Learning partially observed meshed distribution grids

Harish Doddi, Deepjyoti Deka, M. Salapaka
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引用次数: 2

Abstract

This article analyzes statistical learning methods to identify the topology of meshed power distribution grids under partial observability. The learning algorithms use properties of the probability distribution of nodal voltages collected at the observed nodes. Unlike prior work on learning under partial observability, this work does not presume radial structure of the grid, and furthermore does not use injection measurements at any node. To the best of our knowledge, this is the first work for topology recovery in partially observed distribution grids, that uses voltage measurements alone. The developed learning algorithms are validated with non-linear power flow samples generated by Matpower in test grids.
学习部分观察的网状配电网
本文分析了在部分可观测条件下,用统计学习方法识别配电网拓扑结构的问题。学习算法利用在观测节点收集的节点电压的概率分布特性。与先前在部分可观察性下的学习工作不同,这项工作没有假设网格的径向结构,而且没有在任何节点上使用注入测量。据我们所知,这是第一次在部分观察到的配电网中进行拓扑恢复,仅使用电压测量。用Matpower生成的非线性潮流样本对所提出的学习算法进行了验证。
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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