An acoustic fault diagnosis method of rolling bearings based on acoustic imaging and convolutional neural network

被引:0
|
作者
Wang R. [1 ]
Shi R. [1 ]
Hu S. [1 ]
Lu W. [2 ]
Hu X. [1 ]
机构
[1] School of Logistics Engineering, Shanghai Maritime University, Shanghai
[2] Shanghai Branch, Beijing Hi-key Plus Technology Co.Ltd., Shanghai
来源
关键词
acoustic imaging; bearing fault diagnosis; convolutional neural network ( CNN); gradient-weighted class activation map( Grad-CAM); wave superposition method;
D O I
10.13465/j.cnki.jvs.2022.16.029
中图分类号
学科分类号
摘要
Contact measurements generally used in the common vibration diagnosis techniques, which has certain limitations in situations where measurement is limited. In this paper, a rolling bearing acoustic fault diagnosis method based on acoustic imaging and convolutional neural network with the advantage of non-contact measurement was proposed. First, the spatial acoustic field radiated by the rolling bearing was obtained by using microphone array; then, acoustic imaging was performed by wave superposition method, and the reconstructed acoustic image can describe the spatial distribution information of the acoustic field; finally, a convolutional neural network (CNN) was established, which was trained for fault diagnosis using the acoustic image samples of different bearing operating states. Meanwhile, to address the problem of lack of interpretability of diagnostic results of deep learning models, this paper investigates the interpretability of convolutional neural networks in acoustic image-based bearing fault diagnosis using the gradient-weighted class activation map ( Grad-CAM) algorithm. The acoustic array data from the bearing experimental bench verifies the effectiveness and superiority of the proposed method. © 2022 Chinese Vibration Engineering Society. All rights reserved.
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页码:224 / 231
页数:7
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