Short-term load forecasting using regression based moving windows with adjustable window-sizes

D. H. Vu, K. Muttaqi, A. Agalgaonkar
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引用次数: 21

Abstract

This paper presents a regression based moving window model for solving the short-term electricity forecasting problem. Moving window approach is employed to trace the demand pattern based on the past history of load and weather data. Regression equation is then formed and least square method is used to determine the parameters of the model. In this paper, a new concept associated with cooling and heating degree is used to establish the relationship between electricity demand and temperature, which is one of the key climatic variables. In addition, Pearson's correlation has been employed to investigate the interdependency of electricity demand between different time periods. These analyses together with the data in the holiday period provide the supportive information for the appropriate selection of the window size. A case study has been reported in this paper by acquiring the relevant data for the state of New South Wales, Australia. The results are then compared with a neural network based model. The comparison shows that the proposed moving window approach with the different window sizes outperforms conventional neural network technique in small time scales i.e., from 30 minutes to 1 day ahead.
基于可调窗口大小的移动窗口的短期负荷预测
本文提出了一种基于回归的移动窗口模型来解决短期电力预测问题。基于历史负荷和天气数据,采用移动窗口法对需求模式进行跟踪。然后建立回归方程,利用最小二乘法确定模型参数。本文采用与冷热度相关的新概念建立了电力需求与温度的关系,温度是关键的气候变量之一。此外,皮尔逊的相关性已被用于调查电力需求的相互依赖性在不同时期之间。这些分析与假日期间的数据一起为窗口大小的适当选择提供了支持性信息。本文通过获取澳大利亚新南威尔士州的相关数据,报道了一个案例研究。然后将结果与基于神经网络的模型进行比较。对比表明,在30分钟到1天的小时间尺度上,不同窗口大小的移动窗口方法优于传统神经网络技术。
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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