With the development of microgrids (MGs), an energy management system (EMS) is required to ensure the stable and economically efficient operation of the MG system. In this paper, an intelligent EMS is proposed by exploiting the deep reinforcement learning (DRL) technique. DRL is employed as the effective method for handling the computation hardness of optimal scheduling of the charge/discharge of battery energy storage in the MG EMS. Since the optimal decision for charge/discharge of the battery depends on its state of charge given from the consecutive time steps, it demands a full-time horizon scheduling to obtain the optimum solution. This, however, increases the time complexity of the EMS and turns it into an NP-hard problem. By consider...
Motivated by recent developments in batch Reinforcement Learning (RL), this paper contributes to the...
The problem of optimally activating the flexible energy sources (short- and long-term storage capaci...
In this paper, we study the application of the deep reinforcement learning to train a real time ener...
peer reviewedThis paper addresses the problem of efficiently operating the storage devices in an ele...
International audienceWe consider a microgrid for energy distribution, with a local consumer, a rene...
This paper investigates the economic energy scheduling problem for data center microgrids with renew...
Energy storage is an important adjustment method to improve the economy and reliability of a power s...
This paper develops a multi-timescale coordinated operation method for microgrids based on modern de...
This paper focuses on economical operation of a microgrid (MG) in real-time. A novel dynamic energy ...
Smart grid technology is rapidly advancing and providing various opportunities for efficient energy ...
The massive integration of renewable-based distributed energy resources (DERs) inherently increases ...
This paper focuses on economical operation of a microgrid (MG) in real-time. A novel dynamic energy ...
International audienceIncreasing penetration of renewable energy sources (PV, Wind) due to environme...
Traditionally, the operation of the battery is optimised using 24h of forecasted data of load demand...
Microgrids (MGs) are small, local power grids that can operate independently from the larger utility...
Motivated by recent developments in batch Reinforcement Learning (RL), this paper contributes to the...
The problem of optimally activating the flexible energy sources (short- and long-term storage capaci...
In this paper, we study the application of the deep reinforcement learning to train a real time ener...
peer reviewedThis paper addresses the problem of efficiently operating the storage devices in an ele...
International audienceWe consider a microgrid for energy distribution, with a local consumer, a rene...
This paper investigates the economic energy scheduling problem for data center microgrids with renew...
Energy storage is an important adjustment method to improve the economy and reliability of a power s...
This paper develops a multi-timescale coordinated operation method for microgrids based on modern de...
This paper focuses on economical operation of a microgrid (MG) in real-time. A novel dynamic energy ...
Smart grid technology is rapidly advancing and providing various opportunities for efficient energy ...
The massive integration of renewable-based distributed energy resources (DERs) inherently increases ...
This paper focuses on economical operation of a microgrid (MG) in real-time. A novel dynamic energy ...
International audienceIncreasing penetration of renewable energy sources (PV, Wind) due to environme...
Traditionally, the operation of the battery is optimised using 24h of forecasted data of load demand...
Microgrids (MGs) are small, local power grids that can operate independently from the larger utility...
Motivated by recent developments in batch Reinforcement Learning (RL), this paper contributes to the...
The problem of optimally activating the flexible energy sources (short- and long-term storage capaci...
In this paper, we study the application of the deep reinforcement learning to train a real time ener...