Developing and delivering a remote experiment based on the experiential
learning framework during COVID-19 pandemic
- URL: http://arxiv.org/abs/2107.02777v1
- Date: Tue, 6 Jul 2021 17:39:48 GMT
- Title: Developing and delivering a remote experiment based on the experiential
learning framework during COVID-19 pandemic
- Authors: W. D. Kularatne, Lasanthika H. Dissawa, T.M.S.S.K. Ekanayake, Janaka
B. Ekanayake
- Abstract summary: This paper introduces a theoretical framework based on experiential learning to plan and deliver processes through an online environment.
A case study based on the power factor correction experiment was presented.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The students following Engineering disciplines should not only acquire the
conceptual understanding of the concepts but also the processors and attitudes.
There are two recognizable learning environments for students, namely,
classroom environment and laboratory environment. With the COVID-19 pandemic,
both environments merged to online environments, impacting students'
development of processes and characteristic attitudes. This paper introduces a
theoretical framework based on experiential learning to plan and deliver
processes through an online environment. A case study based on the power factor
correction experiment was presented. The traditional experiment that runs for 3
hours was broken into smaller tasks such as a pre-lab activity, a simulation
exercise, a PowerPoint presentation, a remote laboratory activity, and a final
report based on the experiential learning approach. A questionnaire that
carries close and open-ended questions were administered to obtain students'
reflections about developing the processes through an online-friendly
experiential learning approach. The majority of the students like the approach
followed and praise for providing them with an opportunity to perform the
experiment in a novel way during the COVID-19 situation.
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