比较季节自回归综合移动平均(SARIMA)各种组合技术在电力负荷预测中的应用

Mega Silfiani, Happy Aprillia, Yustina Fitriani
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引用次数: 1

摘要

本研究的目的是探讨在季节自回归综合移动平均(SARIMA)集合下使用各种组合技术预测用电量的准确性。通过对各种SARIMA模型建模,并结合算术平均、Bates-Granger权重、Akaike权重和主成分回归(PCR)权重等技术,创建了SARIMA集合。结果表明,SARIMA基于集合的PCR在分类和预测范围上都优于所有其他模型。总体而言,贝茨-格兰杰集成模型的性能优于赤池加权平均集成模型。同时,基于赤池权值和平均的集成模型具有相同的性能。此外,公共电力负荷预测在预测范围和各种模型中表现最好。一般来说,家庭和电力工业负荷在预测范围前3个月和12个月的表现相同。进一步的研究应该探索由集成成员实现的各种构建和组合技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing Various Combined Techniques at Seasonal Autoregressive Integrated Moving Average (SARIMA) for Electrical Load Forecasting
The objective of this study is to investigate the accuracy of forecasting electrical consumption using various combined techniques at the seasonal autoregressive integrated moving average (SARIMA) ensemble. A SARIMA ensemble is created by modeling various SARIMA models and combining techniques such as arithmetic averaging, Bates-Granger weight, Akaike weight, and Principal Component Regression (PCR) weight. Results indicate that SARIMA’s ensemble-based PCR outperformed all the remaining models in both categories and forecast horizons. In general, ensemble models produced by Bates–Granger perform better than ensemble models produced by Akaike weight and averaging. Meanwhile, an ensemble model based on Akaike weight and averaging have equal performance. In addition, the public electrical load forecast has the best performance in forecast horizon and various models. Generally, household and electrical industry loads have equal performance three months ahead and twelve months ahead of the forecast horizon. A further investigation ought to explore the various construction and combination techniques implemented by ensemble members.
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