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Distributed Bees Algorithm Parameters Optimization for a Cost Efficient Target Allocation in Swarms of Robots

机译:机器人群中具有成本效益的目标分配的分布式Bees算法参数优化

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摘要

Swarms of robots can use their sensing abilities to explore unknown environments and deploy on sites of interest. In this task, a large number of robots is more effective than a single unit because of their ability to quickly cover the area. However, the coordination of large teams of robots is not an easy problem, especially when the resources for the deployment are limited. In this paper, the Distributed Bees Algorithm (DBA), previously proposed by the authors, is optimized and applied to distributed target allocation in swarms of robots. Improved target allocation in terms of deployment cost efficiency is achieved through optimization of the DBA’s control parameters by means of a Genetic Algorithm. Experimental results show that with the optimized set of parameters, the deployment cost measured as the average distance traveled by the robots is reduced. The cost-efficient deployment is in some cases achieved at the expense of increased robots’ distribution error. Nevertheless, the proposed approach allows the swarm to adapt to the operating conditions when available resources are scarce.
机译:成群的机器人可以利用其感知能力探索未知环境并部署在感兴趣的站点上。在此任务中,大量机器人比单个单元更有效,因为它们具有快速覆盖该区域的能力。但是,大型机器人团队的协调并不是一个容易的问题,尤其是在部署资源有限的情况下。本文对作者先前提出的分布式蜜蜂算法(DBA)进行了优化,并将其应用于机器人群中的分布式目标分配。通过使用遗传算法优化DBA的控制参数,可以提高部署成本效率上的目标分配。实验结果表明,通过优化的参数集,减少了以机器人平均行进距离衡量的部署成本。在某些情况下,以节省成本的方式实现部署,但要以增加机器人分配错误为代价。尽管如此,当可用资源不足时,所提出的方法仍可让群体适应工作条件。

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