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Transformer-Based Reinforcement Learning for Multi-Robot Autonomous Exploration

Qihong Chen, Rui Wang, Ming Lyu, Jie Zhang

发表年份
2024
引用次数
7
访问权限
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摘要

A map of the environment is the basis for the robot's navigation. Multi-robot collaborative autonomous exploration allows for rapidly constructing maps of unknown environments, essential for application areas such as search and rescue missions. Traditional autonomous exploration methods are inefficient due to the repetitive exploration problem. For this reason, we propose a multi-robot autonomous exploration method based on the Transformer model. Our multi-agent deep reinforcement learning method includes a multi-agent learning method to effectively improve exploration efficiency. We conducted experiments comparing our proposed method with existing methods in a simulation environment, and the experimental results showed that our proposed method had a good performance and a specific generalization ability.

关键词

Reinforcement learningRobotArtificial intelligenceTransformerComputer scienceMobile robotSearch and rescueAutonomous robotRobot learningEngineering

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