TY - JOUR
T1 - A Novel Federated Transfer Learning Framework for Intelligent Diagnosis of Insulation Defects in Gas-Insulated Switchgear
AU - Wang, Yanxin
AU - Yan, Jing
AU - Yang, Zhou
AU - Dai, Yuannan
AU - Wang, Jianhua
AU - Geng, Yingsan
N1 - Publisher Copyright:
© 1963-2012 IEEE.
PY - 2022
Y1 - 2022
N2 - Deep learning-driven diagnostic methods have shown significant ability to diagnose certain types of insulation defects. However, for these methods to achieve excellent results, it is necessary for the clients to obtain a large amount of data, which is not realistic for a typical client. For this reason, there is an incentive for different clients to collaboratively develop effective diagnostic models, but due to conflicts of interest and privacy protection issues, data sharing has become a challenge. In addition, due to domain shift, it is difficult to apply the model developed by some clients to others. In response to this, we propose a novel federated transfer learning (FTL) framework. Specifically, we developed federated adversarial learning that achieves domain adaptation while protecting data privacy, and we introduced a federated minimax (FedMM) algorithm for global model aggregation, which not only solves the problem of gradient drift caused by sample imbalance but also improves the accuracy of the global model. We verified that our method can achieve high-precision and robust diagnosis of gas-insulated switchgear(GIS) insulation defects with experiments composed of laboratory and field clients. The superior performance for unbalanced small samples on-site shows that the application of the proposed FTL is promising.
AB - Deep learning-driven diagnostic methods have shown significant ability to diagnose certain types of insulation defects. However, for these methods to achieve excellent results, it is necessary for the clients to obtain a large amount of data, which is not realistic for a typical client. For this reason, there is an incentive for different clients to collaboratively develop effective diagnostic models, but due to conflicts of interest and privacy protection issues, data sharing has become a challenge. In addition, due to domain shift, it is difficult to apply the model developed by some clients to others. In response to this, we propose a novel federated transfer learning (FTL) framework. Specifically, we developed federated adversarial learning that achieves domain adaptation while protecting data privacy, and we introduced a federated minimax (FedMM) algorithm for global model aggregation, which not only solves the problem of gradient drift caused by sample imbalance but also improves the accuracy of the global model. We verified that our method can achieve high-precision and robust diagnosis of gas-insulated switchgear(GIS) insulation defects with experiments composed of laboratory and field clients. The superior performance for unbalanced small samples on-site shows that the application of the proposed FTL is promising.
KW - Adversarial learning
KW - domain adaptation
KW - federated transfer learning (FTL)
KW - gas-insulated switchgear (GIS)
KW - insulation defect diagnosis
UR - https://www.scopus.com/pages/publications/85135217560
U2 - 10.1109/TIM.2022.3190529
DO - 10.1109/TIM.2022.3190529
M3 - 文章
AN - SCOPUS:85135217560
SN - 0018-9456
VL - 71
JO - IEEE Transactions on Instrumentation and Measurement
JF - IEEE Transactions on Instrumentation and Measurement
M1 - 3517711
ER -