169 / 2023-11-21 11:23:34
A data-driven framework based on deep learning with self-attention mechanism for fault detection in power distribution networks
Distribution network, Deep learning, Self-attention mechanism, Anomaly monitoring, Feeders
Final Paper
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
Fault detection in distribution networks is an important means of ensuring the safe operation of power grids. With the expansion of the scale of distribution networks, fault detection has become more challenging in the context of distribution network state monitoring. In order to accurately detect faults and issue timely warnings, a data-driven method based on deep learning with self-attention mechanism is proposed. The multiple convolution kernels of different sizes are utilized to extracted local features at different scales. At the same time, Bidirectional Long Short-Term Memory (BiLSTM) is applied to learn the positive and negative information in the current data in order to better capture the temporal characteristics of the data. To further enhance the feature-captured ability of the proposed method, a self-attention mechanism is used to adjust the importance of each feature. Finally, the effectiveness of the proposed method is verified by analyzing the measured current data of a substation distribution network feeder, the results show that the proposed method can accurately detect abnormal conditions in distribution network lines.

 
Important Date
  • Conference Date

    Nov 02

    2023

    to

    Nov 04

    2023

  • Dec 15 2023

    Draft paper submission deadline

  • Dec 20 2023

    Registration deadline

Sponsored By
IEEE Instrumentation and Measurement Society
Xidian University