To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to autonomously dock onto a charging station. Here, reinforcement learning strategies were applied for the first time to control the docking of an AUV onto a fixed platform in a simulation environment. Two reinforcement learning schemes were investigated: one with continuous state and action spaces, deep deterministic policy gradient (DDPG), and one with continuous state but discrete action spaces, deep Q network (DQN). For DQN, the discrete actions were selected as step changes in the control input signals. The performance of the reinforcement learning strategies was compared with classical and optimal control techniques. The control actions select...
Hydrobatic autonomous underwater vehicles (AUVs) can be efficient in speed and range as well as agil...
Classic methods for Dynamic Positioning (DP) of surface vessels often consists of first calculating ...
In this study, we present a platform-portable deep reinforcement learning method that has been used ...
To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to auto...
To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to auto...
Author's accepted manuscriptProviding full autonomy to Unmanned Surface Vehicles (USV) is a challeng...
At the Australian National University we are developing an autonomous underwater vehicle for explora...
Autonomous underwater vehicles (AUVs) are widely used to accomplish various missions in the complex ...
The implementation of a model-free, off-policy, actor-critic deep reinforcement learning algorithm c...
© 2022 Elsevier Ltd. All rights reserved. This is the accepted manuscript version of article which h...
Autonomous underwater vehicles (AUV) represent a challenging control problem with complex, noisy, dy...
This paper presents a hybrid behavior-based scheme using reinforcement learning for high-level contr...
SummaryAutonomous landing on the deck of a boat or an unmanned surface vehicle (USV) is the minimum ...
In this paper, the simulation results of a control and guidance strategy for homing and docking task...
© 2018 Australasian Robotics and Automation Association. All rights reserved. Small Autonomous Under...
Hydrobatic autonomous underwater vehicles (AUVs) can be efficient in speed and range as well as agil...
Classic methods for Dynamic Positioning (DP) of surface vessels often consists of first calculating ...
In this study, we present a platform-portable deep reinforcement learning method that has been used ...
To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to auto...
To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to auto...
Author's accepted manuscriptProviding full autonomy to Unmanned Surface Vehicles (USV) is a challeng...
At the Australian National University we are developing an autonomous underwater vehicle for explora...
Autonomous underwater vehicles (AUVs) are widely used to accomplish various missions in the complex ...
The implementation of a model-free, off-policy, actor-critic deep reinforcement learning algorithm c...
© 2022 Elsevier Ltd. All rights reserved. This is the accepted manuscript version of article which h...
Autonomous underwater vehicles (AUV) represent a challenging control problem with complex, noisy, dy...
This paper presents a hybrid behavior-based scheme using reinforcement learning for high-level contr...
SummaryAutonomous landing on the deck of a boat or an unmanned surface vehicle (USV) is the minimum ...
In this paper, the simulation results of a control and guidance strategy for homing and docking task...
© 2018 Australasian Robotics and Automation Association. All rights reserved. Small Autonomous Under...
Hydrobatic autonomous underwater vehicles (AUVs) can be efficient in speed and range as well as agil...
Classic methods for Dynamic Positioning (DP) of surface vessels often consists of first calculating ...
In this study, we present a platform-portable deep reinforcement learning method that has been used ...