Topology Identification Method for Primary Distribution Network with Limited Smart Meter Data

Chen Qian, Wang Meiyan, Gao Ding, Hu Fei-hu, Sergon Sheila Jepchirchir
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Abstract

The distribution networks are continuously undergoing structural changes caused by several factors, such as, the increase in connection of distributed energy resources to the network, which entail that the network operators make several adjustments to the structure of the network topology in order to improve its reliability. This paper presents a topology identification method for primary distribution network based on available limited data from transformers smart meters and feeder data for analysis. The method also aims to identify and correct any connectivity errors in the topology network. K-means clustering method is used as a correcting technique, to assign the uncertain or faulty connected distribution transformers to the most likely correct feeders. The proposed method is tested on a distribution network and the results show that the method is effective in correctly identifying the connection of distribution transformers on the feeders in the network. The technique can further be developed and be implemented by utility companies to update changes or correct errors in topology networks and enhance the operation of the networks.
智能电表数据有限的一次配电网拓扑识别方法
由于多种因素的影响,如分布式能源接入网络的增加,配电网不断发生结构变化,这就要求电网运营商对网络拓扑结构进行多次调整,以提高其可靠性。本文提出了一种基于变压器、智能电表和馈线数据进行分析的初级配电网拓扑识别方法。该方法还旨在识别和纠正拓扑网络中的任何连通性错误。采用k均值聚类方法作为校正技术,将不确定或故障连接的配电变压器分配给最可能正确的馈线。在配电网上进行了试验,结果表明,该方法能够正确识别配电网馈线上配电变压器的连接。该技术可以进一步发展,并由公用事业公司实施,以更新拓扑网络的变化或纠正错误,提高网络的运行。
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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