Deep Adaptive Adversarial Network-Based Method for Mechanical Fault Diagnosis under Different Working Conditions

The demand for transfer learning methods for mechanical fault diagnosis has considerably progressed in recent years. However, the existing methods always depend on the maximum mean discrepancy (MMD) in measuring the domain discrepancy. But MMD can not guarantee the different domain features to be si...

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Main Authors: Jinrui Wang, Shanshan Ji, Baokun Han, Huaiqian Bao, Xingxing Jiang
Format: Article
Language:English
Published: Wiley 2020-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2020/6946702
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author Jinrui Wang
Shanshan Ji
Baokun Han
Huaiqian Bao
Xingxing Jiang
author_facet Jinrui Wang
Shanshan Ji
Baokun Han
Huaiqian Bao
Xingxing Jiang
author_sort Jinrui Wang
collection DOAJ
description The demand for transfer learning methods for mechanical fault diagnosis has considerably progressed in recent years. However, the existing methods always depend on the maximum mean discrepancy (MMD) in measuring the domain discrepancy. But MMD can not guarantee the different domain features to be similar enough. Inspired by generative adversarial networks (GAN) and domain adversarial training of neural networks (DANN), this study presents a novel deep adaptive adversarial network (DAAN). The DAAN comprises a condition recognition module and domain adversarial learning module. The condition recognition module is constructed with a generator to extract features and classify the health condition of machinery automatically. The domain adversarial learning module is achieved with a discriminator based on Wasserstein distance to learn domain-invariant features. Then spectral normalization (SN) is employed to accelerate convergence. The effectiveness of DAAN is demonstrated through three transfer fault diagnosis experiments, and the results show that the DAAN can converge to zero after approximately 15 training epochs, and all the average testing accuracies in each case can achieve over 92%. It is expected that the proposed DAAN can effectively learn domain-invariant features to bridge the discrepancy between the data from different working conditions.
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institution Kabale University
issn 1076-2787
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publishDate 2020-01-01
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series Complexity
spelling doaj-art-7bcabb811e19459fbb52cab3991da6c72025-08-20T03:35:44ZengWileyComplexity1076-27871099-05262020-01-01202010.1155/2020/69467026946702Deep Adaptive Adversarial Network-Based Method for Mechanical Fault Diagnosis under Different Working ConditionsJinrui Wang0Shanshan Ji1Baokun Han2Huaiqian Bao3Xingxing Jiang4College of Mechanical and Electronic Engineering, Shandong University of Science and Technology, Qingdao, ChinaCollege of Mechanical and Electronic Engineering, Shandong University of Science and Technology, Qingdao, ChinaCollege of Mechanical and Electronic Engineering, Shandong University of Science and Technology, Qingdao, ChinaCollege of Mechanical and Electronic Engineering, Shandong University of Science and Technology, Qingdao, ChinaSchool of Rail Transportation, Soochow University, Suzhou, ChinaThe demand for transfer learning methods for mechanical fault diagnosis has considerably progressed in recent years. However, the existing methods always depend on the maximum mean discrepancy (MMD) in measuring the domain discrepancy. But MMD can not guarantee the different domain features to be similar enough. Inspired by generative adversarial networks (GAN) and domain adversarial training of neural networks (DANN), this study presents a novel deep adaptive adversarial network (DAAN). The DAAN comprises a condition recognition module and domain adversarial learning module. The condition recognition module is constructed with a generator to extract features and classify the health condition of machinery automatically. The domain adversarial learning module is achieved with a discriminator based on Wasserstein distance to learn domain-invariant features. Then spectral normalization (SN) is employed to accelerate convergence. The effectiveness of DAAN is demonstrated through three transfer fault diagnosis experiments, and the results show that the DAAN can converge to zero after approximately 15 training epochs, and all the average testing accuracies in each case can achieve over 92%. It is expected that the proposed DAAN can effectively learn domain-invariant features to bridge the discrepancy between the data from different working conditions.http://dx.doi.org/10.1155/2020/6946702
spellingShingle Jinrui Wang
Shanshan Ji
Baokun Han
Huaiqian Bao
Xingxing Jiang
Deep Adaptive Adversarial Network-Based Method for Mechanical Fault Diagnosis under Different Working Conditions
Complexity
title Deep Adaptive Adversarial Network-Based Method for Mechanical Fault Diagnosis under Different Working Conditions
title_full Deep Adaptive Adversarial Network-Based Method for Mechanical Fault Diagnosis under Different Working Conditions
title_fullStr Deep Adaptive Adversarial Network-Based Method for Mechanical Fault Diagnosis under Different Working Conditions
title_full_unstemmed Deep Adaptive Adversarial Network-Based Method for Mechanical Fault Diagnosis under Different Working Conditions
title_short Deep Adaptive Adversarial Network-Based Method for Mechanical Fault Diagnosis under Different Working Conditions
title_sort deep adaptive adversarial network based method for mechanical fault diagnosis under different working conditions
url http://dx.doi.org/10.1155/2020/6946702
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AT shanshanji deepadaptiveadversarialnetworkbasedmethodformechanicalfaultdiagnosisunderdifferentworkingconditions
AT baokunhan deepadaptiveadversarialnetworkbasedmethodformechanicalfaultdiagnosisunderdifferentworkingconditions
AT huaiqianbao deepadaptiveadversarialnetworkbasedmethodformechanicalfaultdiagnosisunderdifferentworkingconditions
AT xingxingjiang deepadaptiveadversarialnetworkbasedmethodformechanicalfaultdiagnosisunderdifferentworkingconditions