An Improved Breadth-First Search Method Based on Information Interaction Applied for Power Network Topology Analysis

Author:

Bian Haihong1ORCID,Guo Zhengyang1ORCID,Wang Ximeng1ORCID,Zhou Chengang1ORCID,Bing Shengwei1ORCID,Zhang Zhiyuan1ORCID

Affiliation:

1. Nanjing Institute of Technology, Nanjing 211167, China

Abstract

With the rapid development of new energy resources and diversified load, power network topology data have grown swiftly. To meet the needs of the smart grid dispatching system, the power network topology analysis to support the marketing, power distribution, and other businesses in the operation of the grid has become one of the bottlenecks in the development of the smart grid. In the power grid, the outgoing lines of some generators are directly connected to the transformer, and during the busbar analysis, the nodes only adjacent to the transformer components will be identified as independent busbars. Therefore, a new method of node numbering optimization is proposed, in which the nodes adjacent to the switch are numbered preferentially. On this basis, a new abstract description method of adjacency relations and an improved breadth-first search method based on information interaction are proposed. Finally, simulation experiments are carried out in power grids with three different scales. The simulation results show that the algorithm can quickly and accurately realize power network topology analysis in the large-scale power grid, and the operating efficiency is improved by about 20% compared with the traditional algorithm.

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

Reference22 articles.

1. State estimation of power system in time-varying topology based on deep transfer learning;H. Zang;Automation of Electric Power Systems,2021

2. Graphical Models in Meshed Distribution Grids: Topology Estimation, Change Detection & Limitations

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5. Low-Voltage Distribution Grid Topology Identification With Latent Tree Model

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