k-Means Partition of Monthly Average Insolation Period Data for Turkey

M. Yesilbudak, I. Colak, R. Bayindir
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引用次数: 3

Abstract

Solar power penetration has made the site-specific energy ratings an essential necessity for utilities, independent systems operators and regional transmission organizations. Since, it leads to the reliable and efficient energy production with the increased levels of solar power integration. This study concentrates on the partitional clustering analysis of monthly average insolation period data for the 75 provinces in Turkey. Together with the k-means clustering algorithm, we use Pearson Correlation, Cosine, Squared Euclidean and City-Block distance measures for the high-dimensional neighborhood measurement and utilize the silhouette width for validating the achieved clustering results. In consequence of comparing the star glyph plots with the k-means clustering results, the most productive and the most unfavorable places among all provinces are mined on the basis of monthly average insolation period.
土耳其月平均日照期数据的k-Means分割
太阳能的渗透使得特定地点的能源等级对公用事业、独立系统运营商和区域输电组织来说是必不可少的。因此,随着太阳能集成水平的提高,它将导致可靠和高效的能源生产。本研究对土耳其75个省的月平均日照期数据进行了分区聚类分析。结合k-means聚类算法,我们使用Pearson Correlation、Cosine、Squared Euclidean和City-Block距离度量进行高维邻域度量,并利用轮廓宽度验证获得的聚类结果。将星形图与k-means聚类结果进行比较,根据月平均日照时间挖掘出各省中最高产和最不利的地方。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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