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基于最优陷波滤波器和增强奇异值分解的滚动轴承故障诊断

Rolling Bearing Fault Diagnosis Based on Optimal Notch Filter and Enhanced Singular Value Decomposition.

作者信息

Pang Bin, He Yuling, Tang Guiji, Zhou Chong, Tian Tian

机构信息

School of Energy, Power and Mechanical Engineering, North China Electric Power University, Baoding 071000, China.

出版信息

Entropy (Basel). 2018 Jun 21;20(7):482. doi: 10.3390/e20070482.

Abstract

The impulsive fault feature signal of rolling bearings at the early failure stage is easily contaminated by the fundamental frequency (i.e., the rotation frequency of the shaft) signal and background noise. To address this problem, this paper puts forward a rolling bearing weak fault diagnosis method with the combination of optimal notch filter and enhanced singular value decomposition. Firstly, in order to eliminate the interference of the fundamental frequency signal, the original signal was processed by the notch filter with the fundamental frequency as the center frequency and with a varying bandwidth to get a series of corresponding notch filter signals. Secondly, the Teager energy entropy index was adopted to adaptively determine the optimal bandwidth to complete the optimal notch filter analysis on the raw vibration signal and obtain the corresponding optimal notch filter signal. Thirdly, an enhanced singular value decomposition de-nosing method was employed to de-noise the optimal notch filter signal. Finally, the envelope spectrum analysis was conducted on the de-noised signal to extract the fault characteristic frequencies. The effectiveness of the presented method was demonstrated via simulation and experiment verifications. In addition, the minimum entropy deconvolution, Kurtogram and Infogram methods were employed for comparisons to show the advantages of the presented method.

摘要

滚动轴承早期失效阶段的脉冲故障特征信号很容易被基频(即轴的旋转频率)信号和背景噪声所污染。为了解决这一问题,本文提出了一种结合最优陷波滤波器和增强奇异值分解的滚动轴承微弱故障诊断方法。首先,为了消除基频信号的干扰,利用以基频为中心频率、带宽可变的陷波滤波器对原始信号进行处理,得到一系列相应的陷波滤波器信号。其次,采用Teager能量熵指标自适应确定最优带宽,对原始振动信号进行最优陷波滤波器分析,得到相应的最优陷波滤波器信号。第三,采用增强奇异值分解去噪方法对最优陷波滤波器信号进行去噪。最后,对去噪后的信号进行包络谱分析,提取故障特征频率。通过仿真和实验验证了所提方法的有效性。此外,采用最小熵反卷积、Kurtogram和Infogram方法进行对比,以展示所提方法的优势。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30f8/7513000/8c2ea4e14b3b/entropy-20-00482-g001.jpg

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