Machine failure prediction using joint reserve intelligence with feature selection technique

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Title of Periodical
International Journal of Computers and Applications
Issue published
Volume 45, 2023 - Issue 10
Publisher
Taylor & Francis Group
Date Issued
2023
Language
English
English Abstract
Abstract: A model with high accuracy of machine failure prediction is important for any machine life cycle. In this paper, a prediction model based on machine learning methods is proposed. The used method is a combination of machine learning algorithms and techniques. The machine learning algorithm is a data mining technique that has been widely used as a prediction model for classifying problems. Five algorithms have been tested including JRIP, logistic, KStar, Bayes network and decision table machine learning. The evaluation process is done by applying the algorithms on a predictive dataset using different performance measures. In the proposed model, the feature selection and voting techniques are used and applied in the classification process for each classifier. From the comparison of the result, the feature selection shows the best performance result. Paired ttest evaluation measures were considered to confirm our conclusion. The best accuracy result among the five classifiers shows that joint reserve intelligence classifier can be used to predict the failure with an accuracy high as 0.983. Applying classifier subset evaluation using the JRIP classifier can enhance the accuracy result to be 0.985. The finding shows that the proposed model improves the results of the classifiers.
Member of
Identifier
https://digitalrepository.uob.edu.bh/id/04913c0d-b05d-417b-b1b7-959c9ddc0290