TY - JOUR
T1 - A reinforcement ensemble deep transfer learning network for rolling bearing fault diagnosis with Multi-source domains
AU - Li, Xingqiu
AU - Jiang, Hongkai
AU - Xie, Min
AU - Wang, Tongqing
AU - Wang, Ruixin
AU - Wu, Zhenghong
N1 - Publisher Copyright:
© 2021
PY - 2022/1
Y1 - 2022/1
N2 - Fault diagnosis with transfer learning has achieved great attention. However, existing methods mostly focused on single-source-single-target sceneries. In some cases, there may exist multiple source domains. Therefore, a reinforcement ensemble deep transfer learning network (REDTLN) is proposed for fault diagnosis with multi-source domains. Firstly, various new kernel maximum mean discrepancies (kMMDs) are used to construct multiple deep transfer learning networks (DTLNs) for single-source-single-target domain adaptation. The differences of kernel functions and source domains can help the DTLNs learn diverse transferable features. Secondly, a new unified metric is designed based on kMMD and diversity measures for unsupervised ensemble learning. Finally, using the unified metric as the reward, a reinforcement learning method is firstly explored to generate an effective combination rule for multi-domain-multi-model reinforcement ensemble. The proposed method is verified with experiment datasets, and the results empirically show its effectiveness and superiority compared with other methods.
AB - Fault diagnosis with transfer learning has achieved great attention. However, existing methods mostly focused on single-source-single-target sceneries. In some cases, there may exist multiple source domains. Therefore, a reinforcement ensemble deep transfer learning network (REDTLN) is proposed for fault diagnosis with multi-source domains. Firstly, various new kernel maximum mean discrepancies (kMMDs) are used to construct multiple deep transfer learning networks (DTLNs) for single-source-single-target domain adaptation. The differences of kernel functions and source domains can help the DTLNs learn diverse transferable features. Secondly, a new unified metric is designed based on kMMD and diversity measures for unsupervised ensemble learning. Finally, using the unified metric as the reward, a reinforcement learning method is firstly explored to generate an effective combination rule for multi-domain-multi-model reinforcement ensemble. The proposed method is verified with experiment datasets, and the results empirically show its effectiveness and superiority compared with other methods.
KW - Fault diagnosis
KW - Multi-source domains
KW - Reinforcement ensemble deep transfer network
KW - Rolling bearing
KW - Unified metric
UR - http://www.scopus.com/inward/record.url?scp=85121115582&partnerID=8YFLogxK
U2 - 10.1016/j.aei.2021.101480
DO - 10.1016/j.aei.2021.101480
M3 - 文章
AN - SCOPUS:85121115582
SN - 1474-0346
VL - 51
JO - Advanced Engineering Informatics
JF - Advanced Engineering Informatics
M1 - 101480
ER -