Rolling Bearing Fault Diagnosis Considering Fault Location and Damage Degree Based on Smoothness Priors Approach

Rui Jiao, Sai Li, Zhixia Ding, Guan Wang
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Abstract

In this paper, a rolling bearing fault diagnosis method based on smoothness priors approach considering bearing fault location and damage degree is proposed. Firstly, smoothness priors approach is used to adaptively decompose the bearing vibration signals to obtain the trend and detrended terms; then the combined permutation entropy and energy entropy are used to extract the fault features from the trend and detrended terms to obtain the information entropy feature vectors; finally, the information entropy feature vectors are input to the support vector classifier of sine cosine algorithm. This method is applied to the experimental data of rolling bearing. The analysis results show that the diagnosis effect of using the combination of permutation entropy and energy entropy to extract fault features is better than using only permutation entropy to extract fault features when the bearing fault location and damage degree are considered at the same time.
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基于平滑先验的考虑故障定位和损伤程度的滚动轴承故障诊断
提出了一种考虑轴承故障定位和损伤程度的基于平滑先验方法的滚动轴承故障诊断方法。首先,采用平滑先验法对轴承振动信号进行自适应分解,得到趋势项和去趋势项;然后利用组合置换熵和能量熵从趋势项和去趋势项中提取故障特征,得到信息熵特征向量;最后,将信息熵特征向量输入到正弦余弦算法的支持向量分类器中。将该方法应用于滚动轴承的实验数据。分析结果表明,在同时考虑轴承故障位置和损坏程度的情况下,结合排列熵和能量熵提取故障特征的诊断效果优于仅使用排列熵提取故障特征的诊断效果。
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