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基于主元分析与动态时间弯曲的故障诊断方法及应用研究
引用本文:邱立鹏,姚海妮,王珍,陈建国,杨铎. 基于主元分析与动态时间弯曲的故障诊断方法及应用研究[J]. 应用声学, 2016, 24(1): 19-19
作者姓名:邱立鹏  姚海妮  王珍  陈建国  杨铎
作者单位:大连大学机械学院,大连大学机械学院,大连大学机械学院,大连大学机械学院,大连大学机械学院
基金项目:国家自然科学基金(51405053) 辽宁省教育厅一般项目S(L2012446) ;国家自然科学基金项目(面上项目,重点项目,重大项目);国家教育部优秀青年教师基金
摘    要:轴承是工程实际中常用而又极易损坏的部件,特别是对其早期微弱响应的辨识,具有重要的社会价值和意义。为提高运转轴承的安全可靠性和可维护性,提出了基于主元分析与动态时间弯曲距离的故障诊断方法,它可以准确对早期微弱动态响应辨识、诊断。该方法首先将典型故障样本信号与待测信号小波去噪并EMD分解,并对若干固有模态分量主元分析求取主元,然后对主元分量进行分析,获得相关特征值组成特征向量,计算待测信号与已知故障样本信号特征向量的弯曲距离,弯曲距离越小表明两信号越相似,从而辨识故障。此外,还可将其应用于转子、碰磨、齿轮故障诊断中,工程应用实例表明该方法可以准确故障分类,高效故障诊断。

关 键 词:EMD  PCA  动态时间弯曲  故障诊断  相似性度量
收稿时间:2015-08-02
修稿时间:2015-08-26

Fault diagnosis method and applied research based on principal component analysis and dynamic time warping
QIU Li-peng,WANGZhen,CHENJian-guo and YANGDuo. Fault diagnosis method and applied research based on principal component analysis and dynamic time warping[J]. Applied Acoustics(China), 2016, 24(1): 19-19
Authors:QIU Li-peng  WANGZhen  CHENJian-guo  YANGDuo
Abstract:To improve the operation of the mechanical safety and reliability and maintainability, proposed Fault diagnosis method and applied research based on principal component analysis and dynamic time warping,It can accurately identify the dynamic response of the weak early and diagnosis.First fault samples and measured signal de-noising of wavelet and EMD decomposition, Several IMF components strike PCA ,And PCA component was analyzed to obtain the relevant eigenvectors composed by eigenvalues composition,Calculate the signal being measured and the known sample signal of fault feature vectors bending distance, the smaller the distance, the more similar bent two signals.Application examples of engineering show that the method can accurately classify faults, efficient troubleshooting.
Keywords:empirical mode decomposition(EMD)   Mutual Information  principal component analysis (PCA)   Dynamic Time Warping(DTW)   Fault diagnosis  similarity measure
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