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一种平衡划分方法及其在电网分布式状态估计中的应用

A Balanced Partitioning Method and Its Application on Distributed State Estimation in Power Grids

作者 Xue Li · Tengfei Zhang · Zhe Zhou
期刊 IEEE Transactions on Power Systems
出版日期 2025年7月
卷/期 第 41 卷 第 1 期
技术分类 控制与算法
技术标签 模型预测控制MPC 微电网 并网逆变器 弱电网并网
相关度评分 ★★★★ 4.0 / 5.0
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中文摘要

本文提出一种兼顾电气模块性、节点分布均衡性与分区密度的多目标网格划分方法,结合改进粒子群优化、图论与谱聚类,提升分布式状态估计精度与资源利用率,并通过质量保障机制增强大规模电网划分的连通鲁棒性。

English Abstract

The performance of grid partitioning methods has a significant impact on the results of distributed state estimation (DSE). Most existing grid partitioning methods struggle to balance node distribution while maintaining partition quality and network connectivity, which may lead to low resource utilization and reduced accuracy in DSE. This paper proposes a novel balanced grid partitioning method, aiming to promote effective DSE. To ensure partition balance and grid connectivity, a multi-objective fitness model for partitioning is formulated based on the correlation of electrical modularity, node distribution balance factor and partition density influence factor. The grid partitioning problem is a non-convex discrete optimization problem. To obtain a solution, an improved particle swarm optimization algorithm is employed, incorporating graph theory and spectral clustering to enhance solution diversity and accelerate convergence speed. To address the vulnerability of large-scale grid partitioning to topological connectivity, a partition quality assurance mechanism is proposed to automatically detect and reassign outlier nodes. Numerical analysis validates the method’s effectiveness, including multidimensional performance evaluation and comparative experiments with multiple power grid partitioning cases. Further simulation results when applied to a DSE scenario demonstrate significant advantages in the accuracy of the proposed scheme by comparing to existing schemes in the literature.
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SunView 深度解读

该研究提出的平衡划分与分布式状态估计算法,可增强阳光电源iSolarCloud智能运维平台对大型光储电站集群的实时感知能力,尤其适用于PowerTitan、PowerStack等构网型储能系统在弱电网/孤岛场景下的协同控制。算法可嵌入ST系列PCS的边缘侧状态估计模块,提升多逆变器-多PCS系统的协同响应精度,建议在下一代iSolarCloud 3.0中集成该分区优化引擎,支撑百万千瓦级新能源基地的分布式态势感知。