Dynamic reconfiguration of active distribution network based on improved backtracking search algorithm

Author:

Li Wenying12,Guo Qinghong3,Wen Ming12,Zhang Yun3,Pan Xin12,Xiao Zhenfeng12,Yang Shuzhi3

Affiliation:

1. Economic and Technological Research Institute, State Grid Hunan Provincial Electric Power Company, Changsha, China

2. Hunan Provincial Key Laboratory of Energy Internet Supply and Demand Operation, Changsha, China

3. State Grid Hunan Provincial Electric Power Company, Changsha, China

Abstract

This research proposes a dynamic reconfiguration model (DRM) and method for the distribution network, considering wind power, photovoltaic distributed generation (DG), and demand-side response. The reconfiguration goal is to minimize the total operating cost of the distribution network. The electricity purchase costs, DG operation costs, participation in demand response programs, network losses, and voltage deviations are selected to construct the optimization function. The DRM is established by clustered load data segments. An improved backtracking search algorithm incorporating a differential evolution learning strategy and adaptive chaotic elite search strategy is adopted to solve the DRM. The viability of the proposed method is validated by an IEEE 30-node simulation distributed system.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference31 articles.

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