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Optimization of UPFCs using hierarchical multi-objective optimization algorithms

机译:使用分层多目标优化算法优化UPFC

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摘要

Optimal location, number, and settings of unified power flow controllers (UPFC) using various multi-objective optimization algorithms is presented in this paper. The UPFC parameters, locations and number are computed to maximize the voltage stability margin and minimize the real power losses at the same time. For this, developed hierarchical optimization versions of three recent multi-objective algorithms are proposed namely: non-dominated genetic algorithms (NSGA-II), non-dominated sorting particle swarm optimization (NSPSO) and Strength Pareto Evolutionary Algorithm 2 (SPEA2). The fuzzy logic is proposed to extract the best compromise solution from the Pareto set. The proposed algorithms are applied to IEEE 30-bus power system. The line flow and load bus voltage limits are taken into account. The obtained results show that the installation of the UPFC in the power system minimizes the power losses, enhances the static voltage stability, and improves the voltage profiles. Furthermore, the proposed methods are able to solve a hard discrete–continuous constrained multi-objective optimization problem. In addition, they do not show any limitation on the number of objective functions under consideration.
机译:本文提出了使用各种多目标优化算法的统一潮流控制器(UPFC)的最佳位置,数量和设置。计算UPFC参数,位置和数量以同时最大化电压稳定裕度和最小化实际功率损耗。为此,提出了三种最新的多目标算法的已开发的分层优化版本,即:非支配遗传算法(NSGA-II),非支配排序粒子群优化(NSPSO)和强度帕累托进化算法2(SPEA2)。提出了模糊逻辑以从帕累托集合中提取最佳折衷解。所提出的算法被应用于IEEE 30总线电源系统。考虑了线路流量和负载总线电压限制。获得的结果表明,在电源系统中安装UPFC可以最大程度地减少功率损耗,增强静态电压稳定性,并改善电压分布。此外,所提出的方法能够解决硬离散-连续约束多目标优化问题。此外,它们对所考虑的目标函数的数量没有任何限制。

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