会议专题

Application of HHT in SRM Fault Feature Extraction

  Switched Reluctance Machine(SRM)has magnetic field with strong saturation nonlinearity features,complex mathematical models and its fault output is mainly unsteady signals of strong coupling multi-physical field,which easily floods effective fault characteristics and make it difficult to extract.In this paper,Hilbert-Huang transform(HHT)is introduced to SRM fault feature extraction method to solve the problems aforesaid.Firstly,Empirical Mode Decomposition(EMD)is utilized to decompose the bus current of the faulted motor into several simple Intrinsic Mode Function(IMF)to resolve the problem of unsteady characteristics of complex fault signals.Secondly,primary IMF components are selected to form the matrix of initial parameters to calculate both the energy of singular values and the parameters of energy entropy of the matrix,which is used as a feature vector.Finally,multi-classifier based on support vector machine(SVM)are used to identify the extracted small-sample fault feature vector for classification.After verification by simulation,this method can effectively reduce the complexity of the fault signals,redundant data of faults and increase the accuracy rate of fault identification.Its application in SRM fault diagnosis has theoretical and practical value.

Switched Reluctance Motor fault feature extraction failure mode analysis Empirical Mode Decomposition

Yang Ruikun Ma Ruiqing Bai Peng

School of Automation Northwestern Polytechnical University Xian 710072 China;School of Science Air School of Automation Northwestern Polytechnical University Xian 710072 China School of Science Air Force Engineering University Xian 710051 China

国际会议

2017 IEEE 2nd Advanced Information Technology,Electronic and Automation Control Conference(IAEAC 2017)(2017 IEEE 第2届先进信息技术、电子与自动化控制国际会议)

重庆

英文

57-63

2017-03-25(万方平台首次上网日期,不代表论文的发表时间)