160 / 2023-10-18 09:33:09
Data-driven fault detection of power distribution network based on temporal convolutional network and long short-term memory
Fault detection; Data driven; Deep learning; Temporal convolutional network (TCN); Power distribution network.
终稿
Ming Lu / zh-cn
Guang Feng / State Grid Henan Electric Power Research Institute
Suhui Huang / North China Electric Power University
Shanfeng LIU / Electric Power Scientific Research Institute of State Grid Henan Province Electric Power Company
Ling Xiang / North China Electric Power University
Hao Su / North China Electric Power University
The stable operation of the power distribution network plays an important role in ensuring the reliability and continuity of power transmission. However, the distribution network often experiences faults such as equipment failures and line short circuits during its operation. These faults not only affect the normal operation of the distribution network but also result in significant social and economic losses. Therefore, a new power distribution network fault detection method which is temporal convolutional network (TCN) cascaded with long short-term memory (LSTM) parallel network (TLPN) is proposed. The feeder current is adopted as input and output in this model. The proposed model highlights the feature extraction capabilities, and the temporal characteristics adaptive data are strengthened in established network model. Statistical analysis is performed on the residuals of the output, and an adaptive threshold is set to detect the trend changes of the feeder current. Through a case study of a certain substation, the proposed method can detect distribution network faults in advance, which can ensure the safety and reliability of power distribution networks.
重要日期
  • 会议日期

    11月02日

    2023

    11月04日

    2023

  • 12月15日 2023

    初稿截稿日期

  • 12月20日 2023

    注册截止日期

主办单位
IEEE Instrumentation and Measurement Society
Xidian University
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