发电技术 (Apr 2024)

Risk Prediction Method of Low Frequency Oscillation in Maintenance Power Network Based on Long Short Term Memory Neural Network

  • FU Hongjun,
  • ZHU Shaoxuan,
  • WANG Buhua,
  • XIE Yan,
  • XIONG Haoqing,
  • TANG Xiaojun,
  • DU Xiaoyong,
  • LI Chenghao,
  • LI Xiaomeng

DOI
https://doi.org/10.12096/j.2096-4528.pgt.22152
Journal volume & issue
Vol. 45, no. 2
pp. 353 – 362

Abstract

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With the expansion of power grid scale and the increase of power components, the maintenance methods of power system become more and more complex. It is difficult to evaluate the low-frequency oscillation risk of power grid under massive maintenance only by traditional methods. To solve this problem, a risk prediction method of low-frequency oscillation in maintenance power network based on long short term memory (LSTM) neural network was proposed. Firstly, the unified coding method of power system maintenance mode was proposed, so that the computer can quickly and accurately identify the operation state of power grid under various maintenance modes. Then, based on the historical data measured in real time by phasor measurement unit (PMU), the number of low-frequency oscillation of power grid under different maintenance modes was predicted by using LSTM neural network, so as to evaluate the risk of low-frequency oscillation of power grid under maintenance. Finally, a regional power grid in central China was taken as an example to verify the accuracy and rapidity of the proposed method.

Keywords