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Research on the Sparse Representation for Gearbox Compound Fault Features Using Wavelet Bases

机译:基于小波基的齿轮箱复合故障特征的稀疏表示研究

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The research on gearbox fault diagnosis has been gaining increasing attention in recent years, especially on single fault diagnosis. In engineering practices, there is always more than one fault in the gearbox, which is demonstrated as compound fault. Hence, it is equally important for gearbox compound fault diagnosis. Both bearing and gear faults in the gearbox tend to result in different kinds of transient impulse responses in the captured signal and thus it is necessary to propose a potential approach for compound fault diagnosis. Sparse representation is one of the effective methods for feature extraction from strong background noise. Therefore, sparse representation under wavelet bases for compound fault features extraction is developed in this paper. With the proposed method, the different transient features of both bearing and gear can be separated and extracted. Both the simulated study and the practical application in the gearbox with compound fault verify the effectiveness of the proposed method.
机译:近年来,变速箱故障诊断的研究越来越受到重视,特别是在单一故障诊断方面。在工程实践中,变速箱中总是存在多个故障,这被证明是复合故障。因此,对于变速箱复合故障诊断同样重要。齿轮箱中的轴承和齿轮故障都倾向于在捕获的信号中导致不同类型的瞬态脉冲响应,因此有必要提出一种潜在的复合故障诊断方法。稀疏表示是从强背景噪声中提取特征的有效方法之一。因此,本文提出了一种基于小波基稀疏表示的复合故障特征提取方法。利用所提出的方法,可以分离并提取轴承和齿轮的不同瞬态特征。仿真研究和复合故障变速箱的实际应用都证明了该方法的有效性。

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