Micro-Spatial Electricity Load Forecasting Using Clustering Technique

Christine Widyastuti, A. Senen, Oktaria Handayani
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引用次数: 3

Abstract

Low growth of electricity load forecast eliminates cost opportunity of electricity sale due to unserviceable load demands. Meanwhile, if it is exorbitant, it will cause over-investment and incriminate investment cost. Existing method of sector load is simplified and easy to implement. However, the accuracy tends to bias over one area of which data is limited and dynamic service area. Besides, the results of its forecast is macro-based, which means it is unable to show load centers in micro grids and failed to locate the distribution station. Therefore, we need micro-spatial load forecasting. By using micro-spatial load forecast, the extrapolated areas are grouped into grids. Clustering analysis is used for grouping the grids. It generates similarity matrix of similar data group. Clustering involves factors causing load growth at each grid; geography, demography, socio- economic, and electricity load per sector. Results of every cluster consist of different regional characteristics, which later the load growth is projected as to obtain more accurate forecast.
基于聚类技术的微空间电力负荷预测
电力负荷预测的低增长消除了电力销售的成本机会,因为无法满足负荷需求。同时,如果过高,则会造成过度投资,增加投资成本。现有扇区加载方法简化,易于实现。然而,在数据有限的一个区域和动态服务区域,精度往往会出现偏差。此外,其预测结果是基于宏观的,这意味着它无法显示微电网的负荷中心,也无法定位配电站。因此,需要进行微空间负荷预测。通过微空间负荷预测,将外推区域划分为网格。采用聚类分析对网格进行分组。生成相似数据组的相似度矩阵。聚类涉及导致每个网格负载增长的因素;地理、人口、社会经济、各部门电力负荷。每个集群的结果包含不同的区域特征,然后对负荷增长进行预测,以获得更准确的预测。
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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