Publication | Closed Access
A Behavior-Based Mobile Robot Navigation Method with Deep Reinforcement Learning
27
Citations
13
References
2021
Year
Artificial IntelligenceEngineeringDeep Reinforcement LearningCollision AvoidanceAutonomous NavigationIntelligent RoboticsAction Model LearningMulti-agent CaseIntelligent SystemsRobot LearningMulti-agent ScenariosLearning ControlRoboticsWorld ModelMulti-agent LearningMulti-agent Planning
Deep reinforcement learning-based mobile robot navigation has attracted some recent interest. In the single-agent case, a robot can learn to navigate autonomously without a map of the environment. In the multi-agent case, robots can learn to avoid collisions with each other. In this work, we propose a behavior-based mobile robot navigation method which directly maps the raw sensor data and goal information to the control command. The learned navigation policy can be applied in both single-agent and multi-agent scenarios. Two basic navigation behaviors are considered in our method, which are goal reaching and collision avoidance. The two behaviors are fused based on the risk-level estimation of the current state. The navigation task is decomposed using the behavior-based framework, which is capable of reducing the complexity of the learning process. The simulations and real-world experiments demonstrate that the proposed method can enable the collision-free autonomous navigation of multiple mobile robots in unknown environments.
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