Indonesian Journal of Electrical Engineering and Computer Science
Vol 20, No 1: October 2020

Towards IR4.0 implementation in e-manufacturing: artificial intelligence application in steel plate fault detection

Adeleke Abdullahi (Universiti Tun Hussein Onn Malaysia)
Noor Azah Samsudin (Universiti Tun Hussein Onn Malaysia)
Mohd Rasidi Ibrahim (Universiti Tun Hussein Onn Malaysia)
Muhammad Syariff Aripin (Universiti Tun Hussein Onn Malaysia)
Shamsul Kamal Ahmad Khalid (Universiti Tun Hussein Onn Malaysia)
Zulaiha Ali Othman (National University of Malaysia)



Article Info

Publish Date
01 Oct 2020

Abstract

Fault detection is the task of discovering patterns of a certain fault in industrial manufacturing. Early detection of fault is an essential task in industrial manufacturing. Traditionally, faults are detected by human experts. However, this method suffers from cost and time. In this era of Industrial revolution IR 4.0, machine learning (ML) methods and techniques are developed to solve fault detection problem. In this study, three standard ML models: LR, NB, and SVM are developed for the classification problem. The experimental dataset used in this study consists of steel plates faults. The dataset is retrieved from UCI machine learning repository. Three standard evaluation methods: accuracy, precision, and recall are validated on the classification models. Logistic regression (LR) model achieved the highest accuracy and precision scores of 94.5% and 0.756 respectively. In addition, the SVM model had the highest recall score of 0.317. The results showed the significant impact of AI/ML approach in steel plates fault diagnosis problem. 

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