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Reinforcement Learning Based Outdoor Navigation System for Mobile Robots

机译:基于加强学习的移动机器人户外导航系统

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This paper presents a navigation system for mobile robots in outdoor environments and the preliminary robot implementation results. Objectives of the proposed navigation system include path generation on the map (2D binary image) and path following of the robot to reach the goal location. In our method there is no waypoint in the generated paths and the map. The A-Star search algorithm is employed to plan paths on the map, and the q-learning is used to train the robot to follow the generated paths. The difference between the robot positions and A-star generated random paths is used to evaluate the performance of the proposed method. Preliminary simulation results revealed the potentials of the cooperation between reinforcement learning-based algorithms and conventional path planning algorithms for robot navigation.
机译:本文介绍了室外环境中移动机器人的导航系统和初步机器人实现结果。 所提出的导航系统的目标包括地图上的路径生成(2D二进制图像)和机器人的路径,以达到目标位置。 在我们的方法中,在生成的路径和地图中没有任何航路点。 A-Star搜索算法用于计划地图上的路径,并且Q学习用于训练机器人遵循生成的路径。 机器人位置和A-STAR生成的随机路径之间的差异用于评估所提出的方法的性能。 初步仿真结果揭示了加固基于学习算法与机器人导航的传统路径规划算法的潜力。

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