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一种改进的复合多变量多尺度波动散度熵及其在旋转机械多变量信号中的应用。

A Refined Composite Multivariate Multiscale Fluctuation Dispersion Entropy and Its Application to Multivariate Signal of Rotating Machinery.

作者信息

Xi Chenbo, Yang Guangyou, Liu Lang, Jiang Hongyuan, Chen Xuehai

机构信息

Institute of Agricultural Machinery, Hubei University of Technology, Wuhan 430068, China.

Hubei Engineering Research Center for Intellectualization of Agricultural Equipment, Wuhan 430068, China.

出版信息

Entropy (Basel). 2021 Jan 19;23(1):128. doi: 10.3390/e23010128.

Abstract

In the fault monitoring of rotating machinery, the vibration signal of the bearing and gear in a complex operating environment has poor stationarity and high noise. How to accurately and efficiently identify various fault categories is a major challenge in rotary fault diagnosis. Most of the existing methods only analyze the single channel vibration signal and do not comprehensively consider the multi-channel vibration signal. Therefore, this paper presents Refined Composite Multivariate Multiscale Fluctuation Dispersion Entropy (RCMMFDE), a method which extracts the recognition information of multi-channel signals with different scale factors, and the refined composite analysis ensures the recognition stability. The simulation results show that this method has the characteristics of low sensitivity to signal length and strong anti-noise ability. At the same time, combined with Joint Mutual Information Maximisation (JMIM) and support vector machine (SVM), RCMMFDE-JMIM-SVM fault diagnosis method has been proposed. This method uses RCMMFDE to extract the state characteristics of the multiple vibration signals of the rotary machine, and then uses the JMIM method to extract the sensitive characteristics. Finally, different states of the rotary machine are classified by SVM. The validity of the method is verified by the composite gear fault data set and bearing fault data set. The diagnostic accuracy of the method is 99.25% and 100.00%. The experimental results show that RCMMFDE-JMIM-SVM can effectively recognize multiple signals.

摘要

在旋转机械的故障监测中,轴承和齿轮在复杂运行环境下的振动信号平稳性差且噪声高。如何准确高效地识别各种故障类别是旋转故障诊断中的一大挑战。现有的大多数方法仅分析单通道振动信号,未综合考虑多通道振动信号。因此,本文提出了改进的复合多变量多尺度波动散度熵(RCMMFDE)方法,该方法利用不同尺度因子提取多通道信号的识别信息,且改进的复合分析确保了识别的稳定性。仿真结果表明,该方法具有对信号长度敏感性低和抗噪声能力强的特点。同时,结合联合互信息最大化(JMIM)和支持向量机(SVM),提出了RCMMFDE-JMIM-SVM故障诊断方法。该方法利用RCMMFDE提取旋转机械多个振动信号的状态特征,然后用JMIM方法提取敏感特征。最后,通过SVM对旋转机械的不同状态进行分类。通过复合齿轮故障数据集和轴承故障数据集验证了该方法的有效性。该方法的诊断准确率分别为99.25%和100.00%。实验结果表明,RCMMFDE-JMIM-SVM能够有效识别多种信号。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/92e0/7836007/3994a30fcb8e/entropy-23-00128-g001.jpg

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