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Adaptive Leader-Follower Formation Control and Obstacle Avoidance via Deep Reinforcement Learning

Yanlin Zhou, Fan Lü, George Pu, Xiyao Ma, Runhan Sun, Hsi‐Yuan Chen, Xiaolin Li, Dapeng Wu

发表年份
2019
引用次数
2
访问权限
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摘要

We propose a deep reinforcement learning (DRL) methodology for the tracking, obstacle avoidance, and formation control of nonholonomic robots. By separating vision-based control into a perception module and a controller module, we can train a DRL agent without sophisticated physics or 3D modeling. In addition, the modular framework averts daunting retrains of an image-to-action end-to-end neural network, and provides flexibility in transferring the controller to different robots. First, we train a convolutional neural network (CNN) to accurately localize in an indoor setting with dynamic foreground/background. Then, we design a new DRL algorithm named Momentum Policy Gradient (MPG) for continuous control tasks and prove its convergence. We also show that MPG is robust at tracking varying leader movements and can naturally be extended to problems of formation control. Leveraging reward shaping, features such as collision and obstacle avoidance can be easily integrated into a DRL controller.

关键词

Reinforcement learningController (irrigation)Obstacle avoidanceComputer scienceFlexibility (engineering)Modular designCollision avoidanceArtificial intelligenceObstacleArtificial neural network

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