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Empirical learning in mobile robot navigation

机译:移动机器人导航中的实证学习

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The purpose of this study is to improve the locomotion performance for autonomous mobile robots in outdoor environments. In this paper improvement of an environment model is called empirical locomotion performance leaming. A system avoids wasting time of observations and actions by analyzing data from the last run. We propose a method of empirical learning. The method is expressed by rewriting the rules on the trajectory data. Brief route information for navigating a robot is represented with motion directions at intersections and metric distances between intersections. The behavior of our robot is based on a locomotion strategy 'sign pattern-based stereotyped motion'. The behaviors are implemented on our mobile robot HARUNOBU-4 and tested at our university campus. Experimental results show a robustness of our proposed behaviors under dynamic environments with existing obstacles. Furthermore, they showed that our proposed rewriting rules improved the locomotion performance. In particular, searching time was shortened by 87 (from 453 to 61 s) and the travel distance was shortened by 10 (from 173.8 to 157.5 m).
机译:本研究的目的是提高自主移动机器人在户外环境中的运动性能。在本文中,环境模型的改进称为经验运动性能租赁。系统通过分析上次运行的数据来避免浪费观察和操作的时间。我们提出了一种实证学习的方法。该方法通过重写轨迹数据的规则来表示。用于导航机器人的简要路线信息用交叉点的运动方向和交叉点之间的公制距离表示。我们机器人的行为基于运动策略“基于符号模式的刻板运动”。这些行为在我们的移动机器人HARUNOBU-4上实现,并在我们的大学校园内进行了测试。实验结果表明,在存在障碍物的动态环境下,所提出的行为具有鲁棒性。此外,他们表明我们提出的重写规则提高了运动性能。特别是,搜索时间缩短了87%(从453秒缩短到61秒),行驶距离缩短了10%(从173.8米缩短到157.5米)。

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