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Mono- and multi-objective planning of electrical distribution networks using particle swarm optimization

机译:基于粒子群算法的配电网单目标和多目标规划

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This paper presents a comprehensive study on mono- and multi-objective approaches for electrical distribution network design using particle swarm optimization (PSO). Specifically, two distribution network design problems, i.e., static and expansion planning, are solved using PSO. The network planning involves optimization of both network topology and branch conductor sizes. Both the planning problems are used to illustrate mono- and multi-objective optimization of distribution networks. Firstly, three PSO variants, i.e., PSO with inertia weight (PSO-IW), PSO with constriction factor (PSO-CF), and comprehensive learning PSO, are evaluated on a mono-objective (minimization of total cost of installation and energy loss) static planning problem. A novel encoding/decoding technique is devised to represent the network as a particle in PSO. Also, a heuristics based branch conductor size selection algorithm has been developed and used. Statistical tests performed to compare the performances of the three PSO variants reveal that the PSO-CF exhibits relatively better performance. Subsequently, the PSO-CF is applied for mono-objective expansion planning and multi-objective static and expansion planning problems. In the multi-objective planning with two conflicting objectives (total cost of installation and energy loss, and total non-delivered energy), the Pareto-optimality principle based tradeoff is done using the strength Pareto evolutionary algorithm-2. The efficiency of PSO for distribution system planning problem, in general, is demonstrated through different examples.
机译:本文对使用粒子群优化(PSO)的配电网络设计的单目标和多目标方法进行了全面的研究。具体而言,使用PSO解决了两个配电网络设计问题,即静态和扩展计划。网络规划涉及网络拓扑和分支导体尺寸的优化。这两个规划问题都用于说明配电网络的单目标和多目标优化。首先,以单目标(最小化安装总成本和能源损失)评估三种PSO变体,即具有惯性权重的PSO(PSO-IW),具有收缩因子的PSO(PSO-CF)和全面学习的PSO。 )静态规划问题。设计了一种新颖的编码/解码技术,将网络表示为PSO中的粒子。而且,已经开发并使用了基于启发式的分支导体尺寸选择算法。为了比较这三种PSO变体的性能而进行的统计测试表明,PSO-CF表现出相对更好的性能。随后,将PSO-CF应用于单目标扩展计划以及多目标静态和扩展计划问题。在具有两个相互冲突的目标(安装和能量损失的总成本以及未交付的总能量)的多目标规划中,使用强度帕累托进化算法2进行了基于帕累托最优性原则的折衷。通常,通过不同的示例来证明PSO在配电系统规划问题中的效率。

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