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Study on bearing fault diagnosis method based on DBI-wavelet packet decomposition and improved BP neural network
Time: 2023-01-10 Counts:

ZHANG Y Y, ZHANG J L, WEN X Y, et al.Study on bearing fault diagnosis method based on DBI-wavelet packet decomposition and improved BP neural network[J].Journal of Henan Polytechnic University(Natural Science) ,2023,42(1):116-123.

doi:10.16186/j.cnki.1673-9787.2021060096

Received:2021/06/28

Revised:2021/08/20

Published:2023/01/25

Study on bearing fault diagnosis method based on DBI-wavelet packet decomposition

 and improved BP neural network

ZHANG Yuyan, ZHANG Jinlong, WEN Xiaoyu, LI Hao, SUN Chunya, WANG Haoqi, QIAO Dongping

Henan Key Laboratory of Intelligent Manufacturing Mechanical EquipmentZhengzhou University of Light IndustryZhengzhou 450002HenanChina

Abstract:Aiming at bearing fault diagnosistaking vibration signals as study objectsa novel method based on wavelet packet decomposition WPTand BP neural network was proposed.Vibration signals were fed into four-layer WPT for obtaining sub-frequency bands and Davies-Bouldin indexDBI was employed to quantitatively evaluate the results of WPT.Optimal decomposition results were produced by using FK22 wavelet basis function.Improved BP neural network was used to recognize these sub-frequency band features.An elastic gradient descent method was introduced into BP neural network for alleviating the problems of slow convergence and gradient vanishing.Meanwhilein order to determine the number of hidden layers and nodes numberorthogonal experiment was designed to verify different parameter combinations.Experiments were conducted on motor bearing and the results showed that average fault diagnosis accuracy reached as high as 98.833%.

Key words:bearing fault diagnosis;wavelet packet decomposition;BP neural network;Davies-Bouldin index

 基于DBI-小波包分解和改进BP神经网络的轴承故障_张玉彦.pdf


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