psychology

    There are three types of experiments you need to know: 1. Lab Experiment. A laboratory experiment in psychology is a research method in which the experimenter manipulates one or more independent variables and measures the effects on the dependent variable under controlled conditions. A laboratory experiment is conducted under highly controlled ...

  23. Experimental Research Design

    Abstract. This chapter addresses the peculiarities, characteristics, and major fallacies of experimental research designs. Experiments have a long and important history in the social, natural, and medicinal sciences. Unfortunately, in business and management this looks differently. This is astounding, as experiments are suitable for analyzing ...

  24. Some non parametric tests for umbrella alternatives in experimental

    Abstract. Testing the null hypothesis against the umbrella alternative arises in various practical situations. This article has studied some non parametric tests that may be used for umbrella alternatives and their performance in different symmetric and asymmetric distributions, including long-tailed, short-tailed, and a mixture of two distributions.

  25. An experimental and theoretical study on the creep behavior of silt

    We took the silt soil in the Yellow River flood area of Zhengzhou City as the research object and carried out triaxial shear and triaxial creep tests on silt soil with different moisture contents ...

  26. Research on Predictive Speed Control Scheme for Surface-Mounted ...

    To further validate the performance of the proposed method, experimental research was conducted near the rated load. The PMSM is stable when operated at a reference speed of 1000 rpm with a load torque of 1.1 Nm, and a sudden additional load torque of 4 Nm is applied to the system.

  27. Accurate design, simulation and implementation of AC/DC inductors for

    This methodology includes an analytical design, a finite element modeling of the electromagnetic behavior with JMAG software, a simulation analysis in a Simulink environment, and experimental verification of the effectiveness of inductor design in a laboratory-scale step-up boost power converter prototype.