A method for rolling bearing fault diagnosis based on GSC-MDRNN with multi-dimensional input
Abstract The traditional fault diagnosis methods for rolling bearings through neural networks mostly use data sources collected by a single sensor and use single-dimensional data input, leading to fault features in bearings not be completely extracted. Moreover, traditional convolution often uses si...
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Published in | Measurement science & technology Vol. 34; no. 5; p. 55901 |
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Main Authors | , , |
Format | Journal Article |
Language | English |
Published |
01.05.2023
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Online Access | Get full text |
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Summary: | Abstract
The traditional fault diagnosis methods for rolling bearings through neural networks mostly use data sources collected by a single sensor and use single-dimensional data input, leading to fault features in bearings not be completely extracted. Moreover, traditional convolution often uses single-size convolution kernels, which are insufficient for fault feature extraction. In response to these problems, the global shortcut connection (GSC)-multichannel deep ResNet network model is proposed. First, a new residual structure, the GSC, is proposed to fuse two-dimensional and one-dimensional signal features. Second, involution is introduced into the field of fault diagnosis to address the problem of insufficient network feature extraction caused by using single-size convolution kernels. In addition, a convolutional block attention module can adaptively assign the weight of each channel feature to achieve adaptive channel fusion. The verification was performed on the four-category and eight-category data sets collected in the laboratory, and the results show that this method has a high fault recognition rate. |
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ISSN: | 0957-0233 1361-6501 |
DOI: | 10.1088/1361-6501/acb000 |