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Erschienen in: Neural Processing Letters 3/2022

06.01.2022

Deep Transfer Learning in Mechanical Intelligent Fault Diagnosis: Application and Challenge

verfasst von: Chenhui Qian, Junjun Zhu, Yehu Shen, Quansheng Jiang, Qingkui Zhang

Erschienen in: Neural Processing Letters | Ausgabe 3/2022

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Abstract

Mechanical intelligent fault diagnosis is an important method to accurately identify the health status of mechanical equipment and ensure its safe operation. With the advent of the “big data” era, it has become an inevitable tendency to choose different deep network models to improve the ability of data processing and classify faults. Meanwhile, in order to improve the generalization performances of fault diagnosis methods in different diagnosis scenarios, some fault diagnosis algorithms based on deep transfer learning have been developed. This paper introduces the concepts of deep transfer learning and explains the investigation motive. The advent in intelligent fault diagnosis of instances-based deep transfer learning, network-based deep transfer learning, mapping based deep transfer learning and adversarial-based deep transfer learning in recent years are summarized. Finally, we discuss the existing problems and development trend of deep transfer learning for intelligent fault diagnosis. This research has a positive significance for utilising deep transfer learning method in mechanical fault diagnosis.

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Metadaten
Titel
Deep Transfer Learning in Mechanical Intelligent Fault Diagnosis: Application and Challenge
verfasst von
Chenhui Qian
Junjun Zhu
Yehu Shen
Quansheng Jiang
Qingkui Zhang
Publikationsdatum
06.01.2022
Verlag
Springer US
Erschienen in
Neural Processing Letters / Ausgabe 3/2022
Print ISSN: 1370-4621
Elektronische ISSN: 1573-773X
DOI
https://doi.org/10.1007/s11063-021-10719-z

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