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Multi-Scale Stochastic Resonance Spectrogram for fault diagnosis of rolling element bearings

机译:用于滚动元件轴承故障诊断的多尺度随机共振谱图

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It is not easy to identify incipient defect of a rolling element bearing by analyzing the vibration data because of the disturbance of background noise. The weak and unrecognizable transient fault signal of a mechanical system can be enhanced by the stochastic resonance (SR) technique that utilizes the noise in the system. However, it is challenging for the SR technique to identify sensitive fault information in non-stationary signals. This paper proposes a new method called multi-scale SR spectrogram (MSSRS) for bearing defect diagnosis. The new method considers the non-stationary property of the defective bearing vibration signals, and treats every scale of the time-frequency distribution (TFD) as a modulation system. Then the SR technique is utilized on each modulation system according to each frequencies in the TFD. The SR results are sensitive to the defect information because the energy of transient vibration is distributed in a limited frequency band in the TFD. Collecting the spectra of the SR outputs at all frequency scales then generates the MSSRS. The proposed MSSRS is able to well deal with the non-stationary transient signal, and can highlight the defect-induced frequency component corresponding to the impulse information. Experimental results with practical defective bearing vibration data have shown that the proposed method outperforms the former SR methods and exhibits a good application prospect in rolling element bearing fault diagnosis. (C) 2018 Elsevier Ltd. All rights reserved.
机译:由于背景噪声的干扰,通过分析振动数据,不容易识别滚动元件轴承的初始缺陷。通过利用系统中的噪声的随机谐振(SR)技术,可以增强机械系统的弱和无法辨认的瞬态故障信号。然而,SR技术挑战了在非静止信号中识别敏感故障信息。本文提出了一种称为多尺度SR谱图(MSSRS)的新方法,用于轴承缺陷诊断。新方法考虑了缺陷轴承振动信号的非静止性能,并将各个规模的时频分布(TFD)视为调制系统。然后根据TFD中的每个频率在每个调制系统上使用SR技术。 SR结果对缺陷信息敏感,因为瞬态振动的能量分布在TFD中的有限频带中。收集所有频率尺度的SR输出的光谱,然后生成MSSR。所提出的MSSRS能够很好地处理非静止的瞬态信号,并且可以突出显示对应于脉冲信息的缺陷感应频率分量。实验结果采用实用缺陷轴承振动数据显示,该方法优于前SR方法,在滚动元件轴承诊断中表现出良好的应用前景。 (c)2018年elestvier有限公司保留所有权利。

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