
Evolutionary monte carlo for feature selection in machine fault diagnosis
LIU Xiao-ping;ZHENG Hai-qi;ZHU Tian-yu
Journal of Vibration and Shock ›› 2011, Vol. 30 ›› Issue (10) : 98-101.
Evolutionary monte carlo for feature selection in machine fault diagnosis
Feature selection can eliminate the redundant features in the original features set, find an optimal subset of features and enhance the classification accuracy and efficiency in machine fault diagnosis. A feature selection method based on evolutionary Monte Carlo is proposed. Support vector machine (SVM) is applied as the fault classifier, the evaluation criterion is the Wrapper model, and the evolutionary Monte Carlo is implemented for optimal feature subset selection. This method is applied on the feature selection of the rolling bearing fault diagnosis based on vibration signal. Experimental results indicate the proposed method is effective for feature selection in fault diagnosis.
特征选择 / 进化蒙特卡洛 / 支持向量机 / 故障诊断 {{custom_keyword}} /
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