A study on correlation of subjects on electrical engineering course using Artificial Neural Network (ANN) / Fathiah Zakaria … [et al.]

Zakaria, Fathiah and Che Kar, Siti Aishah and Abdullah, Rina and Ismail, Syila Izawana and Md Enzai, Nur Idawati (2021) A study on correlation of subjects on electrical engineering course using Artificial Neural Network (ANN) / Fathiah Zakaria … [et al.]. Asian Journal of University Education (AJUE), 17 (2): 12. pp. 144-155. ISSN 2600-9749

Abstract

This paper presents a study of correlation between subjects of Diploma in Electrical Engineering (Electronics/Power) at Universiti Teknologi MARA(UiTM) Cawangan Terengganu using Artificial Neural Network (ANN). The analysis was done to see the effect of mathematical subjects (Pre-calculus and Calculus 1) and core subject (Electric Circuit 1) on Electronics 1. Electronics 1 is found to be a core subject with the history of high failure rate percentage (more than 25%) in previous semesters. This research has been conducted on current final semester students (Semester 5). Seven (7) models of ANN are developed to observe the correlation between the subjects. In order to develop an ANN model, ANN design and parameters need to be chosen to find the best model. In this study, historical data from students’ database were used for training and testing purpose. Total number of datasets used are 58 sets. 70% of the datasets are used for training process and 30% of the datasets are used for testing process. The Regression Coefficient, (R) values from the developed models was observed and analyzed to see the effect of the subject on the performance of students. It can be proven that Electric Circuit 1 has significant correlation with the Electronics 1 subject respected to the highest R value obtained (0.8100). The result obtained proves that student’s understanding on Electric Circuit 1 subject (taken during semester 2) has direct impact on the performance of students on Electronics 1 subject (taken during semester 3). Hence, early preventive measures could be taken by the respective parties.

Metadata

Item Type: Article
Creators:
Creators
Email / ID Num.
Zakaria, Fathiah
fathiahz@uitm.edu.my
Che Kar, Siti Aishah
sitia2500@ uitm.edu.my
Abdullah, Rina
rinaa5158@ uitm.edu.my
Ismail, Syila Izawana
syila5416@ uitm.edu.my
Md Enzai, Nur Idawati
nurid333@uitm.edu.my
Subjects: L Education > LB Theory and practice of education > Computers in education. Information technology
L Education > LB Theory and practice of education > Higher Education
Divisions: Universiti Teknologi MARA, Shah Alam > Faculty of Education
Journal or Publication Title: Asian Journal of University Education (AJUE)
UiTM Journal Collections: UiTM Journal > Asian Journal of University Education (AJUE)
ISSN: 2600-9749
Volume: 17
Number: 2
Page Range: pp. 144-155
Keywords: Artificial neural network, Diploma in Electrical Engineering, Graduate on time
Date: April 2021
URI: https://ir.uitm.edu.my/id/eprint/53725
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