基于集成环境表示和强化学习的未知动态环境下移动机器人路径规划

Jian Zhang
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引用次数: 3

摘要

本文提出了一种新的路径规划方法,利用集成环境表示和强化学习来控制未知动态环境中具有非完整约束的移动机器人。所提出的控制算法不需要逼近障碍物的形状,甚至不需要任何障碍物的速度信息。我们的新方法能够有效地找到到达目标的最佳路径,并避免在具有稳定和移动障碍物的混乱环境中发生碰撞。我们进行了大量的计算机模拟,以显示我们的方法的卓越性能。
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Path Planning for a Mobile Robot in Unknown Dynamic Environments Using Integrated Environment Representation and Reinforcement Learning
This study develops a new path planning method which utilizes integrated environment representation and reinforcement learning to control a mobile robot with non-holonomic constraints in unknown dynamic environments. With the control algorithm presented, no approximating the shapes of the obstacles or even any information about the obstacles’ velocities is needed. Our novel approach enables to find the optimal path to the target efficiently and avoid collisions in a cluttered environment with steady and moving obstacles. We carry out extensive computer simulations to show the outstanding performance of our approach.
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