Reinforcement Learning Techniques in Optimizing Energy Systems

Author:

Stavrev Stefan1ORCID,Ginchev Dimitar2ORCID

Affiliation:

1. Department of Software Technologies, Faculty of Mathematics and Informatics, Plovdiv University “Paisii Hilendarski”, 4000 Plovdiv, Bulgaria

2. Department of Air Transport, Faculty of Transport, Technical University of Sofia, 1000 Sofia, Bulgaria

Abstract

Reinforcement learning (RL) techniques have emerged as powerful tools for optimizing energy systems, offering the potential to enhance efficiency, reliability, and sustainability. This review paper provides a comprehensive examination of the applications of RL in the field of energy system optimization, spanning various domains such as energy management, grid control, and renewable energy integration. Beginning with an overview of RL fundamentals, the paper explores recent advancements in RL algorithms and their adaptation to address the unique challenges of energy system optimization. Case studies and real-world applications demonstrate the efficacy of RL-based approaches in improving energy efficiency, reducing costs, and mitigating environmental impacts. Furthermore, the paper discusses future directions and challenges, including scalability, interpretability, and integration with domain knowledge. By synthesizing the latest research findings and identifying key areas for further investigation, this paper aims to inform and inspire future research endeavors in the intersection of reinforcement learning and energy system optimization.

Funder

Research and Development Sector at the Technical University of Sofia

Publisher

MDPI AG

Reference40 articles.

1. Sutton, R.S., and Barto, A.G. (2018). Reinforcement Learning: An Introduction, MIT Press.

2. Sammut, C., and Webb, G.I. (2011). Encyclopedia of Machine Learning, Springer.

3. Liu, Y., Swaminathan, A., and Liu, Z. (August, January 28). Deep Dyna-Q: Integrating Planning for Task-Completion Dialogue Policy Learning. Proceedings of the 57th Annual Meeting of the Association for Computational Linguistics, Florence, Italy.

4. When to Trust Your Model: Model-Based Policy Optimization;Janner;Adv. Neural Inf. Process. Syst.,2019

5. Reinforcement learning in sustainable energy and electric systems: A survey;Yang;Annu. Rev. Control,2020

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