The core technique of unmanned vehicle systems is the autonomous maneuvering decision, which not only determines the applications of unmanned vehicles but also is the critical technique many countries are competing to develop. Reinforcement Learning (RL) is the potential design method for autonomous maneuvering decision-making systems. Nevertheless, in the face of complex decision-making tasks, it is still challenging to master the optimal policy due to the low learning efficiency caused by the complex environment, high dimensional state, and sparse reward. Inspired by the human learning process from simple to complex, we propose a novel progressive deep RL algorithm for policy optimization in unmanned autonomous decision-making systems in ...
In this paper, the application of the policy gradient Reinforcement Learning-based (RL) method for o...
Improving the autopilot capability of ships is particularly important to ensure the safety of mariti...
This thesis uses reinforcement learning (RL) to address dynamic adversarial games in the context of ...
The use of multi-rotor UAVs in industrial and civil applications has been extensively encouraged by ...
This dissertation aims to provide the methods of using Deep Reinforcement learning algorithm to tra...
This paper focuses on one of the collision avoidance scenarios for unmanned aerial vehicles (UAVs), ...
A deep reinforcement learning-based computational guidance method is presented, which is used to ide...
Autonomous vehicle navigation in an unknown dynamic environment is crucial for both supervised- and ...
Autonomous collision avoidance technology provides an intelligent method for unmanned surface vehicl...
Maneuver decision-making is the core of autonomous air combat, and reinforcement learning is a poten...
Self-driving cars have become a popular research topic in recent years. Autonomous driving is a comp...
Aiming at the problem that the traditional UAV obstacle avoidance algorithm needs to build offline t...
While autonomous mobile robots used to be built for domain specific tasks in factories or similar sa...
To solve the maneuvering decision problem in air combat of unmanned combat aircraft vehicles (UCAVs)...
The ease of availability of low cost aerial platforms has given rise to extensive research in the fi...
In this paper, the application of the policy gradient Reinforcement Learning-based (RL) method for o...
Improving the autopilot capability of ships is particularly important to ensure the safety of mariti...
This thesis uses reinforcement learning (RL) to address dynamic adversarial games in the context of ...
The use of multi-rotor UAVs in industrial and civil applications has been extensively encouraged by ...
This dissertation aims to provide the methods of using Deep Reinforcement learning algorithm to tra...
This paper focuses on one of the collision avoidance scenarios for unmanned aerial vehicles (UAVs), ...
A deep reinforcement learning-based computational guidance method is presented, which is used to ide...
Autonomous vehicle navigation in an unknown dynamic environment is crucial for both supervised- and ...
Autonomous collision avoidance technology provides an intelligent method for unmanned surface vehicl...
Maneuver decision-making is the core of autonomous air combat, and reinforcement learning is a poten...
Self-driving cars have become a popular research topic in recent years. Autonomous driving is a comp...
Aiming at the problem that the traditional UAV obstacle avoidance algorithm needs to build offline t...
While autonomous mobile robots used to be built for domain specific tasks in factories or similar sa...
To solve the maneuvering decision problem in air combat of unmanned combat aircraft vehicles (UCAVs)...
The ease of availability of low cost aerial platforms has given rise to extensive research in the fi...
In this paper, the application of the policy gradient Reinforcement Learning-based (RL) method for o...
Improving the autopilot capability of ships is particularly important to ensure the safety of mariti...
This thesis uses reinforcement learning (RL) to address dynamic adversarial games in the context of ...