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Fault Diagnosis of Rotating Machinery Base on Wavelet Packet Energy Moment and HMM

机译:基于小波包能量矩和HMM的旋转机械故障诊断。

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摘要

A feature extraction method is presented for the fault diagnosis of large rotating machinery to improve the performance of on-line monitoring. According to the characteristics of fault vibration signals, wavelet packet decomposition, a well-known tool to multi-scale analysis, is applied to extracting frequency band energy features; and Hidden Markova Model (HMM) is used to classify. The final feature array is composed of time-domain, amplitude-domain features and wavelet packet energy moment features which reflect the inherent energy distribution characteristics of different faults. The continuous density hidden Markov model (CDHMM) is adopted to recognize the state in on-line monitoring, and the diagnosis success rates are more than 91% to six typical faults on different rotation speeds. The experimental results show the fault diagnosis system is valid and robust, particularly the method of feature extraction.
机译:提出了一种用于大型旋转机械故障诊断的特征提取方法,以提高在线监测的性能。根据故障振动信号的特点,应用小波包分解技术进行多尺度分析,提取小波包分解特征。隐马尔可夫模型(HMM)用于分类。最终特征阵列由时域,幅值域特征和小波包能量矩特征组成,它们反映了不同故障的固有能量分布特征。采用连续密度隐马尔可夫模型(CDHMM)在线监测状态,对不同转速下的六个典型故障的诊断成功率均超过91%。实验结果表明,该故障诊断系统是有效且健壮的,尤其是特征提取方法。

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