基于遗传算法的配电网分布式发电优化分配与规模研究

H. Talaat, E. Al-Ammar
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引用次数: 32

摘要

本文研究了配电网中分布式发电(DG)集成的优化问题。为了最大限度地降低系统的功率损耗,开发了三种遗传算法(GAs)。第一遗传算法使DG单元的最佳尺寸给定其位置。或者,第二个遗传算法在假设DG单元大小相等的情况下确定DG单元的最佳位置。第三种遗传算法能够确定离散值的最佳尺寸和最佳位置。结果表明,所提出的遗传算法能够有效地确定DG单元的最优渗透水平、最优位置和最优尺寸,从而使系统损失最小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal allocation and sizing of Distributed Generation in distribution networks using Genetic Algorithms
This paper addresses the optimization problem of integration of Distributed Generation (DG) in distribution networks. Three Genetic Algorithms (GAs) have been developed to minimize the power losses of the system. The First GA enables the optimal sizing of the DG units given their locations. Alternatively, the second GA determines the optimal locations of the DG units assuming equal sizes of the units. The third GA enables the determination of both optimal sizes, on discrete values, and optimal locations. The results prove the effectiveness of the developed genetic algorithms in finding the optimal penetration level and optimal locations and sizes of the DG units to yield minimum losses of the system.
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