Rolling Bearing Fault Feature Extraction Using Local Maximum Synchrosqueezing Transform and Global Fuzzy Entropy

Keheng Zhu, Xiucheng Yue, Dejian Sun, Shichang Xiao, Xiong Hu
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引用次数: 4

Abstract

To achieve good performance of fault feature extraction for a rolling bearing, a new feature extraction method is presented in this paper based on local maximum synchrosqueezing transform (LMSST) and global fuzzy entropy (GFuzzyEn). First, targeting the time-varying features of the vibration signals of the rolling bearing, the LMSST algorithm, which is a newly developed time-frequency method and allows for adaptive mode decomposition, is used to preprocess the vibration signals into a number of mode components. Then, as a modification of FuzzyEn, GFuzzyEn is adopted to evaluate the complexity of these mode components. Compared to FuzzyEn, which focuses mainly on the local characteristics of the short-term physiological time series, the GFuzzyEn emphasizes the global characteristics of the signal considering that the bearing vibration signals' global fluctuation may change as the bearing works under various conditions. Finally, the fault features of the bearing vibration signals are extracted by combining the LMSST and the GFuzzyEn. The experimental analysis shows that the proposed LMSST-GFuzzyEn method can extract rich fault-related information from the bearing vibration data and can achieve good classification performance for rolling bearing fault diagnosis.
基于局部最大同步压缩变换和全局模糊熵的滚动轴承故障特征提取
为了获得较好的滚动轴承故障特征提取效果,提出了一种基于局部最大同步压缩变换(LMSST)和全局模糊熵(GFuzzyEn)的故障特征提取方法。首先,针对滚动轴承振动信号的时变特征,采用新发展的允许自适应模态分解的时频方法LMSST算法将振动信号预处理为多个模态分量;然后,作为FuzzyEn的改进,采用GFuzzyEn对这些模态分量的复杂度进行评估。相对于主要关注短期生理时间序列的局部特征的FuzzyEn, GFuzzyEn强调信号的全局特征,考虑到轴承在各种条件下工作时,轴承振动信号的全局波动可能会发生变化。最后,结合LMSST和GFuzzyEn提取轴承振动信号的故障特征。实验分析表明,所提出的LMSST-GFuzzyEn方法能够从轴承振动数据中提取丰富的故障相关信息,对滚动轴承故障诊断具有良好的分类性能。
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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