Autonomous vehicles are suited for continuous area patrolling problems. However, finding an optimal patrolling strategy can be challenging for many reasons. Firstly, patrolling environments are often complex and can include unknown environmental factors. Secondly, autonomous vehicles can have failures or hardware constraints, such as limited battery life. Importantly, patrolling large areas often requires multiple agents that need to collectively coordinate their actions. In this work, we consider these limitations and propose an approach based on model-free, deep multi-agent reinforcement learning. In this approach, the agents are trained to automatically recharge themselves when required, to support continuous collective patrolling. A dis...
The vehicle platoon will be the most dominant driving mode on future roads. To the best of our knowl...
The vehicle platoon will be the most dominant driving mode on future roads. To the best of our knowl...
Recent advances in Multi-agent Reinforcement Learning (MARL) have made it possible to implement vari...
Abstract. Patrolling an environment involves a team of agents whose goal usually consists in continu...
Reinforcement learning has been applied to solve several real world challenging problems, from robot...
This paper addresses the Multi-Robot Patrolling Problem, where agents must coordinate their actions ...
Collaborative autonomous multi-agent systems covering a specified area have many potential applicati...
Autonomous marine environmental monitoring problem traditionally encompasses an area coverage proble...
Deep reinforcement learning has advanced signifi-cantly in recent years, and it is now used in embed...
Autonomous unmanned vehicles (UxVs) can be useful in many scenarios including disaster relief, prod...
Sustainable cities are envisioned to have economic and industrial steps toward reducing pollution. M...
Multi-agent reinforcement learning allows a team of agents to learn how to work together to solve co...
In this article, a mapless movement policy for mobile agents, designed specifically to be fault-tole...
The proliferation of unmanned aerial vehicles (UAVs) has spawned a variety of intelligent services, ...
Autonomous unmanned vehicles equipped with sensors are rapidly becoming the de facto means of achiev...
The vehicle platoon will be the most dominant driving mode on future roads. To the best of our knowl...
The vehicle platoon will be the most dominant driving mode on future roads. To the best of our knowl...
Recent advances in Multi-agent Reinforcement Learning (MARL) have made it possible to implement vari...
Abstract. Patrolling an environment involves a team of agents whose goal usually consists in continu...
Reinforcement learning has been applied to solve several real world challenging problems, from robot...
This paper addresses the Multi-Robot Patrolling Problem, where agents must coordinate their actions ...
Collaborative autonomous multi-agent systems covering a specified area have many potential applicati...
Autonomous marine environmental monitoring problem traditionally encompasses an area coverage proble...
Deep reinforcement learning has advanced signifi-cantly in recent years, and it is now used in embed...
Autonomous unmanned vehicles (UxVs) can be useful in many scenarios including disaster relief, prod...
Sustainable cities are envisioned to have economic and industrial steps toward reducing pollution. M...
Multi-agent reinforcement learning allows a team of agents to learn how to work together to solve co...
In this article, a mapless movement policy for mobile agents, designed specifically to be fault-tole...
The proliferation of unmanned aerial vehicles (UAVs) has spawned a variety of intelligent services, ...
Autonomous unmanned vehicles equipped with sensors are rapidly becoming the de facto means of achiev...
The vehicle platoon will be the most dominant driving mode on future roads. To the best of our knowl...
The vehicle platoon will be the most dominant driving mode on future roads. To the best of our knowl...
Recent advances in Multi-agent Reinforcement Learning (MARL) have made it possible to implement vari...