短期和中期电力现货价格预测的极限学习机

I. M. Teixeira, A. P. Barroso, T. Marques
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引用次数: 2

摘要

在解除管制的电力市场中,市场参与者定义交易策略和模型以协助决策过程。经营严重依赖该市场的公司越来越多地采用电价预测模型,以确定最优价格的销售和购买合同。本文旨在为改善伊比利亚电力市场的购电决策过程做出贡献。目的是建立一个基于衍生品市场价格的电力现货价格预测模型。该模型使用经过极限学习机算法训练的人工神经网络来确定未来六个月的月平均现货价格,并为考虑现货市场波动风险的交易决策提供工具。该预测模型应用于两种情景:大流行前和大流行。结果表明,该模型的应用有助于改善中短期电力交易决策。考虑两种情况的实验结果表明,该模型可以提供一个月前的预测,RMSE高达6.38€/MWh。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extreme Learning Machine for Short and Mid-term Electricity Spot Prices Forecasting
In a deregulated electricity market, market participants define trading strategies and models to assist the decision-making process. Companies whose operation is heavily dependent on this market are increasingly adopting electricity price forecasting models to identify sales and purchase contracts with the best price. This paper intends to contribute to the improvement of the decision-making process for purchasing electricity in the Iberian Electricity Market. The purpose is to develop a forecasting model for electricity spot prices based on prices established on the derivatives markets. The model uses Artificial Neural Networks trained with the Extreme Learning Machine algorithm to determine the monthly average spot prices for the next six months and provides a tool for making trading decisions considering the risk of exposure to spot market volatility. The forecasting model was applied in two scenarios: pre-pandemic and pandemic. The results prove that its application can contribute to improving decision-making for trading electricity in the short/medium term. Experimental results considering both scenarios show that the proposed model can provide month-ahead forecasts with an RMSE up to 6.38 €/MWh.
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