Topology Identification for Distribution Network Driven by Diverse Measurement Data

Zijiing Wang, Keyou Wang, Jin Xu
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引用次数: 1

Abstract

The analysis, optimization and control of the power grid becomes more complicated as the scale of renewable energy continues to expand. There are two factors causing the scarcity of accurate distribution network topology and parameters. Firstly, with lots of distributed equipment attached, the distribution network changes topology frequently. Secondly, the amount of monitoring equipment is limited. However, inferring the correct network topology through historical operating data becomes possible crediting to data-driven technology. Current identification methods require full sets of measurements. Unfortunately, actual measurements are generally incomplete and are from various sources. Data sets with this property are defined as diverse measurement data in this paper. Driven by diverse measurement data, a distribution network topology identification algorithm is proposed. Regression method and the branch power flow equation are employed to perform the identification. The analysis of IEEE 7-node and 33-node networks shows that accurate topology identification results are achieved, which indicates the algorithm proposed is robust and suitable for a variety of identification scenarios.
多种测量数据驱动的配电网拓扑识别
随着可再生能源规模的不断扩大,电网的分析、优化和控制变得更加复杂。导致配电网缺乏准确的拓扑和参数的原因有两个。首先,由于分布式设备较多,配电网拓扑变化频繁。其次,监控设备的数量有限。然而,得益于数据驱动技术,通过历史运行数据推断正确的网络拓扑成为可能。目前的鉴定方法需要全套的测量。不幸的是,实际的测量通常是不完整的,并且来自不同的来源。本文将具有这种性质的数据集定义为多种测量数据。在多种测量数据的驱动下,提出了一种配电网拓扑识别算法。采用回归法和支路潮流方程进行辨识。对IEEE 7节点和33节点网络的分析表明,该算法具有较好的鲁棒性,适用于多种识别场景。
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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