International audienceIn the past decade, the energy needs in WBANs have increased due to more information to be processed, more data to be transmitted and longer operational periods. On the other hand, battery technologies have not improved fast enough to cope with these needs. Thus, miniaturized energy harvesting technologies are increasingly used to complement the batteries in WBANs. However, this brings uncertainties in the system since the harvested energy varies a lot during the node operation. It has been shown that reinforcement learning algorithms can be used to manage the energy in the nodes since they are able to make decisions under uncertainty. But the efficiency of these algorithms depend on their reward function. In this pape...
International audienceA promising solution to achieve autonomous wireless sensor networks is to enab...
The operation of a community energy storage system (CESS) is challenging due to the volatility of ph...
This paper presents an online learning scheme based on reinforcement learning and adaptive dynamic p...
International audienceIn the past decade, the energy needs in WBANs have increased due to more infor...
13 pagesInterest in remote monitoring has grown thanks to recent advancements in Internet-of-Things ...
International audienceEnergy management in low power IoT is a difficult problem. Modeling the consum...
International audienceIn order to reduce CO2 emissions, electricity networks must increasingly integ...
Reinforcement learning-based (RL-based) energy management strategy (EMS) is considered a promising s...
Modern solutions for residential energy management systems control are emerging and helping to impro...
International audienceWe consider a microgrid for energy distribution, with a local consumer, a rene...
Traditionally, the operation of the battery is optimised using 24h of forecasted data of load demand...
The transition to renewable production and smart grids is driving a massive investment to battery st...
Electricity prices have risen significantly year on year and reducing energy use in homes can save ...
Design optimization of distributed energy systems has become an interest of a wider group of researc...
In Smart Grid environments, homes equipped with windmills are encouraged to generate energy and sell...
International audienceA promising solution to achieve autonomous wireless sensor networks is to enab...
The operation of a community energy storage system (CESS) is challenging due to the volatility of ph...
This paper presents an online learning scheme based on reinforcement learning and adaptive dynamic p...
International audienceIn the past decade, the energy needs in WBANs have increased due to more infor...
13 pagesInterest in remote monitoring has grown thanks to recent advancements in Internet-of-Things ...
International audienceEnergy management in low power IoT is a difficult problem. Modeling the consum...
International audienceIn order to reduce CO2 emissions, electricity networks must increasingly integ...
Reinforcement learning-based (RL-based) energy management strategy (EMS) is considered a promising s...
Modern solutions for residential energy management systems control are emerging and helping to impro...
International audienceWe consider a microgrid for energy distribution, with a local consumer, a rene...
Traditionally, the operation of the battery is optimised using 24h of forecasted data of load demand...
The transition to renewable production and smart grids is driving a massive investment to battery st...
Electricity prices have risen significantly year on year and reducing energy use in homes can save ...
Design optimization of distributed energy systems has become an interest of a wider group of researc...
In Smart Grid environments, homes equipped with windmills are encouraged to generate energy and sell...
International audienceA promising solution to achieve autonomous wireless sensor networks is to enab...
The operation of a community energy storage system (CESS) is challenging due to the volatility of ph...
This paper presents an online learning scheme based on reinforcement learning and adaptive dynamic p...