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Fault diagnosis of ball bearings using machine learning methods

Ball bearings faults are one of the main causes of breakdown of rotating machines. Thus, detection and diagnosis of mechanical faults in ball bearings is very crucial for the reliable operation. This study is focused on fault diagnosis of ball bearings using artificial neural network (ANN) and suppo...

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Published in:Expert systems with applications 2011-03, Vol.38 (3), p.1876-1886
Main Authors: Kankar, P.K., Sharma, Satish C., Harsha, S.P.
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Language:English
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description Ball bearings faults are one of the main causes of breakdown of rotating machines. Thus, detection and diagnosis of mechanical faults in ball bearings is very crucial for the reliable operation. This study is focused on fault diagnosis of ball bearings using artificial neural network (ANN) and support vector machine (SVM). A test rig of high speed rotor supported on rolling bearings is used. The vibration response are obtained and analyzed for the various defects of ball bearings. The specific defects are considered as crack in outer race, inner race with rough surface and corrosion pitting in balls. Statistical methods are used to extract features and to reduce the dimensionality of original vibration features. A comparative experimental study of the effectiveness of ANN and SVM is carried out. The results show that the machine learning algorithms mentioned above can be used for automated diagnosis of bearing faults. It is also observed that the severe (chaotic) vibrations occur under bearings with rough inner race surface and ball with corrosion pitting.
doi_str_mv 10.1016/j.eswa.2010.07.119
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subjects Artificial neural network
Ball bearings
Fault diagnosis
Faults
Learning theory
Neural networks
Pitting (corrosion)
Race
Support vector machine
Support vector machines
Vibration
title Fault diagnosis of ball bearings using machine learning methods
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