Fault Classification of Rolling Element Bearing in Machine Learning Domain

Author:

Jamil Mohd Atif,Khanam Sidra

Abstract

Rolling element bearings are crucial components of rotating machinery used in various industries, including aerospace, navigation, machine tools, etc. Therefore, it is essential to establish suitable techniques for condition monitoring and fault diagnosis of bearings to avoid breakdowns and damages during operation for overall industrial sustainability. Vibration-based condition monitoring has been the most employed technique in this perspective. Many researchers have investigated the vibration response of rolling element bearings having inner race defects, outer race defects, or rolling element defects using conventional techniques in past decades. However, Machine Learning (ML) has emerged as another way of bearing fault diagnosis. In this work, fault signatures of ball bearings are classified using a total of 6 (with 24 subcategories) ML models, and a comparative performance of these models is presented. The ML classifiers are trained with extracted time-domain and frequency-domain features using open-source Case Western Reserve University (CWRU) bearing data. Two datasets of different sample size and number of samples of vibration data corresponding to a healthy ball bearing, a defective bearing with inner race defect, a ball defect, and an outer race defect, running at a particular set of working conditions, are considered. The accuracy of ML models is compared to identify the best model for classifying the faults under consideration.

Publisher

International Institute of Acoustics and Vibration (IIAV)

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Influence of One-Way ANOVA and Kruskal–Wallis Based Feature Ranking on the Performance of ML Classifiers for Bearing Fault Diagnosis;Journal of Vibration Engineering & Technologies;2023-06-12

2. Identifying Condition Indicators for Artificially Intelligent Fault Classification in Rolling Element Bearings;Mechanisms and Machine Science;2023

3. Intelligent Prediction of Multiple Defects in Rolling Element Bearing using ANN Algorithm;2022 5th International Conference on Multimedia, Signal Processing and Communication Technologies (IMPACT);2022-11-26

4. Investigation into Bearing Fault Classification using Various Feature Set Combinations in KNN;2022 5th International Conference on Multimedia, Signal Processing and Communication Technologies (IMPACT);2022-11-26

5. Classification of Bearing Faults using Discrete Wavelet Packet Analysis and Support Vector Machine;2022 5th International Conference on Multimedia, Signal Processing and Communication Technologies (IMPACT);2022-11-26

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