Sample Complexity of Power System State Estimation using Matrix Completion

Joshua Comden, Marcello Colombino, A. Bernstein, Zhenhua Liu
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引用次数: 1

Abstract

In this paper, we propose an analytical framework to quantify the amount of data samples needed to obtain accurate state estimation in a power system – a problem known as sample complexity analysis in computer science. Motivated by the increasing adoption of distributed energy resources into the distribution-level grids, it becomes imperative to estimate the state of distribution grids in order to ensure stable operation. Traditional power system state estimation techniques mainly focus on the transmission network which involve solving an overdetermined system and eliminating bad data. However, distribution networks are typically underdetermined due to the large number of connection points and high cost of pervasive installation of measurement devices. In this paper, we consider the recently proposed state-estimation method for underdetermined systems that is based on matrix completion. In particular, a constrained matrix completion algorithm was proposed, wherein the standard matrix completion problem is augmented with additional equality constraints representing the physics (namely power-flow constraints). We analyze the sample complexity of this general method by proving an upper bound on the sample complexity that depends directly on the properties of these constraints that can lower number of needed samples as compared to the unconstrained problem. To demonstrate the improvement that the constraints add to state estimation, we test the method on a 141-bus distribution network case study and compare it to the traditional least squares minimization state estimation method.
基于矩阵补全的电力系统状态估计的样本复杂度
在本文中,我们提出了一个分析框架来量化在电力系统中获得准确状态估计所需的数据样本的数量,这个问题在计算机科学中被称为样本复杂性分析。随着分布式能源在配电网中的应用越来越广泛,为保证配电网的稳定运行,对配电网的状态进行估计势在必行。传统的电力系统状态估计技术主要集中在输电网络中,涉及到解决系统的过定问题和消除不良数据。然而,由于大量的连接点和普遍安装测量设备的高成本,配电网络通常是不确定的。本文考虑了最近提出的基于矩阵补全的欠定系统状态估计方法。特别地,提出了一种约束矩阵补全算法,该算法将标准矩阵补全问题扩展为附加的表示物理的等式约束(即功率流约束)。我们通过证明样本复杂度的上界来分析这种一般方法的样本复杂度,该上界直接取决于这些约束的性质,与无约束问题相比,这些约束可以减少所需的样本数量。为了证明约束对状态估计的改进,我们在一个141总线配电网的案例研究中测试了该方法,并将其与传统的最小二乘最小化状态估计方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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