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A swarm robot methodology for collaborative manipulation of non-identical objects

机译:一种用于异类对象协同操纵的群体机器人方法

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摘要

In this paper we investigate an algorithm that improves the task completion rate of a swarm of simple robots implementing a leaf-curling task. In this biologically inspired task, robots collaborate to find a suitable place to bend a leaf which allows them to successfully fold it up. To complete the task simple robots were developed that are not equipped with any direct communication devices. They communicate via sematectonic stigmergy which means robots can only exchange information via changes they make to their working environment. This type of communication has proved beneficial in helping swarm robots monitor the performance of other swarm members without direct contact, team mate localization or recognition. However, in earlier experiments, implementing the leaf-curling task, information perceived by every robot has not been effectively used to create meaningful collaboration. This disadvantage becomes evident via the low task completion rate. If robots explore their environment, this will improve the outcome by increasing the probability of finding the most suitable part of the leaf to work on. In this paper, an algorithm enabling swarm robots to effectively explore the environment and find the most effective place to perform the leaf-curling task is described in detail. The improvement of completion rate, achieved by this exploring rule, is verified by both simulation and physical experiments with a group of W-AntBots.
机译:在本文中,我们研究了一种算法,该算法可提高一群执行叶子卷曲任务的简单机器人的任务完成率。在这项受生物学启发的任务中,机器人共同寻找合适的位置来弯曲树叶,从而使其成功折叠。为了完成任务,开发了不配备任何直接通讯设备的简单机器人。它们通过电子震荡进行通信,这意味着机器人只能通过对其工作环境进行更改来交换信息。事实证明,这种类型的通信可以帮助群体机器人在没有直接联系,队友本地化或识别的情况下监视其他群体成员的表现。但是,在较早的实验中,执行叶子卷曲任务时,每个机器人感知到的信息尚未有效地用于创建有意义的协作。通过低的任务完成率可以看出这一缺点。如果机器人探索他们的环境,这将通过增加找到最合适的叶子部分进行工作的可能性来改善结果。在本文中,详细描述了一种算法,可使群体机器人有效地探索环境并找到最有效的位置来执行卷叶任务。通过一组W-AntBots的仿真和物理实验,验证了通过该探索规则实现的完成率的提高。

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