Bearing Defect Classification Based on Individual Wavelet Local Fisher Discriminant Analysis with Particle Swarm Optimization.

IEEE Transactions on Industrial Informatics(2016)

引用 124|浏览50
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摘要
In order to enhance the performance of bearing defect classification, feature extraction and dimensionality reduction have become important. In order to extract the effective features, wavelet kernel local fisher discriminant analysis (WKLFDA) is first proposed; herein, a new wavelet kernel function is proposed to construct the kernel function of LFDA. In order to automatically select the paramete...
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关键词
Kernel,Feature extraction,Support vector machines,Training,Accuracy,Wavelet analysis,Fault diagnosis
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