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k-means based load estimation of domestic smart meter measurements

机译:基于k均值的家用智能电表测量负荷估算

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摘要

A load estimation algorithm based on kk-means cluster analysis was developed. The algorithm applies cluster centres – of previously clustered load profiles – and distance functions to estimate missing and future measurements. Canberra, Manhattan, Euclidean, and Pearson correlation distances were investigated. Several case studies were implemented using daily and segmented load profiles of aggregated smart meters. Segmented profiles cover a time window that is less than or equal to 24 h. Simulation results show that Canberra distance outperforms the other distance functions. Results also show that the segmented cluster centres produce more accurate load estimates than daily cluster centres. Higher accuracy estimates were obtained with cluster centres in the range of 16–24 h. The developed load estimation algorithm can be integrated with state estimation or other network operational tools to enable better monitoring and control of distribution networks.
机译:提出了一种基于kk均值聚类分析的负荷估计算法。该算法将聚类中心(以前聚类的负载曲线)和距离函数应用于估计缺失和将来的测量值。研究了堪培拉,曼哈顿,欧几里得和皮尔逊的相关距离。使用汇总的智能电表的每日和分段负载曲线实施了一些案例研究。分段的配置文件覆盖的时间窗口小于或等于24小时。仿真结果表明,堪培拉距离优于其他距离函数。结果还显示,分段式集群中心比每日集群中心产生更准确的负载估计。聚类中心在16–24 h范围内可获得更高的准确性估计。可以将开发的负载估算算法与状态估算或其他网络操作工具集成在一起,以更好地监视和控制配电网络。

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