Submitted:
04 June 2025
Posted:
05 June 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Literature Review
2.1. Virtual Labs in STEM Education
2.2. MCDA in Educational Technology
2.3. Conjoint Analysis
- 1.
-
Preference measurement: Preferences are assessed through ranking or rating tasks. The relative importance of attribute k is given by Equation 1:Where is the utility of the level j of the attribute k.
- 2.
-
Utility estimation: Utilities values are estimated using models such as MONANOVA, OLS, LINMAP, PROBIT, or LOGIT as shown in Equation 2, in the case of linear models:Where represents the parameter estimate for level j of attribute k.
- 3.
- Experiential design: Fractional factorial designs, such as Latin squares, reduce the number of profiles required for analysis. For three attributes A, B, and C, each with three levels, a Latin square reduces the total profiles from 27 to 9.
3. Methodology
3.1. Data Collection
3.1.1. Presentation of BRVL
3.1.2. Technical Description of Competing VLs
3.2. Selected Criteria
3.3. MCDA Methods
3.4. Survey Protocol
3.4.1. Profile of Respondents
3.4.2. Requested Survey Data
3.4.3. Decision Table Formation
3.4.4. Implementation of MCDA Methods
- is the performance of alternative on criterion .
- denotes the nearest integer to the real x. We admit that but .
- is the mean deviation, and denote respectively maximal and the minimal values of .
3.4.5. Sensitivity to Parameter Values
4. Results and Analysis
4.1. Data Reliability
4.2. Averaged Ratings
4.3. Criteria Weights
4.4. Benchmarking VLs
4.5. Sensitivity Analysis
5. Discussion
5.1. Synthesis of Methodological and Conceptual Contributions
5.1.1. Robustness of Results
5.1.2. Prioritization of Contextual Criteria
5.2. Break from Worldwide Models
5.2.1. Curricular Misalignment
5.2.2. Targeted Pedagogical Shortcomings
5.3. Technological Advances and Infrastructure Constraints
6. Conclusion
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| Betw. subj. | Between subjects |
| BRVL | Bazin-R VirtLab |
| Curr. compl. | Curriculum compliance |
| Dev. Tech. | Development Technology |
| df | Degree of freedom |
| Know. build. | Knowledge building |
| ICC | Intraclass Correlation Coefficient |
| ICT | Information and Communication Technology |
| Intra pop. | Intra population |
| Misc. corr. | Misconceptions correction |
| MCDA | Multi-Criteria Decision Aid |
| Nonadd. | Nonadditivity |
| Sig. | Significance threshold |
| STEM | Science, Technology, Engineering, and Mathematics |
| Sum Sq. | Sum of squares |
| VL | Virtual lab |
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| References | Description | Field | Country |
|---|---|---|---|
| [14] | Proposes an online virtual lab to impart lab skills to students through a 3D environment. | STEM | Greece |
| [12] | Highlights that the integration of technologies is essential to modernize STEM education. | STEM | South Africa |
| [13] | Demonstrates that virtual labs, such as those in Project NEWTON, enhance hands-on STEM education. | STEM | Ireland |
| [15] | Proposes the VESLL virtual laboratory as a solution to overcome learning barriers, such as limited access to resources and the underrepresentation of women in STEM. | Engineering | USA |
| [16] | Examines the role of artificial intelligence in STEM education and its potential to improve the learning of struggling students. | STEM | Unspecified |
| [17] | Shows that VLs allow students to better assimilate mechanics concepts and more effectively apply their knowledge to real-life situations than physical labs. | Physics | Unspecified |
| [18] | Develops a remote renewable energy laboratory for secondary schools. | Physics | Unspecified |
| [19] | Presents an online learning solution to address the shortage of teachers and the lack of hands-on science laboratories. | STEM | India |
| [20] | Presents a cost-effective virtual laboratory as an alternative to physical laboratories. | STEM | Morocco |
| [21] | Analyzes the impact VLs in higher education and highlights their essential role in distance learning. | STEM | Australia |
| References | Description | Application | Used methods |
|---|---|---|---|
| [22] | Proposes an assessment of blockchain innovation in free basic education to improve governance and optimize strategic decisions. | Education | Cognitive Analytics Management (CAM) |
| [23] | Explores the application of MCDA in mathematics education to optimize pedagogical decision-making. | Mathematics education | F-DEMATEL |
| [24] | Proposes a hybrid MCDM approach to evaluate and rank online learning platforms. | E-learning | BWM, SAW, Delphi, and AHP |
| [25] | Evaluates the use of additive manufacturing to create healthcare educational materials. | Health sciences education | AHP |
| [26] | Explores several MCDA methods to assess the quality of learning scenarios. | Education | AHP, Fuzzy logic-based methods |
| [27] | Analyzes decision-making strategies in education and explores emerging innovations to improve educational decision-making. | Education | Unspecified |
| Virtual Lab | Dev. Tech. | Year | Basic concepts |
|---|---|---|---|
| Algodoo | C++ | 2009 | Classical mechanics (motion, forces, gravity, collisions), Kinetic and potential energy, Friction and air resistance, Simple machines (levers, pulleys, inclined planes), Fluids and buoyancy, Geometric optics (reflection, refraction), Electricity and simple circuits (in some versions). |
| Bazin-R VirtLab | C++, Javascript, Blender, Babylon.js, Node.js, SQLite | 2024 | Kinematics and dynamics (motion, forces, Newton’s laws) and Applications of Principles (Mechanical work, energy, and power). |
| LVP | Java, Python | 1990-2000 | Kinematics and dynamics (motion, forces, Newton’s laws), Energy and power, Fluid mechanics (pressure, flow rate), Thermodynamics (gas laws, specific heat), Electricity (Ohm’s law, series and parallel circuits), Optics (mirrors, lenses, interference). |
| Physic Virtual lab | Java, Kotlin, C# (Unity) | 2010 | Mechanics (motion, forces, gravity), Energy and work, Electricity (simple circuits, resistances), Magnetism (magnetic fields, induction), Waves and sound (frequency, amplitude), Optics (reflection, refraction). |
| Physion | C++ | 2010 | Mechanics (motion, collisions, forces), Kinetic and potential energy, Friction and resistance, Simple machines (pulleys, levers), Fluids (buoyancy, pressure), Oscillations (springs, pendulums). |
| Virtual Lab | JavaScript, Python, C++, Java, C# | 1990-2010 | Mechanics (kinematics, dynamics, gravity), Energy and work, Thermodynamics (heat transfer, gas laws), Electricity and magnetism (circuits, fields), Waves and optics (reflection, refraction, interference), Modern physics (relativity, quantum mechanics in some advanced cases). |
| Criterion | Description | References |
|---|---|---|
| Curriculum compliance | Alignment between the content of the VL and the official curriculum (objectives, skills to develop, methodological approaches, essential knowledge, etc.). This criterion evaluates whether the simulations cover the concepts required for the target level (e.g., teaching physics in the 4th year of scientific humanities in the DRC) and adhere to the pedagogical progression set by educational authorities. | [33,34,35,36,37] |
| Knowledge building | The ability of a VL to foster active, constructive, and even autonomous learning, in which the learner formulates hypotheses, conducts experiments, and draws conclusions. | [38,39,40,41] |
| Correction of misconceptions | Effectiveness of the VL in identifying and correcting students’ misconceptions (e.g., 1 kg of stone is heavier than 1 kg of paper). This criterion also evaluates the remediation strategies provided by the VL. | [42,43,44,45,46] |
| Usability | This criterion refers to the technical accessibility and ergonomics of the VL (user-friendly interface, reduced learning time, compatibility with existing equipment). It includes the clarity of instructions and the autonomy of use by teachers/students. | [47,48,49,50,51,52,53,54,55] |
| Method | Description | Purpose | Refences |
|---|---|---|---|
| AHP | Compares criteria and alternatives pairwise via a ratio matrix, with consistency check of judgments. Enables complete prioritization. | Ranking | [56] |
| TOPSIS | Ranks alternatives by proximity to ideal solution and distance from anti-ideal solution. | Ranking | [57] |
| ELECTRE I | Identifies a core of non-dominated alternatives using concordance/discordance thresholds. | Choice | [58,59] |
| ELECTRE II | Generates a complete ranking (strong/weak pre-order) with veto thresholds. | Ranking | [59,60] |
| ELECTRE TRI | Assigns alternatives to predefined categories (e.g., High/Medium/Low). | Sorting | [59,61] |
| PROMETHEE I | Generates a partial ranking based on outranking flows (incomparabilities possible). | Partial ranking | [62,63] |
| PROMETHEE II | Generates a complete net ranking via net flows, resolving incomparabilities. | Complete ranking | [64] |
| Profile | Curr. Compl | Know. Build. | Misc. corr. | Usability |
|---|---|---|---|---|
| 1 | Compliant | Partially | Not at all | Very easy |
| 2 | Compliant | Not at all | Effectively | Easy |
| 3 | Non-compliant | Effectively | Not at all | Easy |
| 4 | Non-compliant | Not at all | Partially | Very easy |
| 5 | Non-compliant | Partially | Effectively | Difficult |
| 6 | Compliant | Not at all | Not at all | Difficult |
| 7 | Compliant | Effectively | Effectively | Very easy |
| 8 | Compliant | Effectively | Partially | Difficult |
| 9 | Compliant | Partially | Partially | Easy |
| Method | Parameters |
|---|---|
| AHP | None |
| TOPSIS | None |
| ELECTRE I | , |
| ELECTRE II | , , |
| ELECTRE TRI | , , |
| PROMETHEE I | , , all the functions (usual, linear, and Gaussian) were used. |
| PROMETHEE II | , , all the functions (usual, linear, and Gaussian) were used. |
| Method | Parameter | Role | Typical Value | Guidelines | References |
|---|---|---|---|---|---|
| ELECTRE | c | Minimal agreement to dominate | 0.60-0.75 | Higher = stricter dominance (e.g., 0.70 for robust choices) | [58,65] |
| d | Maximal opposition allowed | 0.20-0.40 | Lower = more veto power (e.g., 0.30 balances rigor/flexibility) | [58,66] | |
| v | Absolute rejection threshold | 4-8 | 20-30% of max scale (e.g., rejects ≤ 4) | [65,67] | |
| PROMETHEE | q | Minimal negligible difference | 1-5% of scale | Differences are ignored | [62,68] |
| p | Minimal strong preference | 10-15% of scale | Differences trigger full preference | [69] | |
| Function | Shapes preference intensity | Gaussian-Linear-Usual | Gaussian for smooth transitions () | [62] |
| ELECTRE | ||
|---|---|---|
| Scenarios | c | d |
| Sc. E1 | 0.60 | 0.40 |
| Sc. E2 | 0.65 | 0.35 |
| Sc. E3 | 0.70 | 0.30 |
| Sc. E4 | 0.75 | 0.25 |
| Sc. E5 | 0.80 | 0.20 |
| PROMETHEE | ||
| Scenarios | q | p |
| Sc. P1 | 0.1 | 1.0 |
| Sc. P2 | 0.2 | 1.1 |
| Sc. P3 | 0.3 | 1.2 |
| Sc. P4 | 0.4 | 1.3 |
| Sc. P5 | 0.5 | 1.4 |
| Sc. P6 | 0.6 | 1.5 |
| Sc. P7 | 0.7 | 1.6 |
| Sc. P8 | 0.8 | 1.7 |
| Sc. P9 | 0.9 | 1.8 |
| Sc. P10 | 1.0 | 1.9 |
| Sc. P11 | 1.0 | 2.0 |
| Friedman ANOVA with Tukey’s test for nonadditivity | |||||
|---|---|---|---|---|---|
| Sum Sq. | df | Friedman’s | Sig. | ||
| Betw. subj. | 166.994 | 21 | |||
| Intra pop. | Betw. items | 525.801 | 23 | 13.493 | 0.000 |
| Nonadd. | 19.541 | 1 | 11.792 | 0.001 | |
| Intraclass Correlation Coefficient (ICC) | |||||
| Intraclass Correlation | Sig. | ||||
| Single measures | 0.089 | 0.000 | |||
| Average measures | 0.702 | 0.000 | |||
| Cronbach’s | Cronbach’s on stand. items | ||||
| 0.785 | 0.793 | ||||
| VLs | Curr. compl. | Know. build. | Misc. corr. | Usability |
|---|---|---|---|---|
| Algodoo | 5.2727 | 7.3636 | 4.8182 | 6.6818 |
| BRVL | 7.5909 | 7.2727 | 7.7273 | 6.7727 |
| LVP | 5.8636 | 7.0909 | 5.4545 | 7.2273 |
| Physic Virtual lab | 6.0909 | 7.7727 | 5.5909 | 7.3182 |
| Physion | 4.7273 | 7.4091 | 4.6818 | 6.8636 |
| Virtual Lab | 5.5455 | 6.7727 | 5.3636 | 6.9545 |
| Weight | ||||||
|---|---|---|---|---|---|---|
| Criteria | (importance) | Modalities | Utilities | Std. Error | B coeff. | Inversions |
| in % | ||||||
| Curr. Compl. | 26.080 | Compliant | -1.917 | 0.211 | -1.917 | 0 |
| Non-compliant | -3.833 | 0.422 | ||||
| Know. Build. | 24.428 | Effectively | -0.955 | 0.122 | -0.955 | 2 |
| Partially | -1.909 | 0.243 | ||||
| Not at all | -2.864 | 0.365 | ||||
| Misc. corr. | 28.795 | Effectively | -0.833 | 0.122 | -0.833 | 1 |
| Partially | -1.667 | 0.243 | ||||
| Not at all | -2.500 | 0.365 | ||||
| Usability | 20.696 | Very easy | -0.758 | 0.122 | -0.758 | 0 |
| Easy | -1.515 | 0.243 | ||||
| Difficult | -2.273 | 0.365 | ||||
| Constant | 4.883 | 0.586 | ||||
| Value | Sign. | |||||
| Pearson’s coefficient r | 0.991 | 0.000 | ||||
| Kendall’s tau () | 0.889 | 0.000 | ||||
| Criteria | Curr. compl. | Know. build. | Misc. corr. | Usability |
|---|---|---|---|---|
| Weights | 0.26080 | 0.24428 | 0.28795 | 0.20696 |
| Algodoo | 5.2727 | 7.3636 | 4.8182 | 6.6818 |
| BRVL | 7.5909 | 7.2727 | 7.7273 | 6.7727 |
| LVP | 5.8636 | 7.0909 | 5.4545 | 7.2273 |
| Physic Virtual lab | 6.0909 | 7.7727 | 5.5909 | 7.3182 |
| Physion | 4.7273 | 7.4091 | 4.6818 | 6.8636 |
| Virtual Lab | 5.5455 | 6.7727 | 5.3636 | 6.9545 |
| Physics VLs | AHP | TOPSIS | ELECTRE I | ELECTRE II | ELECTRE TRI | PROME-THEE | PROME-THEE | PROME-THEE |
|---|---|---|---|---|---|---|---|---|
| (rank) | (rank) | (core) | (rank) | (category) | I* (core) | I** (core) | II*** (rank) | |
| Algodoo | 5 | 5 | No | 5 | Low | No | No | 5 |
| BRVL | 1 | 1 | Yes | 1 | High | Yes | Yes | 1 |
| LVP | 3 | 3 | No | 3 | Medium | No | No | 3 |
| Physic Virtual lab | 2 | 2 | Yes | 2 | Medium | Yes | No | 2 |
| Physion | 6 | 6 | No | 6 | Low | No | No | 6 |
| Virtual Lab | 4 | 4 | No | 4 | Low | No | No | 4 |
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