龙卷风:一种鲁棒的群体机器人自适应觅食算法

Dina Magdy, Y. Alkabani, H.S. Bedor
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引用次数: 4

摘要

觅食是群机器人的一个基准问题。它的灵感来自于成群的昆虫合作寻找和/或运输单个个体无法移动的食物。挑战在于对一群简单的机器人进行编程,这些机器人具有最小的通信和个体能力,在环境中搜索一些搜索目标,并将其集体返回基地。本文介绍了一种新的觅食算法:Tornado。Tornado算法的灵感来自旋涡式龙卷风的运动。该算法可以在给定大群的情况下,对一个区域进行高速扫描。然而,它可以适应某些机器人出现故障的情况,并以较慢的速度成功完成工作。实验结果表明,与已有的搜索算法相比,该算法具有更好的覆盖范围和鲁棒性。
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Tornado: A Robust Adaptive Foraging Algorithm for Swarm Robots
Foraging is a benchmark problem for swarm robotics. It is inspired by swarms of insects cooperating to locate and/or transport food items that a single individual cannot move. The challenge is to program a swarm of simple robots, with minimal communication and individual capability, to search the environment for some search target and return it to their base collectively. In this paper we introduce a novel foraging algorithm: Tornado. The Tornado algorithm is inspired by the spiral tornado motion. The algorithm can scan an area with high speed given a large swarm. However, it can adapt in case of failure of some robots and successfully finish the job at a slower speed. Experimental results show that the algorithm provides better coverage and robustness compared to previous foraging algorithms.
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