Joint Matrix Completion and Compressed Sensing for State Estimation in Low-observable Distribution System

Shweta Dahale, B. Natarajan
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引用次数: 8

Abstract

Limited measurement availability at the distribution grid presents challenges for state estimation and situational awareness. This paper combines the advantages of two sparsity-based state estimation approaches (matrix completion and compressive sensing) that have been proposed recently to address the challenge of unobservability. The proposed approach exploits both the low rank structure and a suitable transform domain representation to leverage the correlation structure of the spatio-temporal data matrix while incorporating the powerflow constraints of the distribution grid. Simulations are carried out on three phase unbalanced IEEE 37 test system to verify the effectiveness of the proposed approach. The performance results reveal - (1) the superiority over traditional matrix completion and (2) very low state estimation errors for high compression ratios representing very low observability.
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低可观测配电系统状态估计的联合矩阵补全与压缩感知
配电网有限的测量可用性对状态估计和态势感知提出了挑战。本文结合了最近提出的两种基于稀疏性的状态估计方法(矩阵补全和压缩感知)的优点,以解决不可观察性的挑战。该方法在考虑配电网潮流约束的同时,利用低秩结构和合适的变换域表示来利用时空数据矩阵的关联结构。在三相不平衡ieee37测试系统上进行了仿真,验证了该方法的有效性。性能结果显示:(1)优于传统的矩阵补全;(2)对于具有极低可观测性的高压缩比,状态估计误差非常低。
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