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首页> 外文期刊>Renewable & Sustainable Energy Reviews >Multi-objective placement and sizing of DGs in distribution networks ensuring transient stability using hybrid evolutionary algorithm
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Multi-objective placement and sizing of DGs in distribution networks ensuring transient stability using hybrid evolutionary algorithm

机译:分布式电网中DG的多目标放置和大小确定,使用混合进化算法确保瞬态稳定性

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摘要

Distributed generation (DG) units are increasing their popularity around the world. Considering the low inertia constant of DGs, the transient stability of them in the network is one of the major issues. In this paper, a new Pareto-based multi-objective problem is proposed for the placement and sizing of multiple micro-turbines in a distribution network to improve the transient stability index in addition to the losses and voltage profile. To calculate the transient stability index, the rates of fault occurrence in the different locations are considered. Also, the loads are modeled as both constant power and voltage dependent cases. In order to identify Pareto optimal solutions of the optimization problem, a novel hybrid evolutionary algorithm based on the Particle Swarm Optimization (PSO) and Shuffled Frog-Leaping (SFL) algorithm is presented. A 33-bus distribution test system is used to demonstrate the performance of the proposed method in DIgSILENT~® PowerFactory software which can be used for practical applications in power systems.
机译:分布式发电(DG)单元在世界范围内越来越受欢迎。考虑到DG的低惯性常数,它们在网络中的瞬态稳定性是主要问题之一。在本文中,提出了一个新的基于帕累托的多目标问题,用于在配电网中放置和调整多台微型涡轮机的大小,以改善瞬态稳定性指标,并改善损耗和电压分布。为了计算暂态稳定指数,要考虑不同位置的故障发生率。同样,将负载建模为与恒定功率和电压相关的情况。为了确定最优问题的帕累托最优解,提出了一种基于粒子群优化(PSO)和混洗蛙跳(SFL)的混合进化算法。使用33总线配电测试系统在DIgSILENT®PowerFactory软件中演示所建议方法的性能,该软件可用于电力系统的实际应用。

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