Rolling element bearing fault diagnosis using simulated annealing optimized spectral kurtosis

Jing Tian, C. Morillo, M. Pecht
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引用次数: 27

Abstract

To diagnose the bearing fault using vibration signal, methods like envelope analysis have been used. These methods need to locate the optimum frequency band to perform the analysis. Researchers have developed spectral kurtosis through kurtogram to detect the optimum frequency band. However, kurtogram uses a rigid structure of frequency filter bank and when the optimum frequency band does not match any of the frequency bands in the structure the fault may not be detected. In this paper a method based on simulated annealing is developed to locate the optimum frequency band. The method models spectral kurtosis as a function of the variables of a band-pass filter. Firstly the analysis result from the kurtogram is obtained as a start point, and then the central frequency and the bandwidth are optimized by maximizing spectral kurtosis through simulated annealing. Finally, the test signal is band-pass filtered by the optimized filter, and the envelope analysis is applied to complete the diagnosis. Experimental study shows that the method can diagnose the fault for different fault types. Being able to detect the real optimum frequency band, this method can strengthen the detection of the fault feature frequency component.
基于模拟退火优化谱峰度的滚动轴承故障诊断
利用振动信号诊断轴承故障,常用包络分析等方法。这些方法需要找到最合适的频段来进行分析。研究人员利用峰度图发展了光谱峰度来检测最佳频带。然而,峭图使用的是一种刚性结构的频率滤波器组,当最优频带与结构中的任何频带都不匹配时,可能无法检测到故障。本文提出了一种基于模拟退火的最佳频段定位方法。该方法将光谱峰度建模为带通滤波器变量的函数。首先从峰度图中得到分析结果作为起点,然后通过模拟退火,通过最大化谱峰度来优化中心频率和带宽。最后,利用优化后的滤波器对测试信号进行带通滤波,并应用包络分析完成诊断。实验研究表明,该方法可以对不同类型的故障进行诊断。该方法能够检测出真实的最优频段,加强了对故障特征频率分量的检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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