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Hybrid Support Vector Machines-Based Multi-fault Classification 被引量:11

Hybrid Support Vector Machines-Based Multi-fault Classification
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摘要 Support Vector Machines (SVM) is a new general machine-learning tool based on structural risk minimization principle. This characteristic is very signific ant for the fault diagnostics when the number of fault samples is limited. Considering that SVM theory is originally designed for a two-class classification,a hybrid SVM scheme is proposed for multi-fault classification of rotating machinery in our paper. Two SVM strategies,1-v-1 (one versus one) and 1-v-r (one versus rest),are respectively adopted at different classifica-tion levels. At the parallel classification level,using 1-v-1 strategy,the fault features extracted by various signal analysis methods are transferred into the multiple parallel SVM and the local classification results are obtained. At the serial classification level,these local results values are fused by one serial SVM based on 1-v-r strategy. The hybrid SVM scheme introduced in our paper not only generalizes the performance of signal binary SVMs but improves the precision and reliability of the fault classification results. The actually testing results show the availability suitability of this new method. Support Vector Machines (SVM) is a new general machine-learning tool based on structural risk minimization principle. This characteristic is very signific ant for the fault diagnostics when the number of fault samples is limited. Considering that SVM theory is originally designed for a two-class classification, a hybrid SVM scheme is proposed for multi-fault classification of rotating machinery in our paper. Two SVM strategies, 1-v-1 (one versus one) and 1-v-r (one versus rest), are respectively adopted at different classification levels. At the parallel classification level, using l-v-1 strategy, the fault features extracted by various signal analysis methods are transferred into the multiple parallel SVM and the local classification results are obtained. At the serial classification level, these local results values are fused by one serial SVM based on 1-v-r strategy. The hybrid SVM scheme introduced in our paper not only generalizes the performance of signal binary SVMs but improves the precision and reliability of the fault classification results. The actually testing results show the availability suitability of this new method.
出处 《Journal of China University of Mining and Technology》 EI 2007年第2期246-250,共5页 中国矿业大学学报(英文版)
关键词 多故障分类 小波分析 支持向量机 混合系统 Suooort Vector Machines multi-fault classification hybrid strategy wavelet analysis
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参考文献2

  • 1Yan W W,Shao H H,Wang X F.Parallel decision models based on support vector machines and their application to distrib- uted fault diagnosis[].Proceedings of the American Control Conference.2003
  • 2Yuan S F,Chu F L.Support vector machines-based fault diagnosis for turbo-pump rotor[].Journal of Mechanical Systems.2006

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