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A global motion planner that learns from experience for autonomous mobile robots

机译:可以从自主移动机器人的经验中学习的全球运动计划者

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摘要

A new technique for enhancing global path planning for mobile robots working in partially known as indoor environments is presented in this paper. The method is based on a graph approach that adapts the cost of the paths by incorporating travelling time from real experiences. The approach uses periodical measurements of time and position reached by the robot while moving to the goal to modify the costs of the branches. Consequently, the search of a feasible path from a static global map in dynamic environments is more realistic than employing a distance metric. Our approach has been tested in simulation as well on an autonomous robot. Results from both simulation and real experiences are discussed.
机译:本文提出了一种新技术,该技术可增强在部分称为室内环境下工作的移动机器人的全局路径规划。该方法基于图形方法,该方法通过结合实际经验中的行驶时间来调整路径成本。该方法使用机器人在到达目标时的时间和位置的定期测量来修改分支机构的成本。因此,在动态环境中从静态全局地图搜索可行路径比采用距离度量更为现实。我们的方法已经在自动机器人上进行了仿真测试。讨论了来自仿真和实际经验的结果。

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