基于光伏装机容量对配电馈线进行分组的聚类方法的准确性

R. Broderick, Karina Muñoz-Ramos, M. Reno
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引用次数: 6

摘要

本文考察了聚类技术预测主机容量的准确性。使用集群技术,使用214个研究馈线的托管容量结果来预测另外7929个馈线的托管容量范围。为了提高预测主机容量的准确性,研究了几种方法,包括增加集群的数量,选择与集群的主机容量高度相关的变量,以及对高度相关的集群变量进行加权。使用平均归一化四分位间距(ANIQR)来比较几种聚类方法预测主机容量的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accuracy of clustering as a method to group distribution feeders by PV hosting capacity
This paper examines the accuracy of clustering techniques for predicting hosting capacity. Hosting capacity results for 214 study feeders were used to predict a range of hosting capacities for an addition 7929 feeders using clustering techniques. Several methods were explored to try to improve the accuracy for predicting hosting capacity, including increasing the number of clusters, selecting variables that are highly correlated to hosting capacity for clustering, and weighting highly correlated clustering variables. The average normalized interquartile range (ANIQR) is used to compare the accuracy of several clustering methods for predicting hosting capacity.
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