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Research on Fault Diagnosis Method of Rolling Bearing Based on Resonance Sparse Decomposition

机译:基于共振稀疏分解的滚动轴承故障诊断方法研究

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Based on the fault characteristics and vibration characteristics of bearings, a resonance sparse decomposition method is proposed. To overcome the difficulty of parameter selection in traditional resonance sparse decomposition method, the PSO algorithm is used to improve it. At the same time, the simulated annealing algorithm is used to improve the PSO algorithm, and the improved PSO optimization resonance sparse decomposition method is obtained. The fault signal is decomposed into a high resonance component and low resonance component, and then the low resonance component is transformed by the Hilbert transform. Compared with the resonance sparse decomposition method optimized by a genetic algorithm (GA), the fault feature frequency can be extracted more effectively, and the fault can be classified accurately.
机译:根据轴承的故障特性和振动特性,提出了一种共振稀疏分解方法。为了克服传统共振稀疏分解方法中参数选择的困难,采用PSO算法对其进行了改进。同时,采用模拟退火算法对PSO算法进行了改进,得到了改进的PSO优化谐振稀疏分解方法。将故障信号分解为高谐振分量和低谐振分量,然后通过希尔伯特变换对低谐振分量进行变换。与通过遗传算法优化的共振稀疏分解方法相比,可以更有效地提取故障特征频率,并且可以对故障进行准确分类。

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