Electric Power ›› 2023, Vol. 56 ›› Issue (3): 100-108,117.DOI: 10.11930/j.issn.1004-9649.202209055
• Power System • Previous Articles Next Articles
LI Gang1,2, MENG Kun1, HE Shuai1, LIU Yunpeng3, YANG Ning4
Received:
2022-09-15
Revised:
2022-12-05
Accepted:
2022-12-14
Online:
2023-03-23
Published:
2023-03-28
Supported by:
LI Gang, MENG Kun, HE Shuai, LIU Yunpeng, YANG Ning. A Bi-LSTM-Based Transformer Fault Diagnosis Method Considering Feature Coupling[J]. Electric Power, 2023, 56(3): 100-108,117.
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