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Signal complexity analysis for fault diagnosis of rolling element bearings based on matching pursuit

机译:基于匹配追踪的滚动轴承故障诊断信号复杂度分析

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摘要

Various techniques have been presented to detect rolling element bearing faults, however, it is still a huge challenge to accurately extract features under high noise level. In this paper, a new approach based on matching pursuit for analyzing the signals of rolling element bearings is proposed. Different from most of the matching pursuit related works focusing on the time-frequency plane, complexity spectrum and complexity spectrum entropy are proposed in this research to accurately extract the fault feature of a rolling element bearing signal under a low signal to noise ratio. Both simulation and experiment show that complexity spectrum works better than envelope spectrum in distinguishing characteristic frequencies of fault bearings submerged in noise. An accelerated whole lifetime test of bearing has been performed to collect vibration data, which is analyzed by complexity spectrum entropy and other normal approaches. Results show that complexity spectrum entropy has some unique characteristics.
机译:已经提出了各种技术来检测滚动轴承故障,但是,在高噪声水平下准确地提取特征仍然是巨大的挑战。提出了一种基于匹配追踪的滚动轴承信号分析新方法。与大多数关注时频匹配的匹配追踪工作不同,本研究提出了复杂度谱和复杂度谱熵,以在低信噪比下准确地提取滚动轴承信号的故障特征。仿真和实验均表明,复杂度谱在识别淹没在噪声中的故障轴承特征频率方面比包络谱更好。已经进行了轴承加速全寿命测试以收集振动数据,并通过复杂度谱熵和其他常规方法对其进行了分析。结果表明,复杂度谱熵具有一些独特的特征。

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