群机器人任务分配中的改进分布式蜜蜂算法

Razieh Moradi, H. Nezamabadi-pour, Mohadeseh Soleimanpour
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引用次数: 0

摘要

本文提出了一种改进的分布式蜜蜂算法(MDBA),用于机器人群中的任务分配。在MDBA中,提出了一种锦标赛选择机制来提高算法的选择能力。在提出的场景中,任务分配是将机器人分配到二维竞技场中找到的目标。期望的分布是由表示为标量值的目标质量获得的。我们根据机器人数量和目标数量测试了所提出的MDBA算法的可扩展性。仿真结果表明,增加机器人群的规模可以减小分布误差。所得结果证实了所提出的MDBA的能力。
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Modified Distributed Bee Algorithm in Task Allocation of Swarm Robotic
In this paper, we propose a modified distributed bee algorithm (MDBA) for task allocation in a swarm of robots. In MDBA, a tournament selection mechanism is proposed to improve the selection ability of the algorithm. In the proposed scenario, task allocation is to assign the robots to the found targets in a 2-D arena. The expected distribution is obtained from the targets’ qualities that are represented as scalar values. We tested the scalability of the proposed MDBA algorithm in terms of number of robots and number of targets. The simulation results show that by increasing the robot swarm’s size, the distribution error is decreased. The results obtained confirm the ability of the proposed MDBA.
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