考虑油气价格影响的支持向量机电价预测

Ali Shiri, M. Afshar, A. Rahimi-Kian, B. Maham
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引用次数: 41

摘要

准确的电价预测是电力市场参与者制定合理竞争策略的重要决策环节之一。支持向量机(SVM)是一种基于预测建模方法的新型算法,是机器学习和数据挖掘领域中一种强大的分类方法。基于支持向量机和非支持向量机的电价模型大多忽略了电价动态中的其他重要因素,只考虑历史电价建立电价模型;然而,电价与石油和天然气价格等其他变量有很强的相关性。本文采用单一支持向量机模型,将多个影响变量组合为1-德国历史电价- 2-GASPOOL价格作为第一天然气参考价格- 3-德国净连接(NCG)价格作为第二天然气参考价格- 4-西德克萨斯中质原油(WTI)每日价格作为美国石油基准。仿真结果表明,与单纯基于历史电价的支持向量机模型相比,利用石油和天然气价格可以提高支持向量机模型的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Electricity price forecasting using Support Vector Machines by considering oil and natural gas price impacts
Accurate electricity price prediction is one of the most important parts of decision making for electricity market participants to make reasonable competing strategies. Support Vector Machine (SVM) is a novel algorithm based on a predictive modeling method and a powerful classification method in machine learning and data mining. Most of SVM-based and non-SVM-based models ignore other important factors in the electricity price dynamics and electricity price models are built regard to just historical electricity prices; However, electricity price has a strong correlation with other variables like oil and natural gas price. In this paper, single SVM model is used to combine diverse influential variables as 1-Historical Electricity Price of Germany 2-GASPOOL price as first natural gas reference price 3-Net-Connect-Germany (NCG) price as second natural gas reference price 4- West Texas Intermediate (WTI) daily price as US oil benchmark. The simulation results show that using oil and natural gas prices can improve SVM model prediction ability compared to the SVM models built on mere historical electricity price.
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