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Mobile robot path-learning to separate goals on an unknown world

机译:移动机器人路径学习可在未知世界中分离目标

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In this article we face the problem of navigating a mobile robot on an unknown indoor environment. The parti-game approach is used for simultaneous learning of a world model, and learning a path from an initial location to a specified goal region. These two learning abilities may be seen as cooperating and enhancing each other in order to improve the overall system performance. It is shown that the constructed world model is general-purpose, in the sense that its usefulness is not restricted to be used on self-learning a particular path, but may be valuable for learning paths with different (start, goal) pairs. The robot uses its own infrared distance-sensors to perform obstacle detection while moving. Is also has the predefined ability of performing straight-line motions. Simulation results are presented that validate the effectiveness of the approach.
机译:在本文中,我们面临着在未知的室内环境下导航移动机器人的问题。 Parti-Game方法用于同时学习世界模型,并从初始位置学习路径到指定的目标区域。这两个学习能力可能被视为彼此合作和增强,以提高整体系统性能。结果表明,构造的世界模型是通用目的,从而意识到其有用性不限于自学习特定路径,但对于学习不同(开始,目标)对的学习路径可能是有价值的。机器人使用自己的红外距离传感器在移动时执行障碍物检测。也具有执行直线运动的预定义的能力。提出了仿真结果,以验证方法的有效性。

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