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Adaptive Emergency Control of Power Systems Based on Deep Belief NetworkOACSTPCDEI

中文摘要

Emergency control is an essential means to help system maintain synchronism after fault clearance.Traditional“offline calculation,online matching”scheme faces significant challenges on adaptiveness and robustness problems.To address these challenges,this paper proposes a novel closed-loop framework of transient stability prediction(TSP)and emergency control based on Deep Belief Network(DBN).First,a hierarchical real-time anti-jitter TSP method using sliding time windows is adopted,which takes into account accuracy and rapidity at the same time.Next,a sensitivity regression model is established to mine the implicit relationship between power angles and sensitivity.When impending instability of the system is foreseen,optimal emergency control strategy can be determined in time.Lastly,responses after emergency control are fed back to the TSP model.If prediction result is still unstable,an additional control strategy will be implemented.Comprehensive numerical case studies are conducted on New England IEEE 39-bus system and Northeast Power Coordinated Council(NPCC)140-bus system.Results show the proposed method can detect instability of system as soon as possible and assist in maintaining reliable system synchronism.

Junyong Wu;Baoqin Li;Liangliang Hao;Fashun Shi;Pengjie Zhao;

Department of Electrical Engineering,Beijing Jiaotong University,Beijing 100084,China

动力与电气工程

Deep learningemergency controlpower systemsensitivitytransient stability prediction

《CSEE Journal of Power and Energy Systems》 2024 (004)

P.1618-1631 / 14

supported in part by the Fundamental Research Funds for the Central Universities(No.2020YJS162);the National Key R&D Program of China(No.2018YFB0904500);Science and Technology Projects of State Grid Corporation of China(No.SGLNDK00KJJS1800236).

10.17775/CSEEJPES.2022.00070

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