This is the final version. Available on open access from MDPI via the DOI in this recordGrid-connected microgrids consisting of renewable energy sources, battery storage, and load, require an appropriate energy management system that controls the battery operation. Traditionally, the operation of the battery is optimised using 24-hours of forecasted data of load demand and renewable energy sources (RES) generation using offline optimisation techniques, where the battery actions (charge/discharge/idle) are determined before the start of the day. Reinforcement Learning (RL) has recently been suggested as an alternative to these traditional techniques due to its ability to learn optimal policy online using real data. Two approaches of RL have ...
Grid-tied renewable energy sources (RES) based electric vehicle (EV) charging stations are an exampl...
The operation of a community energy storage system (CESS) is challenging due to the volatility of ph...
We propose a novel Model Predictive Control (MPC) scheme based on online-learning (OL) for microgrid...
Grid-connected microgrids consisting of renewable energy sources, battery storage, and load require ...
Traditionally, the operation of the battery is optimised using 24h of forecasted data of load demand...
International audienceWe consider a microgrid for energy distribution, with a local consumer, a rene...
There has been a shift towards energy sustainability in recent years, and this shift should continue...
In the near future, microgrids will become more prevalent as they play a critical role in integratin...
International audienceThis paper presents a framework based on reinforcement learning for energy man...
The extensive penetration of distributed energy resources (DERs), particularly electric vehicles (EV...
Smart Microgrids bring numerous challenges, including how to leverage the potential benefits of rene...
Motivated by recent developments in batch Reinforcement Learning (RL), this paper contributes to the...
This paper presents an online learning scheme based on reinforcement learning and adaptive dynamic p...
The uncertainty of distributed renewable energy brings significant challenges to economic operation ...
Grid-tied renewable energy sources (RES) based electric vehicle (EV) charging stations are an exampl...
The operation of a community energy storage system (CESS) is challenging due to the volatility of ph...
We propose a novel Model Predictive Control (MPC) scheme based on online-learning (OL) for microgrid...
Grid-connected microgrids consisting of renewable energy sources, battery storage, and load require ...
Traditionally, the operation of the battery is optimised using 24h of forecasted data of load demand...
International audienceWe consider a microgrid for energy distribution, with a local consumer, a rene...
There has been a shift towards energy sustainability in recent years, and this shift should continue...
In the near future, microgrids will become more prevalent as they play a critical role in integratin...
International audienceThis paper presents a framework based on reinforcement learning for energy man...
The extensive penetration of distributed energy resources (DERs), particularly electric vehicles (EV...
Smart Microgrids bring numerous challenges, including how to leverage the potential benefits of rene...
Motivated by recent developments in batch Reinforcement Learning (RL), this paper contributes to the...
This paper presents an online learning scheme based on reinforcement learning and adaptive dynamic p...
The uncertainty of distributed renewable energy brings significant challenges to economic operation ...
Grid-tied renewable energy sources (RES) based electric vehicle (EV) charging stations are an exampl...
The operation of a community energy storage system (CESS) is challenging due to the volatility of ph...
We propose a novel Model Predictive Control (MPC) scheme based on online-learning (OL) for microgrid...