Deep Transfer Learning Method Based on 1D-CNN for Bearing Fault Diagnosis

In mechanical fault diagnosis, it is impossible to collect massive labeled samples with the same distribution in real industry. Transfer learning, a promising method, is usually used to address the critical problem. However, as the number of samples increases, the interdomain distribution discrepanc...

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Main Authors: Jun He, Xiang Li, Yong Chen, Danfeng Chen, Jing Guo, Yan Zhou
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Shock and Vibration
Online Access:http://dx.doi.org/10.1155/2021/6687331
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spelling doaj-546ddaf5cb8c4a0e9a73e51cd17455832021-05-31T00:33:19ZengHindawi LimitedShock and Vibration1875-92032021-01-01202110.1155/2021/6687331Deep Transfer Learning Method Based on 1D-CNN for Bearing Fault DiagnosisJun He0Xiang Li1Yong Chen2Danfeng Chen3Jing Guo4Yan Zhou5College of Automation EngineeringCollege of Automation EngineeringCollege of Automation EngineeringCollege of Automation EngineeringCollege of Automation EngineeringCollege of Computer ScienceIn mechanical fault diagnosis, it is impossible to collect massive labeled samples with the same distribution in real industry. Transfer learning, a promising method, is usually used to address the critical problem. However, as the number of samples increases, the interdomain distribution discrepancy measurement of the existing method has a higher computational complexity, which may make the generalization ability of the method worse. To solve the problem, we propose a deep transfer learning method based on 1D-CNN for rolling bearing fault diagnosis. First, 1-dimension convolutional neural network (1D-CNN), as the basic framework, is used to extract features from vibration signal. The CORrelation ALignment (CORAL) is employed to minimize marginal distribution discrepancy between the source domain and target domain. Then, the cross-entropy loss function and Adam optimizer are used to minimize the classification errors and the second-order statistics of feature distance between the source domain and target domain, respectively. Finally, based on the bearing datasets of Case Western Reserve University and Jiangnan University, seven transfer fault diagnosis comparison experiments are carried out. The results show that our method has better performance.http://dx.doi.org/10.1155/2021/6687331
collection DOAJ
language English
format Article
sources DOAJ
author Jun He
Xiang Li
Yong Chen
Danfeng Chen
Jing Guo
Yan Zhou
spellingShingle Jun He
Xiang Li
Yong Chen
Danfeng Chen
Jing Guo
Yan Zhou
Deep Transfer Learning Method Based on 1D-CNN for Bearing Fault Diagnosis
Shock and Vibration
author_facet Jun He
Xiang Li
Yong Chen
Danfeng Chen
Jing Guo
Yan Zhou
author_sort Jun He
title Deep Transfer Learning Method Based on 1D-CNN for Bearing Fault Diagnosis
title_short Deep Transfer Learning Method Based on 1D-CNN for Bearing Fault Diagnosis
title_full Deep Transfer Learning Method Based on 1D-CNN for Bearing Fault Diagnosis
title_fullStr Deep Transfer Learning Method Based on 1D-CNN for Bearing Fault Diagnosis
title_full_unstemmed Deep Transfer Learning Method Based on 1D-CNN for Bearing Fault Diagnosis
title_sort deep transfer learning method based on 1d-cnn for bearing fault diagnosis
publisher Hindawi Limited
series Shock and Vibration
issn 1875-9203
publishDate 2021-01-01
description In mechanical fault diagnosis, it is impossible to collect massive labeled samples with the same distribution in real industry. Transfer learning, a promising method, is usually used to address the critical problem. However, as the number of samples increases, the interdomain distribution discrepancy measurement of the existing method has a higher computational complexity, which may make the generalization ability of the method worse. To solve the problem, we propose a deep transfer learning method based on 1D-CNN for rolling bearing fault diagnosis. First, 1-dimension convolutional neural network (1D-CNN), as the basic framework, is used to extract features from vibration signal. The CORrelation ALignment (CORAL) is employed to minimize marginal distribution discrepancy between the source domain and target domain. Then, the cross-entropy loss function and Adam optimizer are used to minimize the classification errors and the second-order statistics of feature distance between the source domain and target domain, respectively. Finally, based on the bearing datasets of Case Western Reserve University and Jiangnan University, seven transfer fault diagnosis comparison experiments are carried out. The results show that our method has better performance.
url http://dx.doi.org/10.1155/2021/6687331
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