A rolling bearing fault diagnosis method based on Compressive sensing and Local characteristic-scale decomposition

Myong-Jin Jo, Su-Jong Kim, Tong-Chol Choe
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Abstract

Rolling bearings are an important part of the system with rotating parts. In the past, the rolling bearing fault diagnosis was based on the envelope of the bearing vibration waveform and FFT analysis to identify the fault and classify the fault type by the feature frequency. In addition, they proposed a method to perform signal processing by decomposing the envelope EMD to improve the diagnostic accuracy. However, this method is computationally intensive due to the iterative computation based on the reduced averaging method, and the convergence rate is different depending on the signal characteristics, which makes it difficult to perform real-time functions and consume a lot of memory space for data communication. In this paper, a method for diagnosing faults in rolling bearings based on compressive sensing (CS) and local characteristic-scale decomposition (LCD) is proposed and the effectiveness of bearing fault diagnosis method is verified by numerical experiments. In this paper, we propose a method to improve the diagnostic accuracy and shorten the computational time by identifying characteristic frequencies of the bearing fault from the Hilbert envelope spectrum of the components decomposed by the LCD after preprocessing and signal filtering of vibration signals based on CS.
基于压缩传感和局部特征尺度分解的滚动轴承故障诊断方法
滚动轴承是旋转部件系统的重要组成部分。过去,滚动轴承故障诊断是基于轴承振动波形的包络和 FFT 分析来识别故障,并通过特征频率对故障类型进行分类。此外,他们还提出了一种通过分解包络 EMD 来进行信号处理的方法,以提高诊断精度。然而,这种方法由于采用了基于还原平均法的迭代计算,计算量较大,且收敛速度随信号特征的不同而不同,因此难以实现实时功能,且数据通信需要消耗大量内存空间。本文提出了一种基于压缩传感(CS)和局部特征尺度分解(LCD)的滚动轴承故障诊断方法,并通过数值实验验证了轴承故障诊断方法的有效性。本文提出了一种基于 CS 的方法,通过对振动信号进行预处理和信号滤波后,从 LCD 分解的分量的希尔伯特包络谱中识别轴承故障的特征频率,从而提高诊断精度并缩短计算时间。
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