Short-term Forecast of Hourly Electricity Demand in Iran Using a Forecast Combination Method

S. F. F. Ardestani, S. M. Barakchian, Hamideh Shokoohian
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Abstract

The aim of this study is to present two time-series forecasting models and combine these models to provide a short-term prediction for hourly electricity demand, using daily electricity consumption data for the period 2006-2011. The first model is based on the decomposition of the electricity load into deterministic and stochastic components and the second model is based on the assumption that the electricity load is a stochastic time series. Once the hourly demand for electricity load is predicted using the above-mentioned models, the performance of the combined model is compared with the two time-series models and also with the dispatching unit model (a multi-variable model in which the weather variable is also included). The results show that the use of the combined model leads to an increase in prediction accuracy over the two time-series models. Moreover, the accuracy of the combined model is as good as the dispatching unit model for most of the time during the day, and even better during the consumption peak hours.
基于预测组合法的伊朗小时电力需求短期预测
本研究的目的是提出两个时间序列预测模型,并结合这些模型,以2006-2011年期间的每日用电量数据,提供每小时电力需求的短期预测。第一个模型是基于将电力负荷分解为确定性和随机分量,第二个模型是基于假设电力负荷是随机时间序列。使用上述模型预测电力负荷小时需求后,将组合模型的性能与两个时间序列模型以及调度单元模型(也包括天气变量的多变量模型)进行比较。结果表明,与两种时间序列模型相比,使用组合模型可以提高预测精度。此外,在白天的大部分时间内,组合模型的精度与调度单元模型相当,在用电高峰时段甚至更好。
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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