1 / 2023-06-10 18:38:04
Self-organized Criticality Identification of Power Systems Based on Neural Networks
electric power system; Self-organized criticality;neural network;
全文录用
Weidong Zhong / State Grid Zhejiang Electric Power Co., Ltd. Jiaxing Power Supply Company
Qianyuan Zhong / State Grid Zhejiang Electric Power Co., Ltd. Jiaxing Power Supply Company
Yilin Liu / Southwest Jiaotong University
Ping Hu / Big Health and Intelligent Engineering;Chengdu Medical College
Jicai Liu / Southwest Jiaotong University School of Economics and Management
Chengping Hu / State Grid Zhejiang Electric Power Co., Ltd. Jiaxing Power Supply Company
To mitigate the limitations associated with the arduous and time-consuming identification of conventional self-organized criticality, this paper presents a novel t-SNE-BP-based framework for discerning self-organized criticality within power systems. Firstly, the OPA model is employed to simulate cascading failures and acquire the resultant loss in system load, which subsequently serves as the observed parameter for M-K validation, facilitating the construction of the state dataset. Secondly, harnessing the dimensionality reduction advantages offered by t-SNE and the learning capabilities inherent to a neural network endowed with optimized hyperparameters, an innovative t-SNE-BP-based neural network model is introduced. Lastly, through comprehensive case studies conducted on the IEEE-39 node system, the proposed model is demonstrated to surpass alternative methodologies in terms of heightened accuracy and reduced identification time. These findings effectively corroborate the efficacy and superiority of the model, furnishing a solid theoretical foundation and compelling evidence for averting major power outage incidents.
重要日期
  • 会议日期

    12月08日

    2023

    12月10日

    2023

  • 11月01日 2023

    初稿截稿日期

  • 12月10日 2023

    注册截止日期

主办单位
IEEE IAS
承办单位
Southwest Jiaotong University (SWJTU)
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