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Improved Ensemble Superwavelet Transform for Vibration-Based Machinery Fault Diagnosis

机译:改进的集成超小波变换在基于振动的机械故障诊断中的应用

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摘要

In the previous work of authors, the authors have presented an automatic fault feature extraction method, called ensemble superwavelet transform (ESW), based on the combination of tunable Q-factor wavelet transform (TQWT) and Hilbert transform. However, the nonstationary fault feature ratio which defined to guide the optimal wavelet basis selection does not take the interferences of high-frequency components into consideration. In addition, the original ESW utilizes one optimal subband to reconstruct the signal, which may result in the leakage of useful fault features. The present paper improves the ESW to address these problems. Specifically, the authors modify the definition of fault feature ratio by eliminating the high-frequency components when calculating total amplitudes of Hilbert envelope spectrum. Moreover, for the purpose of preserving more useful fault features and recovering the signal more accurately, a novel approach to reconstruct the processed result by incorporating two optimal subbands is proposed in this paper. The comprehensive comparisons by processing two simulation signals are provided to verify the effectiveness and utility of the improved ESW. Moreover, the improved ESW is applied to a range of engineering applications, and the obtained results demonstrate that the improved ESW can act as an effective technique in extracting weak fault features.
机译:在作者的先前工作中,作者提出了一种基于可调谐Q因子小波变换(TQWT)和希尔伯特变换的自动故障特征提取方法,称为集成超小波变换(ESW)。但是,定义为指导最优小波基选择的非平稳故障特征比率并没有考虑到高频分量的干扰。另外,原始的ESW利用一个最佳子带来重建信号,这可能导致有用故障特征的泄漏。本文改进了ESW以解决这些问题。具体来说,作者在计算希尔伯特包络谱的总振幅时通过消除高频分量来修改故障特征比率的定义。此外,为了保留更多有用的故障特征并更准确地恢复信号,本文提出了一种通过合并两个最优子带来重构处理结果的新方法。通过处理两个模拟信号进行全面比较,以验证改进的ESW的有效性和实用性。此外,改进的ESW被应用于一系列工程应用中,并且获得的结果表明,改进的ESW可以作为提取弱断层特征的有效技术。

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