Active distribution network operating situation prediction based on ICEEMDAN‑TA‑LSTM model
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(1.Electric Power Research Institute,State Grid Shanghai Electric Power Company, Shanghai 200437, China; 2.College of Electrical Engineering, Shanghai University of Electric Power, Shanghai 200090, China; 3. Pudong Power Supply Company,State Grid Shanghai Electric Power Company,Shanghai 200120,China)

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TM714

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    Abstract:

    The active distribution network operation situation prediction is an important tool to guarantee the safety and stability of the distribution network and the hazard perception. For the fast and accurate prediction of active distribution network operation, this paper proposes an active distribution network short?term operation prediction method based on ICEEMDAN?TA?LSTM model. Firstly, the original sequence is decomposed into several stable time series components by improving the modal decomposition to reduce the irregularity of the original data. At the same time, the improved manta ray feeding optimization algorithm is used to optimize the model's hyperparameters to comprehensively improve the overall prediction accuracy of the model. Then, from the perspective of nodes and branches, the node voltage overrun margin, branch load severity and voltage/current fluctuation evaluation indexes are proposed to characterize the distribution network operation situation at multiple levels. Finally, the feasibility and effectiveness of the model proposed in this paper are verified by taking the improved IEEE 33 node as a typical calculation example.

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刘 舒,姚尚坤,周 敏,朱 峰,田书欣,肖文渊.基于ICEEMDAN‑TA‑LSTM模型的主动配电网短期运行态势预测[J].电力科学与技术学报英文版,2023,38(6):175-186. LIU Shu, YAO Shangkun, ZHOU Min, ZHU Feng, TIAN Shuxin, XIAO Wenyuan. Active distribution network operating situation prediction based on ICEEMDAN‑TA‑LSTM model[J]. Journal of Electric Power Science and Technology,2023,38(6):175-186.

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  • Received:
  • Revised:
  • Adopted:
  • Online: January 30,2024
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