Efficient State Estimation Through Rapid Topological Analysis Based on Spatiotemporal Graph Methodology

IF 3.3 Q3 ENERGY & FUELS IEEE Open Access Journal of Power and Energy Pub Date : 2024-08-08 DOI:10.1109/OAJPE.2024.3440218
Zhen Dai;Shouyu Liang;Yachen Tang;Jun Tan;Guangyi Liu;Qinyu Feng;Xuanang Li
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Abstract

The seamless integration of swift and precise topological analysis with state estimation is crucial for ensuring the dependability, stability, and efficiency of the power system. In response to this need, this paper introduced a novel approach to constructing a spatiotemporal “Power Grid One Graph” model using a graph database, enabling rapid topological analysis and state estimation. Initially, a spatiotemporal power grid model was created by merging grid topology with dynamically updated telemetry and telesignaling data. Subsequently, utilizing the graph model and entity mapping, the spatiotemporal node-breaker graph model was obtained and the corresponding bus-branch model was generated. Based on the node-breaker graph model, topological error identification was conducted, and a fast topological analysis optimization algorithm, considering component functionality, was applied to update the bus-branch graph model, facilitating graph-based state estimation. Finally, the proposed method was validated on a real power system, and its application, along with performance enhancements of the spatiotemporal power grid model considering topological changes, was investigated. The presented method provides both theoretical and practical support for the digital transformation of the power system and the advancement of the digital twin power grid.
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通过基于时空图方法的快速拓扑分析进行高效状态估计
要确保电力系统的可靠性、稳定性和效率,就必须将快速精确的拓扑分析与状态估计无缝结合起来。针对这一需求,本文介绍了一种利用图数据库构建时空 "电网一图 "模型的新方法,从而实现快速拓扑分析和状态估计。首先,通过将电网拓扑与动态更新的遥测和远程设计数据合并,创建了时空电网模型。随后,利用图模型和实体映射,获得时空节点断点图模型,并生成相应的母线分支模型。在节点断裂图模型的基础上,进行拓扑误差识别,并应用考虑组件功能的快速拓扑分析优化算法更新总线-分支图模型,从而促进基于图的状态估计。最后,在实际电力系统中验证了所提出的方法,并研究了该方法的应用以及考虑拓扑变化的时空电网模型的性能提升。所提出的方法为电力系统的数字化转型和数字孪生电网的发展提供了理论和实践支持。
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来源期刊
CiteScore
7.80
自引率
5.30%
发文量
45
审稿时长
10 weeks
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