Flocking along line by autonomous oblivious mobile robots

S. Chaudhuri
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引用次数: 2

Abstract

Swarm robot is a collection of tiny identical autonomous mobile robots who collaboratively perform a given task. One of the main objectives of swarm robots is to place themselves on a geographic region forming a particular geometric pattern in order to execute some jobs in cooperation, e.g., covering or guarding a region, moving a big object. This paper proposes a deterministic distributed algorithm for a set of tiny disc shaped swarm robots (also known as fat robots) to form a straight line and then moving this line by coordinating the motion of the robots. This phenomenon of moving of robots while maintaining the straight line formation, is known as Flocking of robots. The robots are homogeneous, autonomous, anonymous. They need very less computational power. They sense their surrounding, compute destinations to move to and move there. They do not have any explicit message sending or receiving capability. They forget their past sensed and computed data. The robots do not agree on any global coordinate system or origin. The robots are not aware of the total number of robots in the system. All these disabilities of the robots make them less expensive in cost as well as simple in software and hardware requirements. The algorithm presented in this paper assures collision free movements of the robots.
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自主遗忘移动机器人沿直线聚集
蜂群机器人是一组微型相同的自主移动机器人,它们协同执行给定的任务。群机器人的主要目标之一是将自身放置在一个地理区域上,形成特定的几何图案,以便协同执行一些任务,例如覆盖或守卫一个区域,移动一个大物体。本文提出了一种确定性分布式算法,使一组微小的圆盘形群体机器人(又称胖机器人)形成一条直线,然后通过协调机器人的运动来移动这条直线。这种机器人在保持直线队形的同时移动的现象,被称为机器人的群集。机器人是同质的、自主的、匿名的。它们只需要很少的计算能力。它们感知周围的环境,计算要移动的目的地,然后移动到那里。它们没有任何显式的消息发送或接收功能。他们忘记了过去的感知和计算数据。机器人不同意任何全球坐标系或原点。机器人不知道系统中机器人的总数。机器人的所有这些缺陷使得它们在成本上更便宜,在软件和硬件要求上也更简单。本文提出的算法保证了机器人的无碰撞运动。
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