叶小芬, 王起梁, 祝敏, 张浩瀚. 基于小波包能量和层次熵的D-S证据理论的轴承故障诊断技术[J]. 失效分析与预防, 2021, 16(3): 209-214, 220. DOI: 10.3969/j.issn.1673-6214.2021.03.010
    引用本文: 叶小芬, 王起梁, 祝敏, 张浩瀚. 基于小波包能量和层次熵的D-S证据理论的轴承故障诊断技术[J]. 失效分析与预防, 2021, 16(3): 209-214, 220. DOI: 10.3969/j.issn.1673-6214.2021.03.010
    YE Xiao-fen, WANG Qi-liang, ZHU Min, ZHANG Hao-han. Fault Diagnosis Method for Bearings Based on D-S Evidence Theory of Wavelet Packet Energy and Hierarchical Entropy[J]. Failure Analysis and Prevention, 2021, 16(3): 209-214, 220. DOI: 10.3969/j.issn.1673-6214.2021.03.010
    Citation: YE Xiao-fen, WANG Qi-liang, ZHU Min, ZHANG Hao-han. Fault Diagnosis Method for Bearings Based on D-S Evidence Theory of Wavelet Packet Energy and Hierarchical Entropy[J]. Failure Analysis and Prevention, 2021, 16(3): 209-214, 220. DOI: 10.3969/j.issn.1673-6214.2021.03.010

    基于小波包能量和层次熵的D-S证据理论的轴承故障诊断技术

    Fault Diagnosis Method for Bearings Based on D-S Evidence Theory of Wavelet Packet Energy and Hierarchical Entropy

    • 摘要: 针对齿轮箱轴承故障识别率低、故障信号不平稳的问题,提出层次熵与小波包能量多源数据融合轴承故障诊断方法。采用小波包对轴承正常、内圈、外圈、滚动体故障等4种振动信号进行三层小波包分解并重构,计算各频段样本熵(即层次熵)和小波包能量作为故障特征向量集;应用归一化方法对2种特征向量处理后分别建立BP神经网络模型实现轴承不同故障模式的诊断;最后应用D-S证据理论,通过小波包能量和层次熵以及两者融合信息的故障诊断结果比较,表明基于神经网络和D-S证据理论相结合方法用于复杂机械的故障诊断是可行和有效的。

       

      Abstract: Aiming at the problems of low recognition rate and unstable fault signal of gearbox bearings, a bearing fault diagnosis method based on multisource data fusion of wavelet packet energy and hierarchical entropy was proposed. Firstly, the wavelet packet was used to decompose and reconstruct the vibration signals of bearing under normal condition, inner ring fault, outer ring fault and rolling element fault, and the wavelet packet energy and hierarchical entropy (sample entropy) of each frequency band were obtained as the fault eigenvector sets respectively. After the two kinds of eigenvectors were processed by the normalization method, BP neural network models were established respectively to realize the diagnosis of different fault modes of bearings. Finally, the D-S evidence theory was used to realize the information fusion of the two diagnostic results based on wavelet packet energy and hierarchical entropy. Through comparing the diagnostic results by wavelet packet energy, hierarchical entropy and information fusion, it is shown that the method based on the combination of neural network and D-S evidence theory is feasible and effective for the fault diagnosis of complex machinery.

       

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