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基于EMD和样本熵的滚动轴承故障SVM识别
引用本文:来凌红,吴虎胜,吕建新,刘凤,朱玉荣. 基于EMD和样本熵的滚动轴承故障SVM识别[J]. 煤矿机械, 2011, 32(1): 249-252
作者姓名:来凌红  吴虎胜  吕建新  刘凤  朱玉荣
作者单位:1. 武警工程学院,西安,710086
2. 国防科技大学,长沙,450000
摘    要:针对滚动轴承振动信号的非平稳特性和在现实条件下难以获取大量故障样本的实际情况,提出一种经验模态分解、非线性动力学方法—样本熵和支持向量机相结合的故障诊断方法。运用经验模态分解方法对其去噪信号进行分析,利用互相关系数准则对固有模式分量进行筛选,再计算所选分量的样本熵以组成故障特征向量,并将其作为支持向量机的输入以识别滚动轴承的状态。利用实际滚动轴承试验数据的诊断与对比试验验证了该方法的有效性和泛化能力。

关 键 词:滚动轴承  故障诊断  经验模式分解  样本熵  支持向量机

SVM Recognition Method Based on EMD and Sample Entropy in Rolling Bearing Fault Diagnosis
LAI Ling-hong,WU Hu-sheng,LV Jian-xin,LIU Feng,ZHU Yu-rong. SVM Recognition Method Based on EMD and Sample Entropy in Rolling Bearing Fault Diagnosis[J]. Coal Mine Machinery, 2011, 32(1): 249-252
Authors:LAI Ling-hong  WU Hu-sheng  LV Jian-xin  LIU Feng  ZHU Yu-rong
Affiliation:LAI Ling-hong1,WU Hu-sheng1,LV Jian-xin1,LIU Feng2,ZHU Yu-rong1(1.Engineering College of CAPF,Xi'an 710086,China,2.National University of Defense Technology,Changsha 410000,China)
Abstract:According to the non-stationarity characteristics of the vibration signals from rolling bearing and the situation that it's hard to obtain enough fault samples,a comprehensive fault diagnosis method based on Empirical Mode Decomposition(EMD),sample entropy,a nonlinear dynamic method,and Support Vector Machine(SVM) was proposed.Firstly,the denoised vibration signals were decomposed into a finite number of Intrinsic Mode Functions(IMF),then choosed some IMF components with the criteria of mutual correlation c...
Keywords:rolling bearing  fault diagnosis  empirical mode decomposition(EMD)  sample entropy  support vector machine(SVM)  
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