LAPSE:2023.24164
Published Article

LAPSE:2023.24164
Predictive Trading Strategy for Physical Electricity Futures
March 27, 2023
Abstract
This article presents an original predictive strategy, based on a new mid-term forecasting model, to be used for trading physical electricity futures. The forecasting model is used to predict the average spot price, which is used to estimate the Risk Premium corresponding to electricity futures trade operations with a physical delivery. A feed-forward neural network trained with the extreme learning machine algorithm is used as the initial implementation of the forecasting model. The predictive strategy and the forecasting model only need information available from electricity derivatives and spot markets at the time of negotiation. In this paper, the predictive trading strategy has been applied successfully to the Iberian Electricity Market (MIBEL). The forecasting model was applied for the six types of maturities available for monthly futures in the MIBEL, from 1 to 6 months ahead. The forecasting model was trained with MIBEL price data corresponding to 44 months and the performances of the forecasting model and of the predictive strategy were tested with data corresponding to a further 12 months. Furthermore, a simpler forecasting model and three benchmark trading strategies are also presented and evaluated using the Risk Premium in the testing period, for comparative purposes. The results prove the advantages of the predictive strategy, even using the simpler forecasting model, which showed improvements over the conventional benchmark trading strategy, evincing an interesting hedging potential for electricity futures trading.
This article presents an original predictive strategy, based on a new mid-term forecasting model, to be used for trading physical electricity futures. The forecasting model is used to predict the average spot price, which is used to estimate the Risk Premium corresponding to electricity futures trade operations with a physical delivery. A feed-forward neural network trained with the extreme learning machine algorithm is used as the initial implementation of the forecasting model. The predictive strategy and the forecasting model only need information available from electricity derivatives and spot markets at the time of negotiation. In this paper, the predictive trading strategy has been applied successfully to the Iberian Electricity Market (MIBEL). The forecasting model was applied for the six types of maturities available for monthly futures in the MIBEL, from 1 to 6 months ahead. The forecasting model was trained with MIBEL price data corresponding to 44 months and the performances of the forecasting model and of the predictive strategy were tested with data corresponding to a further 12 months. Furthermore, a simpler forecasting model and three benchmark trading strategies are also presented and evaluated using the Risk Premium in the testing period, for comparative purposes. The results prove the advantages of the predictive strategy, even using the simpler forecasting model, which showed improvements over the conventional benchmark trading strategy, evincing an interesting hedging potential for electricity futures trading.
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Keywords
electricity markets, electricity price forecasting, energy trading, mid-term forecasting
Subject
Suggested Citation
Monteiro C, Fernandez-Jimenez LA, Ramirez-Rosado IJ. Predictive Trading Strategy for Physical Electricity Futures. (2023). LAPSE:2023.24164
Author Affiliations
Monteiro C: Department of Electrical and Computer Engineering, Faculty of Engineering, University of Porto, 4200-465 Porto, Portugal
Fernandez-Jimenez LA: Electrical Engineering Department, University of La Rioja, 26004 LogroƱo, Spain [ORCID]
Ramirez-Rosado IJ: Electrical Engineering Department, University of Zaragoza, 50018 Zaragoza, Spain
Fernandez-Jimenez LA: Electrical Engineering Department, University of La Rioja, 26004 LogroƱo, Spain [ORCID]
Ramirez-Rosado IJ: Electrical Engineering Department, University of Zaragoza, 50018 Zaragoza, Spain
Journal Name
Energies
Volume
13
Issue
14
Article Number
E3555
Year
2020
Publication Date
2020-07-10
ISSN
1996-1073
Version Comments
Original Submission
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PII: en13143555, Publication Type: Journal Article
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LAPSE:2023.24164
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https://doi.org/10.3390/en13143555
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Mar 27, 2023
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