利用谱聚类提高多区域状态估计性能

D. W. Kelle, A. Abur
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引用次数: 1

摘要

本文研究了将大型电力系统划分为若干区域的问题,并利用状态估计器来协调局部得到的分散估计。通过对公用事业系统应用自动分区,与预定义的公用事业控制区域相比,分布式状态估计器的性能可以得到改善。该方法利用无向图的谱特性,通过为每条总线分配一个顶点,为每对由一条线连接的总线分配一条边而形成。使用图拉普拉斯矩阵和相关的特征向量和特征值对图顶点进行聚类,使每个区域具有大量的内部连接,但具有少量的外部连接。该方法使用IEEE 118总线系统进行了演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Performance of Multi-Area State Estimation Using Spectral Clustering
This paper investigates the problem of dividing a large power system into several areas to be solved by a state estimator which coordinates locally obtained decentralized estimates. By applying automatic partitioning to the utility system, the performance of the distributed state estimator can be improved as compared to the pre-defined utility control areas. The presented approach utilizes the spectral properties of the un-directed graph formed by assigning a vertex to every bus and an edge to every pair of buses connected by a line. The graph Laplacian matrix and associated eigenvectors and eigenvalues are used to cluster the graph vertices in such a way that each area has a large number of internal connections, but a small number of external connections. This approach is demonstrated using the IEEE 118 bus system.
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