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A method for the compound fault diagnosis of gearboxes based on morphological component analysis

机译:基于形态学成分分析的齿轮箱复合故障诊断方法

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摘要

An improved morphological component analysis (MCA) method is proposed for the compound fault diagnosis of gearboxes. When gear fault and bearing fault occur simultaneously, the compound fault signal of the gearbox contains meshing components (related to the gear fault) and periodic impulse components (related to the bearing fault). The corresponding fault characteristics can be separated by MCA according to the morphological differences of the components. In the proposed method, the optimal dictionary, which can represent the characteristics of bearing faults, is first selected based on the principle of minimum information entropy. Then, the compound fault signal is decomposed into the meshing component and the periodic impulse component using MCA. Finally, the separated components are subjected to the Hilbert envelope spectrum analysis. The faults of the gear and the bearing can be diagnosed according to the envelope spectra of the separated fault signal components. Simulation and experimental studies validate the effectiveness of the proposed method for the compound fault diagnosis of gearboxes. (C) 2016 Elsevier Ltd. All rights reserved.
机译:提出了一种改进的形态学分析方法,用于齿轮箱的复合故障诊断。当齿轮故障和轴承故障同时发生时,变速箱的复合故障信号包含啮合分量(与齿轮故障有关)和周期性脉冲分量(与轴承故障有关)。可以通过MCA根据组件的形态差异来分离相应的断层特征。在提出的方法中,首先基于最小信息熵的原理选择了可以代表轴承故障特征的最优字典。然后,使用MCA将复合故障信号分解为啮合分量和周期性脉冲分量。最后,对分离出的成分进行希尔伯特包络光谱分析。可以根据分离出的故障信号分量的包络频谱来诊断齿轮和轴承的故障。仿真和实验研究验证了该方法对齿轮箱复合故障诊断的有效性。 (C)2016 Elsevier Ltd.保留所有权利。

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