An adaptive safety layer with hard constraints for safe reinforcement learning in multi-energy management systems

G Ceusters, MA Putratama, R Franke, A Nowé… - … Energy, Grids and …, 2023 - Elsevier
Safe reinforcement learning (RL) with hard constraint guarantees is a promising optimal
control direction for multi-energy management systems. It only requires the environment …

[HTML][HTML] Safe reinforcement learning for multi-energy management systems with known constraint functions

G Ceusters, LR Camargo, R Franke, A Nowé… - Energy and AI, 2023 - Elsevier
Reinforcement learning (RL) is a promising optimal control technique for multi-energy
management systems. It does not require a model a priori-reducing the upfront and ongoing …

[HTML][HTML] Applications of reinforcement learning in energy systems

ATD Perera, P Kamalaruban - Renewable and Sustainable Energy …, 2021 - Elsevier
Energy systems undergo major transitions to facilitate the large-scale penetration of
renewable energy technologies and improve efficiencies, leading to the integration of many …

Model-predictive control and reinforcement learning in multi-energy system case studies

G Ceusters, RC Rodríguez, AB García, R Franke… - Applied Energy, 2021 - Elsevier
Abstract Model predictive control (MPC) offers an optimal control technique to establish and
ensure that the total operation cost of multi-energy systems remains at a minimum while …

[HTML][HTML] Towards Pareto-optimal energy management in integrated energy systems: A multi-agent and multi-objective deep reinforcement learning approach

J Dou, X Wang, Z Liu, Q Sun, X Wang, J He - International Journal of …, 2024 - Elsevier
Abstract Deep Reinforcement Learning (DRL) is effective in solving complex, non-linear
optimization problems, which is particularly relevant in energy management within …

Multi-agent hierarchical reinforcement learning for energy management

I Jendoubi, F Bouffard - Applied Energy, 2023 - Elsevier
The increasingly complex energy systems are turning the attention towards model-free
control approaches such as reinforcement learning (RL). This work proposes novel RL …

Computationally efficient safe reinforcement learning for power systems

D Tabas, B Zhang - 2022 American Control Conference (ACC), 2022 - ieeexplore.ieee.org
We propose a computationally efficient approach to safe reinforcement learning (RL) for
frequency regulation in power systems with high levels of variable renewable energy …

[PDF][PDF] Safe exploration of nonlinear dynamical systems: A predictive safety filter for reinforcement learning

KP Wabersich, MN Zeilinger - arXiv preprint arXiv:1812.05506, 2018 - researchgate.net
The transfer of reinforcement learning (RL) techniques into real-world applications is
challenged by safety requirements in the presence of physical limitations. Most RL methods …

Reinforcement learning for Energies of the future and carbon neutrality: a Challenge Design

G Serré, E Boguslawski, B Donnot, A Pavão… - arXiv preprint arXiv …, 2022 - arxiv.org
Current rapid changes in climate increase the urgency to change energy production and
consumption management, to reduce carbon and other green-house gas production. In this …

[HTML][HTML] Review and evaluation of reinforcement learning frameworks on smart grid applications

D Vamvakas, P Michailidis, C Korkas… - Energies, 2023 - mdpi.com
With the rise in electricity, gas and oil prices and the persistently high levels of carbon
emissions, there is an increasing demand for effective energy management in energy …