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SVD principle analysis and fault diagnosis for bearings based on the correlation coefficient

机译:基于相关系数的轴承SVD原理分析与故障诊断

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摘要

Aiming at solving the existing sharp problems by using singular value decomposition (SVD) in the fault diagnosis of rolling bearings, such as the determination of the delay step k for creating the Hankel matrix and selection of effective singular values, the present study proposes a novel adaptive SVD method for fault feature detection based on the correlation coefficient by analyzing the principles of the SVD method. This proposed method achieves not only the optimal determination of the delay step k by means of the absolute value r(k) of the autocorrelation function sequence of the collected vibration signal, but also the adaptive selection of effective singular values using the index rho corresponding to useful component signals including weak fault information to detect weak fault signals for rolling bearings, especially weak impulse signals. The effectiveness of this method has been verified by contrastive results between the proposed method and traditional SVD, even using the wavelet-based method through simulated experiments. Finally, the proposed method has been applied to fault diagnosis for a deep-groove ball bearing in which a single point fault located on either the inner or outer race of rolling bearings is obtained successfully. Therefore, it can be stated that the proposed method is of great practical value in engineering applications.
机译:为了解决在滚动轴承故障诊断中使用奇异值分解(SVD)解决现有的尖锐问题,例如确定汉克矩阵创建的延迟步骤k和有效奇异值的选择等问题,提出了一种新颖的方法。通过分析SVD方法的原理,基于相关系数的自适应SVD故障特征检测方法。所提出的方法不仅通过收集的振动信号的自相关函数序列的绝对值r(k)来实现对延迟步长k的最佳确定,而且还使用与之对应的索引rho自适应选择有效的奇异值有用的分量信号,包括弱故障信息,以检测滚动轴承的弱故障信号,特别是弱脉冲信号。甚至通过基于小波的方法通过模拟实验,该方法与传统SVD的对比结果也验证了该方法的有效性。最后,将所提出的方法应用于深沟球轴承的故障诊断中,该方法成功获得了位于滚动轴承内圈或外圈上的单点故障。因此可以说,该方法在工程应用中具有很大的实用价值。

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