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Simple heuristics-based selection of guides for multi-objective PSO with an application to electrical distribution system planning

机译:基于简单启发式的多目标PSO指南选择及其在配电系统规划中的应用

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In multi-objective particle swarm optimization (MOPSO), a proper selection of local guides significantly influences detection of non-dominated solutions in the objective/solution space and, hence, the convergence characteristics towards the Pareto-optimal set. This paper presents an algorithm based on simple heuristics for selection of local guides in MOPSO, named as HSC-MOPSO (Heuristics-based-Selection-of-Guides in MOPSO). In the HSG-MOPSO, the set of potential guides (in a PSO iteration) consists of the non-dominated solutions (which are normally stored in an elite archive) and some specifically chosen dominated solutions. Thus, there are two types of local guides in the HSG-MOPSO, i.e., non-dominated and dominated guides; they are named so as to signify whether the chosen guide is a non-dominated or a dominated solution. In any iteration, a guide, from the set of available guides, is suitably selected for each population member. Some specified proportion of the current population members follow their respective nearest non-dominated guides and the rest follow their respective nearest dominated guides. The proposed HSG-MOPSO is firstly evaluated on a number of multi-objective benchmark problems along with investigations on the controlling parameters of the guide selection algorithm. The performance of the proposed method is compared with those of two well-known guide selection methods for evolutionary multi-objective optimization, namely the Sigma method and the Strength Pareto Evolutionary Algorithm-2 (SPEA2) implemented in PSO framework. Finally, the HSG-MOPSO is evaluated on a more involved real world problem, i.e., multi-objective planning of electrical distribution system. Simulation results are reported and analyzed to illustrate the viability of the proposed guide selection method for MOPSO.
机译:在多目标粒子群优化(MOPSO)中,适当选择局部指导会显着影响目标/解空间中非支配解的检测,因此会影响帕累托最优集的收敛特性。本文提出了一种基于简单启发式算法的MOPSO本地向导选择算法,称为HSC-MOPSO(在MOPSO中基于启发式选择的向导)。在HSG-MOPSO中,潜在指南集(在PSO迭代中)由非主导解决方案(通常存储在精英档案中)和一些特定选择的主导解决方案组成。因此,HSG-MOPSO中有两种本地指南,即非主导指南和主导指南。它们被命名为表示所选指南是非主导解决方案还是主导解决方案。在任何迭代中,都会从可用指南集中为每个人口成员选择一个指南。当前人口中有特定比例的人口遵循各自最近的非主导指南,其余人口遵循各自最近的非主导指南。首先对提出的HSG-MOPSO进行了多目标基准问题评估,并研究了指南选择算法的控制参数。将该方法的性能与两种用于进化多目标优化的著名指南选择方法(即Sigma方法和在PSO框架中实现的强度帕累托进化算法2(SPEA2))的性能进行了比较。最后,对HSG-MOPSO进行了一个更复杂的现实世界问题的评估,即配电系统的多目标规划。报告并分析了仿真结果,以说明所提出的MOPSO指南选择方法的可行性。

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