用非序贯蒙特卡罗模拟进行电网充分性研究的最佳风聚类方法

F. Vallée, G. Brunieau, M. Pirlot, O. Deblecker, J. Lobry
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引用次数: 2

摘要

本文研究了几种聚类方法,以便将具有相近统计行为的风电场聚在一起。该方法实际上建立在一种快速增量算法的基础上。后者需要一个目标函数的定义,在本例中是基于皮尔逊相关系数水平的定义。这种聚类方法的优势主要体现在风穿透度增加的大型电气系统中。事实上,它允许将高度相关的风电场组合到同一个集群中,并以一种现实的方式将它们整合到一个非顺序的蒙特卡洛充分性评估过程中。在这里,提出的聚类方法应用于位于西欧的94个风力站点。然后,为了从风速采样的角度指出所提出的聚类方法的有效性,在单个风簇的特定情况下,对罗伊比林顿测试系统进行了充分性研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal wind clustering methodology for electrical network adequacy studies using non sequential Monte Carlo simulation
In this paper, several clustering methodologies are investigated in order to group together wind parks with close statistical behaviour. The proposed approach is practically founded on a fast incremental algorithm. The latter requires the definition of an objective function which is based in the present case on the definition of a Pearson correlation coefficient level. The advantage of such a clustering methodology is mainly perceptible in large scale electrical systems with increased wind penetration. Indeed, it allows to group together highly correlated wind parks into the same cluster and to integrate them in a realistic way into a non sequential Monte Carlo adequacy evaluation process. Here, the proposed clustering methodology is applied to 94 wind sites located in Occidental Europe. Then, in order to point out the efficiency of the proposed clustering methodology from the wind speed sampling point of view, an adequacy study is applied to the Roy Billinton Test System in the particular case of a single wind cluster.
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