Functional Analysis Diagrams in Science and Technology Education
Abstract
:1. Introduction
1.1. Scope
1.2. Concept Maps, Functional Models and Their Role in Technical Education
1.3. The Functional Analysis Diagram (FAD)
1.4. Research Objectives
- No known relevant background
- Varied levels of competence in the teaching language (English)
- Varied levels of competence in science subjects
2. Method
2.1. Proposed Intervention
2.2. Methodological Considerations
2.3. Study Background
- Evaluate, develop, and improve the methodology;
- Provide an estimate for the effect size, so that prior sample size calculations can be carried out;
- Assess the feasibility of a formal, full-scale experimental study.
2.4. Study Participants
- Identify any benefits or limitations of the proposed teaching approach which might not have been picked up directly by the assessment;
- Identify any issues with and opportunities to improve the procedure and method;
- Gain additional insights into students’ attitudes towards current established methods of instruction and novel, diagrammatic instruction methods.
2.5. Teaching Material
2.6. Group Allocation
2.7. Intervention Design
- •
- Definition and historical progress of annual CO2 emissions by world regions;
- •
- South Korea’s primary energy status;
- •
- Renewable energy and energy storage solutions;
- •
- Hydrogen as a renewable fuel.
- •
- The internal combustion engine and the environment;
- •
- Operation and emissions of a compression ignition engine;
- •
- Compression ignition engine emissions and emissions controlling techniques;
- •
- Hydrogen as an alternative fuel for compression ignition engines.
- A.
- Reduces CO2 content
- B.
- Increases combustion efficiency and increases the combustion temperature
- C.
- Reduces O2 (oxygen) content and the combustion temperature
- D.
- Reduces O2 (oxygen) content and increases the combustion temperature
2.8. Research Quality
3. Procedure
3.1. Presentation
3.2. Assessment
3.3. Interviews
4. Results and Discussion
4.1. Effect Size and Impact on Future Studies
4.2. Additional Analysis
4.2.1. Effects on Students with No Relevant Background
4.2.2. Effects on Students with Various Levels in the Taught (English) Language
4.2.3. Effects on Students with Different Levels of Science Subjects
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Overall Score | Score 1 | Score 2 | |
---|---|---|---|
Total Average (%) | 54.53 | 78.46 | 42.56 |
Group A average (%) | 52.33 | 79.00 | 39.00 |
Group B average (%) | 56.84 | 77.89 | 46.32 |
Performance difference of Group B against Group A (%) | 8.62 | −1.40 | 18.76 |
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Michalakoudis, I.; Dimitriou, P.; Koutlidis, A.; Childs, P. Functional Analysis Diagrams in Science and Technology Education. Educ. Sci. 2023, 13, 289. https://doi.org/10.3390/educsci13030289
Michalakoudis I, Dimitriou P, Koutlidis A, Childs P. Functional Analysis Diagrams in Science and Technology Education. Education Sciences. 2023; 13(3):289. https://doi.org/10.3390/educsci13030289
Chicago/Turabian StyleMichalakoudis, Ioannis, Pavlos Dimitriou, Apollon Koutlidis, and Peter Childs. 2023. "Functional Analysis Diagrams in Science and Technology Education" Education Sciences 13, no. 3: 289. https://doi.org/10.3390/educsci13030289
APA StyleMichalakoudis, I., Dimitriou, P., Koutlidis, A., & Childs, P. (2023). Functional Analysis Diagrams in Science and Technology Education. Education Sciences, 13(3), 289. https://doi.org/10.3390/educsci13030289