A Novel Method for Active Distribution Network Loss Minimization with Brain-Storm-Optimization-Based Robust Optimization.

Yusuke Kawauchi,Hiroyuki Mori

2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC)(2023)

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摘要
In this paper, a new method is proposed to minimize network losses in active distribution networks (ADNs). In recent years, studies on ADNs have been prevalent because of the emergence of distributed energy resources (DERs) such as Photovoltaic (PV) systems, wind power generation, etc. One of the challenges is how to handle the uncertainties of such renewables affected by weather conditions. This paper proposes an Evolutionary-Computation (EC)-based Robust Optimization (RO) method for minimizing the network losses in ADN s. This paper aims at reducing the risks of the obtained solutions in ADNs with parameter uncertainties in nonlinear combinatorial optimization problems. RO evaluates feasible solutions by considering the worst scenario through data sampling while EC works to evaluate better solutions that escape from local minima. As a method of EC, this paper makes use of Brain Storm Optimization (BSO) to obtain better solutions. It plays a key role to separate solution candidates into several clusters to evaluate better solutions by selecting one of four rules randomly. The effectiveness of the proposed method is demonstrated in the IEEE 69-node distribution network.
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关键词
Distribution Network,Minimum Method,Network Loss,Robust Optimization,Active Distribution Networks,Optimization Problem,Optimization Method,Nonlinear Problem,Parameter Uncertainty,Nonlinear Programming,Combinatorial Problem,Photovoltaic System,Candidate Solutions,Combinatorial Optimization Problem,Nonlinear Optimization Problem,Distributed Energy Resources,Wind Power Generation,Control Variables,Cost Function,Capacitor Bank,Active Power Flow,First Quartile,Distribution System Operator,Apparent Power,Power Flow Equations,Stage Of Research,Swarm Intelligence,Third Quartile,Discrete Number
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