Adaptive behavior acquisition of collision avoidance among multiple autonomous mobile robots

Y. Arai, T. Fujii, H. Asama, Yasushi Kataoka, H. Kaetsu, A. Matsumoto, I. Endo
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引用次数: 25

Abstract

We discuss adaptive behavior acquisition for collision avoidance among multiple autonomous mobile robots which are equipped with the locally communicable infrared sensory system (LOCISS). The LOCISS is a local sensing device for collision avoidance by which robots can detect other robots and obstacles and discriminate them by exchanging relevant information. We (1996) reported previously a collision avoidance method between two robots based on the predetermined rules using LOCISS. It is, however, difficult to realize collision avoidance among three or more robots by the predetermined rules only because situations around the robots become more complicated as the number of robots increases. Thus, it is desirable for the robots to have an adaptive capability for acquisition of the behaviors to avoid collision with other robots and obstacles. To acquire the adaptive behavior, the reinforcement learning is introduced in this paper. It is shown that appropriate behaviors for collision avoidance can be successfully acquired through the proposed learning process.
多自主移动机器人间避碰的自适应行为获取
讨论了基于局部可通信红外传感系统(LOCISS)的多自主移动机器人间避碰的自适应行为获取。LOCISS是一种用于避免碰撞的局部传感装置,通过它,机器人可以发现其他机器人和障碍物,并通过交换相关信息进行区分。我们(1996)先前报道了一种基于LOCISS的预定规则的两个机器人之间的避碰方法。然而,随着机器人数量的增加,机器人周围的情况变得更加复杂,使得三个或更多的机器人之间难以按照预先确定的规则实现避碰。因此,希望机器人具有自适应能力,以获取避免与其他机器人和障碍物碰撞的行为。为了获得自适应行为,本文引入了强化学习。结果表明,通过所提出的学习过程,可以成功地获得适当的避碰行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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