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A PATH PLANNING METHOD BASED ON CELLULAR AUTOMATA FOR COOPERATIVE ROBOTS

机译:基于细胞自动机的协同机器人路径规划方法

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摘要

A Cellular Automaton-based technique suitable for solving the path planning problem in a distributed robot team is outlined. Real-time path planning is a challenging task that has many applications in the fields of artificial intelligence, moving robots, virtual reality, and agent behavior simulation. The problem refers to finding a collision-free path for autonomous robots between two specified positions in a configuration area. The complexity of the problem increases in systems of multiple robots. More specifically, some distance should be covered by each robot in an unknown environment, avoiding obstacles found on its route to the destination. On the other hand, all robots must adjust their actions in order to keep their initial team formation immutable. Two different formations were tested in order to study the efficiency and the flexibility of the proposed method. Using different formations, the proposed technique could find applications to image processing tasks, swarm intelligence, etc. Furthermore, the presented Cellular Automaton (CA) method was implemented and tested in a real system using three autonomous mobile minirobots called E-fucks. Experimental results indicate that accurate collision-free paths could be created with low computational cost. Additionally, cooperation tasks could be achieved using minimal hardware resources, even in systems with low-cost robots.
机译:概述了一种基于细胞自动机的技术,该技术适用于解决分布式机器人团队中的路径规划问题。实时路径规划是一项具有挑战性的任务,在人工智能,移动机器人,虚拟现实和代理行为模拟等领域具有许多应用。问题是在配置区域中两个指定位置之间找到自主机器人的无碰撞路径。在多个机器人的系统中,问题的复杂性增加。更具体地说,在未知环境中,每个机器人都应保持一定距离,以避免在到达目的地的路线上发现障碍。另一方面,所有机器人都必须调整其动作,以保持其最初的团队组成不变。为了研究所提方法的效率和灵活性,测试了两种不同的形式。通过使用不同的形式,所提出的技术可以找到在图像处理任务,群体智能等方面的应用。此外,提出的蜂窝自动机(CA)方法是在使用称为E-fuck的三个自主移动微型机器人的真实系统中实现和测试的。实验结果表明,可以以较低的计算成本创建准确的无碰撞路径。此外,即使在具有低成本机器人的系统中,也可以使用最少的硬件资源来完成协作任务。

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  • 来源
    《Applied Artificial Intelligence》 |2011年第10期|p.721-745|共25页
  • 作者单位

    Laboratory of Electronics, Department of Electrical Engineering & Computer Engineering, Democritus University of Thrace, Xanthi, GR-67100, Greece;

    rnLaboratory of Electronics, Department of Electrical Engineering & Computer Engineering, Democritus University of Thrace, Xanthi, GR, Greece;

    rnLaboratory of Electronics, Department of Electrical Engineering & Computer Engineering, Democritus University of Thrace, Xanthi, GR, Greece;

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