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一种基于分层细化复合多尺度波动散度熵和粒子群优化极限学习机的滚动轴承故障诊断新方法

A Novel Fault Diagnosis Method for Rolling Bearing Based on Hierarchical Refined Composite Multiscale Fluctuation-Based Dispersion Entropy and PSO-ELM.

作者信息

Chen Yinsheng, Yuan Zichen, Chen Jiahui, Sun Kun

机构信息

School of Measurement and Communication Engineering, Harbin University of Science and Technology, Harbin 150080, China.

National Experimental Teaching Demonstration Center of Measurement and Control Technology and Instrumentation, Harbin University of Science and Technology, Harbin 150080, China.

出版信息

Entropy (Basel). 2022 Oct 24;24(11):1517. doi: 10.3390/e24111517.

Abstract

This paper proposes a novel fault diagnosis method for rolling bearing based on hierarchical refined composite multiscale fluctuation-based dispersion entropy (HRCMFDE) and particle swarm optimization-based extreme learning machine (PSO-ELM). First, HRCMFDE is used to extract fault features in the vibration signal at different time scales. By introducing the hierarchical theory algorithm into the vibration signal decomposition process, the problem of missing high-frequency signals in the coarse-grained process is solved. Fluctuation-based dispersion entropy (FDE) has the characteristics of insensitivity to noise interference and high computational efficiency based on the consideration of nonlinear time series fluctuations, which makes the extracted feature vectors more effective in describing the fault information embedded in each frequency band of the vibration signal. Then, PSO is used to optimize the input weights and hidden layer neuron thresholds of the ELM model to improve the fault identification capability of the ELM classifier. Finally, the performance of the proposed rolling bearing fault diagnosis method is verified and analyzed by using the CWRU dataset and MFPT dataset as experimental cases, respectively. The results show that the proposed method has high identification accuracy for the fault diagnosis of rolling bearings with varying loads and has a good load migration effect.

摘要

本文提出了一种基于分层细化复合多尺度波动散度熵(HRCMFDE)和基于粒子群优化的极限学习机(PSO-ELM)的滚动轴承故障诊断新方法。首先,利用HRCMFDE在不同时间尺度上提取振动信号中的故障特征。通过将分层理论算法引入振动信号分解过程,解决了粗粒化过程中高频信号缺失的问题。基于对非线性时间序列波动的考虑,基于波动的散度熵(FDE)具有对噪声干扰不敏感和计算效率高的特点,使得提取的特征向量在描述嵌入振动信号各频带中的故障信息时更有效。然后,利用粒子群算法对极限学习机模型的输入权重和隐含层神经元阈值进行优化,提高极限学习机分类器的故障识别能力。最后,分别以CWRU数据集和MFPT数据集为实验案例,对所提出的滚动轴承故障诊断方法的性能进行了验证和分析。结果表明,该方法对不同载荷下滚动轴承的故障诊断具有较高的识别精度,且具有良好的载荷迁移效果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9b76/9689796/c0cdfd285d86/entropy-24-01517-g001.jpg

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