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Bearing incipient fault diagnosis based upon maximal spectral kurtosis TQWT and group sparsity total variation denoising approach

机译:基于最大光谱峰度TQWT和群稀疏性总变异去噪方法的诱发故障诊断

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摘要

Localized faults in rolling bearing tend to result in periodic shocks and thus arouse periodic responses in the vibration signal. In this paper, a novel fault diagnosis method based on maximal spectral kurtosis tunable Q-factor wavelet transformation (TQWT) and group sparsity total variation denoising (GS-TVD) is proposed to address the issue of bearing incipient failure. Firstly, the range of Q-factor was pre-selected according to the spectral distribution of impulse component, and bearing vibration signal was transformed by the TQWT method. Then, the spectral kurtosis of each scale transform coefficients was calculated, and the optimal Q-factor and decomposition scale can be selected according to the kurtosis maximum principle. In order to remove the interference components and high-frequency noise from the reconstructed vibration signal generated by inverse TQWT, the GS-TVD approach is employed, thus the cyclic periodicity characteristic and transient impulses can be detected obviously. The two cases experimental results indicate that the proposed technique is more effective and applicable for bearing incipient fault diagnosis compared with traditional method.
机译:滚动轴承中的局部故障往往会导致周期性冲击,从而引起振动信号中的周期性响应。本文提出了一种基于最大光谱峰值可调Q因子小波变换(TQWT)和组稀疏总变化(GS-TVD)的新型故障诊断方法,以解决轴承初期失败的问题。首先,根据脉冲部件的光谱分布预先选择Q系数的范围,并且通过TQWT方法转换轴承振动信号。然后,计算每个刻度变换系数的光谱峰度,并且可以根据Kurtosis最大原理选择最佳Q系数和分解刻度。为了从反向TQWT产生的重建振动信号去除干扰分量和高频噪声,采用GS-TVD方法,因此可以明显地检测循环周期性特性和瞬态脉冲。两种情况的实验结果表明,与传统方法相比,该技术更有效,适用于载体初期的故障诊断。

著录项

  • 作者

    Qing Li; Steven Y. Liang;

  • 作者单位
  • 年度 2018
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
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