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http://dx.doi.org/10.5391/JKIIS.2008.18.5.718

A Wavelet-based Profile Classification using Support Vector Machine  

Kim, Seong-Jun (강릉대학교 산업시스템공학과)
Publication Information
Journal of the Korean Institute of Intelligent Systems / v.18, no.5, 2008 , pp. 718-723 More about this Journal
Abstract
Bearing is one of the important mechanical elements used in various industrial equipments. Most of failures occurred during the equipment operation result from bearing defects and breakages. Therefore, monitoring of bearings is essential in preventing equipment breakdowns and reducing unexpected loss. The purpose of this paper is to present an online monitoring method to predict bearing states using vibration signals. Bearing vibrations, which are collected as a form of profile signal, are first analyzed by a discrete wavelet transform. Next, some statistical features are obtained from the resultant wavelet coefficients. In order to select significant ones among them, analysis of variance (ANOVA) is employed in this paper. Statistical features screened in this way are used as input variables to support vector machine (SVM). An hierarchical SVM tree is proposed for dealing with multi-class problems. The result of numerical experiments shows that the proposed SVM tree has a competent performance for classifying bearing fault states.
Keywords
Wavelet; Profile Classification; Statistical Features; Support Vector Machine; Feature Selection;
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