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A Highly Reliable Image-Recognition-Based Intelligent Fault Detection Method for Feeders Using Fully Convolutional Generative Adversarial Network
Release Time:2025-04-30 Hits:
Date:
2025-04-30
Title of Paper:
A Highly Reliable Image-Recognition-Based Intelligent Fault Detection Method for Feeders Using Fully Convolutional Generative Adversarial Network
Journal:
IEEE Transactions on Smart Grid
Co-author:
Jiawei Yuan, Lifeng Xing, Mingjun Xue, Qi Chen, Bing Hu, Xi Chen, Jun Liu, Zaibin Jiao
Translation or Not:
No
Date of Publication:
2025-01-02

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