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Autonomous robot navigation with self-learning for collision avoidance with randomly moving obstacles

机译:具有自学习功能的自主机器人导航,可避免随机移动的障碍物的碰撞

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This paper develops a hierarchical controller to avoid randomly moving obstacles in autonomous navigation of a robot. The developed method consists of two parts: a high-level Q-learning controller for choosing an optimal plan for navigation and a low-level, appearance-based visual servo (ABVS) controller for motion execution. The use of robot learning ability in collision avoidance is a novel feature, in a combined system framework of planning and visual servo control. The developed approach takes advantage of the on-board camera of robot whose finite field of view is naturally suitable for the Q-learning algorithm. Because of the Q-learning controller, knowledge of obstacle movement and a control law for the ABVS controller are not needed. This is a significant computational advantage. The method is implemented in a simulation system of robot navigation. The results show that Q-learning, which is a method of reinforcement learning, successfully converges to an optimal strategy for the robot to establish a proper motion plan.
机译:本文开发了一种分层控制器,以避免机器人自主导航中随机移动的障碍物。所开发的方法包括两部分:用于选择最佳导航计划的高级Q学习控制器和用于运动执行的低级,基于外观的视觉伺服(ABVS)控制器。在计划和视觉伺服控制相结合的系统框架中,在避免碰撞中使用机器人学习能力是一项新颖的功能。所开发的方法利用了机器人的车载摄像头,该摄像头的有限视场自然适用于Q学习算法。由于具有Q学习控制器,因此不需要障碍物运动知识和ABVS控制器的控制律。这是显着的计算优势。该方法在机器人导航的仿真系统中实现。结果表明,Q学习是一种强化学习方法,已成功地收敛到机器人建立正确运动计划的最佳策略。

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