Research on power dispatching model based on knowledge graph entity extraction task


연구 분야: Databases



학회: Energy Informatics


초록

This paper proposes an integrated knowledge graph-based power dispatching model for emergency response, combining Markov chain-based text preprocessing, entity-extracted knowledge graph construction, and case-based reasoning optimization - a novel approach that enhances both real-time decision-making and system security. First, a Markov chain-based method effectively removes redundant information from power anomaly event texts, improving entity extraction accuracy. Subsequently, a knowledge graph is constructed to precisely identify key entities, enabling the creation of a structured power emergency plan database. Finally, case-based reasoning matches real-time anomalies with historical cases, facilitating the rapid generation of optimal dispatching schemes. The experiments demonstrate that the proposed model achieves high efficiency (with an average dispatching time < 50 s) and reliability (exhibiting a failure blowout rate below 0.1%), thereby significantly improving power grid safety. The proposed framework advances intelligent power system dispatching by integrating text analytics, knowledge representation, and adaptive reasoning.


Author Profile
Yufeng Chai

Information & Communication Company State Grid Ningxia Electric Power Co. Ltd Yinchuan 750002 Ningxia China

China
Author Profile
Bo Zhang

Information & Communication Company State Grid Ningxia Electric Power Co. Ltd Yinchuan 750002 Ningxia China

China
Author Profile
Min Wang

Information & Communication Company State Grid Ningxia Electric Power Co. Ltd Yinchuan 750002 Ningxia China

China

📄 논문 정보

발행 연도 2025년
인용수 0
출판 국가 China
사이트 Springer
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