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Efficient bearing fault diagnosis by extracting intrinsic fault information using envelope power spectrum

机译:通过使用包络功率谱提取固有故障信息来进行有效的轴承故障诊断

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摘要

Early and efficient fault diagnosis of bearing of industrial motor is a modern demand for reducing unexpected breakdown of industrial process. Extracting the intrinsic fault signature in very early stage is important. In this point of view, this paper proposes a fault diagnosis model of industrial bearing including efficient fault signature extraction technique based on narrow band frequency domain analysis of acoustic emission (AE) signal using envelope power spectrum. To do that, AE signals are collected from defective and non-defective bearings under different rotational speeds from industrial-like experimental environment. Envelope power spectrum is calculated from the AE signal and narrow band root mean square (NBRMS) fault features are extracted from defect frequency ranges of the envelope power spectrum. Finally, the k-nearest neighbor (k-NN) classification algorithm is used for identifying the fault of unknown signal and validating the efficiency of the proposed feature extraction model. The experimental result shows that the proposed model outperforms state-of-art algorithms in terms of classification accuracy.
机译:对工业电动机轴承进行早期和有效的故障诊断是减少工业过程意外故障的现代要求。在非常早期阶段提取内部故障特征非常重要。基于这种观点,本文提出了一种工业轴承的故障诊断模型,该模型包括基于包络功率谱的声发射(AE)信号的窄带频域分析,包括有效的故障特征提取技术。为此,需要从类似于工业的实验环境以不同的转速从有缺陷和无缺陷的轴承中收集AE信号。根据AE信号计算包络功率谱,并从包络功率谱的缺陷频率范围提取窄带均方根(NBRMS)故障特征。最后,采用k-最近邻(k-NN)分类算法来识别未知信号的故障并验证所提特征提取模型的效率。实验结果表明,提出的模型在分类精度方面优于最新算法。

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