基于智能电表数据的配电网负荷需求分层预测

Omar Rivera-Caballero, Alberto Cogley, M. Rios, Jenifer González, Carlos Boya-Lara
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引用次数: 0

摘要

在现代配电网中,负荷预测是储能系统和分布式能源等技术应用的一项重要任务。然而,由于配电系统运行的可变性,这些技术会增加配电系统运行的复杂性。因此,准确的负荷预测是必要的,这将需要使用公用事业公司在所有电压水平下持有的所有可用数据。从这个意义上说,在配电系统中创建了一个分层结构,其中智能电表允许获取粒度数据。在本文中,我们提出了分层时间序列的方法,使用不同的预测模型来预测一次变电站一小时前的负荷需求。为了评估预测模型的性能,使用了平均绝对百分比误差(MAPE)指标。在这种情况下,自下而上的方法被用于在顶层进行预测。预测结果表明,采用层次结构的预测模型具有较好的预测效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical Forecasting of Load Demand With Smart Meter Data for Distribution Networks
Load forecasting is an essential task for the use of technologies such as energy storage systems and distributed energy resources in modern distribution networks. However, these technologies can increase the complexity of the operation of the distribution system due to the variability of its operation. Therefore, accurate load forecasting is necessary, and this will require the use of all available data held by the utility at all voltage levels. In this sense, a hierarchical structure is created in distribution systems, where smart meters allow obtaining granular data. In this paper, we present the hierarchical time series approach using different forecasting models to predict the load demand of a primary substation one hour ahead. To evaluate the performance of forecasting models, the Mean Absolute Percentage Error (MAPE) indicator is used. In this case, the bottom-up approach is used to forecast at the top level. The forecast results reveal that the hierarchical structure provides better performance with the forecast models employed.
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