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Multi-objective Expansion Planning of Electrical Distribution Networks Using Comprehensive Learning Particle Swarm Optimization

机译:采用全面学习粒子群优化的电气配电网络多目标扩展规划

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In this paper, a Pareto-based multi-objective optimization algorithm using Comprehensive Learning Particle Swarm Optimization (CLPSO) is proposed for ex-pansion planning of electrical distribution networks. The two conflicting objectives are: installation and operational cost, and fault/failure cost. A novel cost-biased par-ticle encoding/decoding scheme, along with heuristics-based conductor size selec-tion, for CLPSO is proposed to obtain optimum network topology. Simultaneous optimization of network topology, reserve-branch installation and conductor sizes are the key features of the proposed algorithm. A set of non-dominated solutions, capable of providing the utility with enough design choices, can he obtained by this planning algorithm. Results on a practical power system are presented along with statistical hypothesis tests to validate the proposed algorithm.
机译:本文提出了一种基于帕累托的多目标优化算法,采用综合学习粒子群优化(CLPSO)进行电气配电网络的前趋势规划。两个相互矛盾的目标是:安装和运营成本,以及故障/故障成本。提出了一种新的成本偏置的PAR-TICE编码/解码方案,以及基于启发式的导体尺寸选择,用于CLPSO,以获得最佳的网络拓扑。同时优化网络拓扑,储备分支机构和导体尺寸是所提出的算法的关键特征。一组非主导的解决方案,能够提供足够的设计选择的实用性,他可以通过该规划算法获得。在实际电力系统上呈现出统计假设试验的结果,以验证所提出的算法。

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