International audienceMobile robotic systems are normally confronted with the shortage of on-board resources such as computing capabilities and energy, as well as significantly influenced by the dynamics of surrounding environmental conditions. This context requires adaptive decisions at run-time that react to the dynamic and uncertain operational circumstances for guaranteeing the performance requirements while respecting the other constraints. In this paper, we propose a reinforcement learning (RL)-based approach for Quality of Service QoS and energy-aware autonomous robotic mission manager. The mobile robotic mission manager leverages the idea of (RL) by monitoring actively the state of performance and energy consumption of the mission a...
The complexity of thermal systems for future electric vehicles is increasing to maximize range, prol...
The present study investigates an energy management strategy based on reinforcement learning for ser...
<div><p>To further improve the fuel economy of series hybrid electric tracked vehicles, a reinforcem...
International audienceMobile robotic systems are normally confronted with the shortage of on-board r...
With the computational systems of even embedded devices becoming ever more powerful, there is a need...
Reinforcement learning-based (RL-based) energy management strategy (EMS) is considered a promising s...
International audienceIn any system, applications compete for a limited amount of resources. As long...
Self-sustenance in an unknown environment for an autonomous mobile robot with re-stricted sensory fa...
Mobile robots are increasingly being employed for performing complex tasks in dynamic environments. ...
AbstractConsidering our depleting resources, efficient energy production and transmission is the nee...
Reinforcement learning (RL)algorithm is employed in solving energy management problem for electrifie...
Controlling a fleet of autonomous mobile robots (AMR) is a complex problem of optimization. Many app...
Modern solutions for residential energy management systems control are emerging and helping to impro...
13 pagesInterest in remote monitoring has grown thanks to recent advancements in Internet-of-Things ...
To further improve the fuel economy of series hybrid electric tracked vehicles, a reinforcement lear...
The complexity of thermal systems for future electric vehicles is increasing to maximize range, prol...
The present study investigates an energy management strategy based on reinforcement learning for ser...
<div><p>To further improve the fuel economy of series hybrid electric tracked vehicles, a reinforcem...
International audienceMobile robotic systems are normally confronted with the shortage of on-board r...
With the computational systems of even embedded devices becoming ever more powerful, there is a need...
Reinforcement learning-based (RL-based) energy management strategy (EMS) is considered a promising s...
International audienceIn any system, applications compete for a limited amount of resources. As long...
Self-sustenance in an unknown environment for an autonomous mobile robot with re-stricted sensory fa...
Mobile robots are increasingly being employed for performing complex tasks in dynamic environments. ...
AbstractConsidering our depleting resources, efficient energy production and transmission is the nee...
Reinforcement learning (RL)algorithm is employed in solving energy management problem for electrifie...
Controlling a fleet of autonomous mobile robots (AMR) is a complex problem of optimization. Many app...
Modern solutions for residential energy management systems control are emerging and helping to impro...
13 pagesInterest in remote monitoring has grown thanks to recent advancements in Internet-of-Things ...
To further improve the fuel economy of series hybrid electric tracked vehicles, a reinforcement lear...
The complexity of thermal systems for future electric vehicles is increasing to maximize range, prol...
The present study investigates an energy management strategy based on reinforcement learning for ser...
<div><p>To further improve the fuel economy of series hybrid electric tracked vehicles, a reinforcem...