Fault diagnosis of deep groove ball bearing through discrete wavelet features using support vector machine
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Date
2014
Authors
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Journal ISSN
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Publisher
COMADEM International rajbknrao@btinternet.com
Abstract
Bearings are the most important and frequently used machine components in most of the rotating machinery. In industry, breakdown of such crucial components causes heavy losses. So prevention of failure of such components is very essential. This paper presents an online fault detection of a bearing used in an internal combustion engine through machine learning approach using vibration signals of bearing in healthy and simulated faulty conditions. Vibration signals are acquired from bearing in healthy as well as different simulated fault conditions of bearing. The Discrete Wavelet Transform (DWT) features were extracted from vibration signals using MATLAB program. Decision tree technique (J48 algorithm) has been used for important feature selection out of extracted DWT features. Support vector machine is being used as a classifier and obtained results found with classification accuracy of 98.67%.The advantage of machine learning technique for fault diagnosis over conventional vibration analysis approach has demonstrated in this paper.
Description
Keywords
Artificial intelligence, Data mining, Decision trees, Discrete wavelet transforms, Fault detection, Internal combustion engines, MATLAB, Shafts (machine components), Support vector machines, Vibration analysis, Ball bearings, Bearings (machine parts), Deep groove ball bearings, Failure analysis, Learning systems, Machine components, Machinery, Trees (mathematics), Wavelet transforms, Bearing fault diagnosis, Classification accuracy, Decision tree techniques, Discrete wavelets, Important features, Machine learning approaches, Machine learning techniques, On-line fault detection
Citation
International Journal of COMADEM, 2014, 17, 3, pp. 31-37
