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Fault diagnosis of rotating machinery based on the statistical parameters of wavelet packet paving and a generic support vector regressive classifier

机译:基于小波包包统计参数和通用支持向量回归分类器的旋转机械故障诊断

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The fault diagnosis of rotating machinery has attracted considerable research attention in recent years because such components as bearings and gears frequently suffer failure, resulting in unexpected machine breakdowns. Signal processing-based condition monitoring and fault diagnosis methods have proved effective in fault identification, but the revelation of faults from the resulting signals requires a high degree of expertise. In addition, it is difficult to extract the fault-induced signatures in complex machinery via signal processing-based methods. In this paper, a new intelligent fault diagnosis scheme based on the extraction of statistical parameters from the paving of a wavelet packet transform (WPT), a distance evaluation technique (DET) and a support vector regression (SVR)-based generic multi-class solver is proposed. The collected signals are first pre-processed by the WPT at different decomposition depths. In this paper, the wavelet packet coefficients at different decomposition depths are referred to as WPT paving. Statistical parameters are then extracted from the signals obtained via the WPT at different decomposition depths. In selecting the sensitive fault features for fault pattern expression, a DET is employed to reduce the dimensionality of the feature space. Finally, a SVR-based generic multi-class solver is proposed to identify the different fault patterns of rotating machinery. The effectiveness of the proposed intelligent fault diagnosis scheme is validated separately using datasets from bearing and gearbox test rigs. In addition, the effects of different wavelet basis functions on the performance of the proposed scheme are investigated experimentally. The results demonstrate that the proposed intelligent fault diagnosis scheme is highly accurate in differentiating the fault patterns of both bearings and gears.
机译:旋转机械的故障诊断近年来引起了相当大的研究关注,因为诸如轴承和齿轮之类的部件经常遭受故障,从而导致意外的机械故障。实践证明,基于信号处理的状态监视和故障诊断方法可以有效地进行故障识别,但是从结果信号中揭示故障需要高度的专业知识。此外,很难通过基于信号处理的方法来提取复杂机器中的故障引起的特征。本文基于小波包变换(WPT)铺装中统计参数的提取,距离评估技术(DET)和基于支持向量回归(SVR)的通用多类,提出了一种新的智能故障诊断方案提出了求解器。收集的信号首先由WPT在不同的分解深度进行预处理。在本文中,将不同分解深度的小波包系数称为WPT铺装。然后从不同分解深度下通过WPT获得的信号中提取统计参数。在选择敏感的故障特征以进行故障模式表达时,采用DET来减小特征空间的维数。最后,提出了一种基于SVR的通用多类求解器,以识别旋转机械的不同故障模式。所提出的智能故障诊断方案的有效性通过使用轴承和齿轮箱测试台的数据集分别进行了验证。此外,实验研究了不同小波基函数对所提方案性能的影响。结果表明,所提出的智能故障诊断方案在区分轴承和齿轮的故障模式方面是高度准确的。

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