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Oppositional krill herd algorithm for optimal location of distributed generator in radial distribution system

机译:径向分配系统中分布式发电机最优位置的反磷虾群算法

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摘要

Increasing power demand and limited sources of conventional energy enforces the power system network to use sustainable energy sources. Renewable energy sources like biomass, wind and solar cell are the common technologies for sustainable, exhaustless and non-polluting energy. Optimal placement of renewable distributed generator (RDG) is a new challenge for traditional electric power systems. This paper presents, krill herd (KH) algorithm to minimize annual energy losses when different renewable resources are used. Moreover, the opposition-based learning (OBL) concept is integrated in KH algorithm in this article for improving the convergence speed and simulation results of conventional ICH algorithm. In order to show the effectiveness the proposed oppositional krill herd (OKH) algorithm is implemented on 33-bus, 69-bus and 118-bus radial distribution networks to find optimal location and optimal size of RDGs to optimize energy losses. Moreover, to validate the superiority, the proposed OKH algorithm is compared with basic KH algorithm and recently developed analytical approach reported in the literature. It is observed from the test results that the proposed OKH algorithm is more efficient in terms of simulation results of energy loss and convergence property than the other reported algorithms. (C) 2015 Elsevier Ltd. All rights reserved.
机译:电力需求的增加和常规能源的限制迫使电力系统网络使用可持续能源。生物质,风能和太阳能电池等可再生能源是可持续,无尽,无污染的通用技术。可再生分布式发电机(RDG)的优化布置是传统电力系统面临的新挑战。本文提出了一种磷虾群(KH)算法,可在使用不同的可再生资源时最大程度地减少年度能源损失。此外,本文将基于对立学习(OBL)的概念集成到KH算法中,以提高传统ICH算法的收敛速度和仿真结果。为了证明其有效性,在33总线,69总线和118总线的径向配电网络上实施了所提出的对立磷虾种群(OKH)算法,以找到RDG的最佳位置和最佳尺寸来优化能量损失。此外,为了验证其优越性,将提出的OKH算法与基本KH算法进行了比较,并在文献中报道了最近开发的分析方法。从测试结果可以看出,在能量损失和收敛性的仿真结果方面​​,所提出的OKH算法比其他报告算法更有效。 (C)2015 Elsevier Ltd.保留所有权利。

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