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Data-Model Hybrid Driven Topology Identification Framework for Distribution NetworksOACSTPCDEI

中文摘要

Extensive penetration of distribution energy resources(DERs)brings increasing uncertainties to distribution networks.Accurate topology identification is a critical basis to guarantee robust distribution network operation.Many algorithms that estimate distribution network topology have already been employed.Unfortunately,most are based on data-driven alone method and are hard to deal with ever-changing distribution network physical structures.Under these backgrounds,this paper proposes a data-model hybrid driven topology identification scheme for distribution networks.First,a data-driven method based on a deep belief network(DBN)and random forest(RF)algorithm is used to realize the distribution network topology rough identification.Then,the rough identification results in the previous step are used to make a model of distribution network topology.The model transforms the topology identification problem into a mixed integer programming problem to correct the rough topology further.Performance of the proposed method is verified in an IEEE 33-bus test system and modified 292-bus system.

Dongliang Xu;Zaijun Wu;Junjun Xu;Qinran Hu;

School of Electrical Engineering,Southeast University,Nanjing 210096,ChinaSchool of Electrical Engineering,Southeast University,Nanjing 210096,China College of automation,Nanjing University of Posts and Telecommunications,Nanjing 210096,China

动力与电气工程

Data-model hybrid drivenDBN-RFmixed-integer programmingtopology identification

《CSEE Journal of Power and Energy Systems》 2024 (004)

P.1478-1490 / 13

10.17775/CSEEJPES.2021.06260

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