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Applications of Unsupervised Deep Transfer Learning to Intelligent Fault Diagnosis: A Survey and Comparative Study

Authors :
Zhao, Zhibin
Zhang, Qiyang
Yu, Xiaolei
Sun, Chuang
Wang, Shibin
Yan, Ruqiang
Chen, Xuefeng
Publication Year :
2019

Abstract

Recent progress on intelligent fault diagnosis (IFD) has greatly depended on deep representation learning and plenty of labeled data. However, machines often operate with various working conditions or the target task has different distributions with the collected data used for training (the domain shift problem). Besides, the newly collected test data in the target domain are usually unlabeled, leading to unsupervised deep transfer learning based (UDTL-based) IFD problem. Although it has achieved huge development, a standard and open source code framework as well as a comparative study for UDTL-based IFD are not yet established. In this paper, we construct a new taxonomy and perform a comprehensive review of UDTL-based IFD according to different tasks. Comparative analysis of some typical methods and datasets reveals some open and essential issues in UDTL-based IFD which are rarely studied, including transferability of features, influence of backbones, negative transfer, physical priors, etc. To emphasize the importance and reproducibility of UDTL-based IFD, the whole test framework will be released to the research community to facilitate future research. In summary, the released framework and comparative study can serve as an extended interface and basic results to carry out new studies on UDTL-based IFD. The code framework is available at \url{https://github.com/ZhaoZhibin/UDTL}.<br />Comment: This paper has been accepted by IEEE Transactions on Instrumentation and Measurement

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1912.12528
Document Type :
Working Paper
Full Text :
https://doi.org/10.1109/TIM.2021.3116309