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A Novel Fault Diagnosis Method of Rolling Bearings Based on AFEWT-KDEMI

机译:基于AFEWT-KDEMI的滚动轴承新型故障诊断方法

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摘要

According to the dynamic characteristics of the rolling bearing vibration signal and the distribution characteristics of its noise, a fault identification method based on the adaptive filtering empirical wavelet transform (AFEWT) and kernel density estimation mutual information (KDEMI) classifier is proposed. First, we use AFEWT to extract the feature of the rolling bearing vibration signal. The hypothesis test of the Gaussian distribution is carried out for the sub-modes that are obtained by the twice decomposition of EWT, and Gaussian noise is filtered out according to the test results. In this way, we can overcome the noise interference and avoid the mode selection problem when we extract the feature of the signal. Then we combine the advantages of kernel density estimation (KDE) and mutual information (MI) and put forward a KDEMI classifier. The mutual information of the probability density combining the unknown signal feature vector and the probability density of the known type signal is calculated. The type of the unknown signal is determined via the value of the mutual information, so as to achieve the purpose of fault identification of the rolling bearing. In order to verify the effectiveness of AFEWT in feature extraction, we extract signal features using three methods, AFEWT, EWT, and EMD, and then use the same classifier to identify fault signals. Experimental results show that the fault signal has the highest recognition rate by using AFEWT for feature extraction. At the same time, in order to verify the performance of the AFEWT-KDEMI method, we compare two classical fault signal identification methods, SVM and BP neural network, with the AFEWT-KDEMI method. Through experimental analysis, we found that the AFEWT-KDEMI method is more stable and effective.
机译:根据滚动轴承振动信号的动态特性和其噪声的分布特性,提出了一种基于自适应滤波经验小波变换(AFEWT)和内核密度估计互信息(KDEMI)分类器的故障识别方法。首先,我们使用AFEWT提取滚动轴承振动信号的特征。高斯分布的假设试验对于通过EWT的两倍分解而获得的子模式,并且根据测试结果过滤高斯噪声。通过这种方式,当我们提取信号的特征时,我们可以克服噪声干扰并避免模式选择问题。然后我们结合内核密度估计(KDE)和互信息(MI)的优点,并提出了KDEMI分类器。计算组合未知信号特征向量的概率密度的互信息和已知类型信号的概率密度。未知信号的类型通过相互信息的值确定,以达到滚动轴承的故障识别目的。为了验证AFEWT在特征提取中的有效性,我们使用三种方法,AFT,EWT和EMD提取信号功能,然后使用相同的分类器来识别故障信号。实验结果表明,通过使用AFEWT进行特征提取,故障信号具有最高的识别率。同时,为了验证AFEWT-KDEMI方​​法的性能,我们比较了两个经典故障信号识别方法,SVM和BP神经网络,具有AFEWT-KDEMI方​​法。通过实验分析,我们发现AFEWT-KDEMI方​​法更稳定且有效。

著录项

  • 期刊名称 Entropy
  • 作者单位
  • 年(卷),期 2018(20),6
  • 年度 2018
  • 页码 455
  • 总页数 17
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:经验小波变换;假设检验;自适应滤波;核密度估计;互信息;滚动轴承故障诊断;

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