Autonomous marine environmental monitoring problem traditionally encompasses an area coverage problem which can only be effectively carried out by a multi-robot system. In this paper, we focus on robotic swarms that are typically operated and controlled by means of simple swarming behaviors obtained from a subtle, yet ad hoc combination of bio-inspired strategies. We propose a novel and structured approach for area coverage using multi-agent reinforcement learning (MARL) which effectively deals with the non-stationarity of environmental features. Specifically, we propose two dynamic area coverage approaches: (1) swarm-based MARL, and (2) coverage-range-based MARL. The former is trained using the multi-agent deep deterministic policy gradien...
Automated environmental monitoring in marine environments is currently carried out either by small-s...
Deploying multiple robots for target search and tracking has many practical applications, yet the ch...
Modern ocean exploration and sensing approaches have been mainly based on Autonomous Underwater Vehi...
The multi-robot adaptive sampling problem aims at finding trajectories for a team of robots to effic...
Collaborative autonomous multi-agent systems covering a specified area have many potential applicati...
Current strategies employed for maritime target search and tracking are primarily based on the use o...
Autonomous vehicles are suited for continuous area patrolling problems. However, finding an optimal ...
This paper demonstrates the need to develop more suitable decentralized reinforcement learning metho...
To realize the potential of autonomous underwater robots that scale up our observational capacity in...
The recent advancement of Deep Reinforcement Learning (DRL) contributed to robotics by allowing auto...
© 2018 IEEE. Swarms of autonomous surface vehicles equipped with environmental sensors and decentral...
Autonomous Surfaces Vehicles (ASV) are incredibly useful for the continuous monitoring and explorin...
An area coverage control law in cooperation with reinforcement learning techniques is proposed for d...
Natural disasters are the cause of a great amount of deaths and economic loss every year. The rapid...
Flocking control is a significant problem in multi-agent systems such as multi-agent unmanned aerial...
Automated environmental monitoring in marine environments is currently carried out either by small-s...
Deploying multiple robots for target search and tracking has many practical applications, yet the ch...
Modern ocean exploration and sensing approaches have been mainly based on Autonomous Underwater Vehi...
The multi-robot adaptive sampling problem aims at finding trajectories for a team of robots to effic...
Collaborative autonomous multi-agent systems covering a specified area have many potential applicati...
Current strategies employed for maritime target search and tracking are primarily based on the use o...
Autonomous vehicles are suited for continuous area patrolling problems. However, finding an optimal ...
This paper demonstrates the need to develop more suitable decentralized reinforcement learning metho...
To realize the potential of autonomous underwater robots that scale up our observational capacity in...
The recent advancement of Deep Reinforcement Learning (DRL) contributed to robotics by allowing auto...
© 2018 IEEE. Swarms of autonomous surface vehicles equipped with environmental sensors and decentral...
Autonomous Surfaces Vehicles (ASV) are incredibly useful for the continuous monitoring and explorin...
An area coverage control law in cooperation with reinforcement learning techniques is proposed for d...
Natural disasters are the cause of a great amount of deaths and economic loss every year. The rapid...
Flocking control is a significant problem in multi-agent systems such as multi-agent unmanned aerial...
Automated environmental monitoring in marine environments is currently carried out either by small-s...
Deploying multiple robots for target search and tracking has many practical applications, yet the ch...
Modern ocean exploration and sensing approaches have been mainly based on Autonomous Underwater Vehi...