Deep Transfer Learning-Based Fault Diagnosis for Gearbox under Complex Working Conditions

In the large amount of available data, information insensitive to faults in historical data interferes in gear fault feature extraction. Furthermore, as most of the fault diagnosis models are learned from offline data collected under single/fixed working condition only, this may cause unsatisfactory...

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Main Authors: Zitong Wan, Rui Yang, Mengjie Huang
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Shock and Vibration
Online Access:http://dx.doi.org/10.1155/2020/8884179
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spelling doaj-0b9f7f5bd5534c949abd2ae04499f3642020-11-30T09:11:22ZengHindawi LimitedShock and Vibration1070-96221875-92032020-01-01202010.1155/2020/88841798884179Deep Transfer Learning-Based Fault Diagnosis for Gearbox under Complex Working ConditionsZitong Wan0Rui Yang1Mengjie Huang2Design School, Xi’an Jiaotong-Liverpool University, Suzhou 215123, ChinaSchool of Advanced Technology, Xi’an Jiaotong-Liverpool University, Suzhou 215123, ChinaDesign School, Xi’an Jiaotong-Liverpool University, Suzhou 215123, ChinaIn the large amount of available data, information insensitive to faults in historical data interferes in gear fault feature extraction. Furthermore, as most of the fault diagnosis models are learned from offline data collected under single/fixed working condition only, this may cause unsatisfactory performance for complex working conditions (including multiple and unknown working conditions) if not properly dealt with. This paper proposes a transfer learning-based fault diagnosis method of gear faults to reduce the negative effects of the abovementioned problems. In the proposed method, a cohesion evaluation method is applied to select sensitive features to the task with a transfer learning-based sparse autoencoder to transfer the knowledge learnt under single working condition to complex working conditions. The experimental results on wind turbine drivetrain diagnostics simulator show that the proposed method is effective in complex working conditions and the achieved results are better than those of traditional algorithms.http://dx.doi.org/10.1155/2020/8884179
collection DOAJ
language English
format Article
sources DOAJ
author Zitong Wan
Rui Yang
Mengjie Huang
spellingShingle Zitong Wan
Rui Yang
Mengjie Huang
Deep Transfer Learning-Based Fault Diagnosis for Gearbox under Complex Working Conditions
Shock and Vibration
author_facet Zitong Wan
Rui Yang
Mengjie Huang
author_sort Zitong Wan
title Deep Transfer Learning-Based Fault Diagnosis for Gearbox under Complex Working Conditions
title_short Deep Transfer Learning-Based Fault Diagnosis for Gearbox under Complex Working Conditions
title_full Deep Transfer Learning-Based Fault Diagnosis for Gearbox under Complex Working Conditions
title_fullStr Deep Transfer Learning-Based Fault Diagnosis for Gearbox under Complex Working Conditions
title_full_unstemmed Deep Transfer Learning-Based Fault Diagnosis for Gearbox under Complex Working Conditions
title_sort deep transfer learning-based fault diagnosis for gearbox under complex working conditions
publisher Hindawi Limited
series Shock and Vibration
issn 1070-9622
1875-9203
publishDate 2020-01-01
description In the large amount of available data, information insensitive to faults in historical data interferes in gear fault feature extraction. Furthermore, as most of the fault diagnosis models are learned from offline data collected under single/fixed working condition only, this may cause unsatisfactory performance for complex working conditions (including multiple and unknown working conditions) if not properly dealt with. This paper proposes a transfer learning-based fault diagnosis method of gear faults to reduce the negative effects of the abovementioned problems. In the proposed method, a cohesion evaluation method is applied to select sensitive features to the task with a transfer learning-based sparse autoencoder to transfer the knowledge learnt under single working condition to complex working conditions. The experimental results on wind turbine drivetrain diagnostics simulator show that the proposed method is effective in complex working conditions and the achieved results are better than those of traditional algorithms.
url http://dx.doi.org/10.1155/2020/8884179
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AT ruiyang deeptransferlearningbasedfaultdiagnosisforgearboxundercomplexworkingconditions
AT mengjiehuang deeptransferlearningbasedfaultdiagnosisforgearboxundercomplexworkingconditions
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