Reinforcement Learning in Energy Finance: A Comprehensive Review

The accelerating energy transition, coupled with increasing market volatility and computational advances, has created an urgent need for sophisticated decision-making tools that can address the unique challenges of energy finance—a gap that reinforcement learning methodologies are uniquely positione...

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Main Author: Spyros Giannelos
Format: Article
Language:English
Published: MDPI AG 2025-05-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/18/11/2712
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author Spyros Giannelos
author_facet Spyros Giannelos
author_sort Spyros Giannelos
collection DOAJ
description The accelerating energy transition, coupled with increasing market volatility and computational advances, has created an urgent need for sophisticated decision-making tools that can address the unique challenges of energy finance—a gap that reinforcement learning methodologies are uniquely positioned to fill. This paper provides a comprehensive review of the application of reinforcement learning (RL) in energy finance, with a particular focus on option value and risk management. Energy markets present unique challenges due to their complex price dynamics, seasonality patterns, regulatory constraints, and the physical nature of energy commodities. Traditional financial modeling approaches often struggle to capture these intricacies adequately. Reinforcement learning, with its ability to learn optimal decision policies through interaction with complex environments, has emerged as a promising alternative methodology. This review examines the theoretical foundations of RL in financial applications, surveys recent literature on RL implementations in energy markets, and critically analyzes the strengths and limitations of these approaches. We explore applications ranging from electricity price forecasting and optimal trading strategies to option valuation, including real options and products common in energy markets. The paper concludes by identifying current challenges and promising directions for future research in this rapidly evolving field.
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spelling doaj-art-97ba01d204db4f6e80e78aae2e0aa8a52025-08-20T02:33:11ZengMDPI AGEnergies1996-10732025-05-011811271210.3390/en18112712Reinforcement Learning in Energy Finance: A Comprehensive ReviewSpyros Giannelos0Department of Electrical and Electronic Engineering, Imperial College London, London SW7 2AZ, UKThe accelerating energy transition, coupled with increasing market volatility and computational advances, has created an urgent need for sophisticated decision-making tools that can address the unique challenges of energy finance—a gap that reinforcement learning methodologies are uniquely positioned to fill. This paper provides a comprehensive review of the application of reinforcement learning (RL) in energy finance, with a particular focus on option value and risk management. Energy markets present unique challenges due to their complex price dynamics, seasonality patterns, regulatory constraints, and the physical nature of energy commodities. Traditional financial modeling approaches often struggle to capture these intricacies adequately. Reinforcement learning, with its ability to learn optimal decision policies through interaction with complex environments, has emerged as a promising alternative methodology. This review examines the theoretical foundations of RL in financial applications, surveys recent literature on RL implementations in energy markets, and critically analyzes the strengths and limitations of these approaches. We explore applications ranging from electricity price forecasting and optimal trading strategies to option valuation, including real options and products common in energy markets. The paper concludes by identifying current challenges and promising directions for future research in this rapidly evolving field.https://www.mdpi.com/1996-1073/18/11/2712reinforcement learningenergy financeoption valuestochastic optimizationmachine learningrisk management
spellingShingle Spyros Giannelos
Reinforcement Learning in Energy Finance: A Comprehensive Review
Energies
reinforcement learning
energy finance
option value
stochastic optimization
machine learning
risk management
title Reinforcement Learning in Energy Finance: A Comprehensive Review
title_full Reinforcement Learning in Energy Finance: A Comprehensive Review
title_fullStr Reinforcement Learning in Energy Finance: A Comprehensive Review
title_full_unstemmed Reinforcement Learning in Energy Finance: A Comprehensive Review
title_short Reinforcement Learning in Energy Finance: A Comprehensive Review
title_sort reinforcement learning in energy finance a comprehensive review
topic reinforcement learning
energy finance
option value
stochastic optimization
machine learning
risk management
url https://www.mdpi.com/1996-1073/18/11/2712
work_keys_str_mv AT spyrosgiannelos reinforcementlearninginenergyfinanceacomprehensivereview