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CIMAX: collective information maximization in robotic swarms using local communication

机译:CIMAX:使用本地通信的机器人群中的集体信息最大化

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Robotic swarms and mobile sensor networks are used for environmental monitoring in various domains and areas of operation. Especially in otherwise inaccessible environments, decentralized robotic swarms can be advantageous due to their high spatial resolution of measurements and resilience to failure of individuals in the swarm. However, such robotic swarms might need to be able to compensate misplacement during deployment or adapt to dynamical changes in the environment. Reaching a collective decision in a swarm with limited communication abilities without a central entity serving as decision-maker can be a challenging task. Here, we present the CIMAX algorithm for collective decision-making for maximizing the information gathered by the swarm as a whole. Agents negotiate based on their individual sensor readings and ultimately make a decision for collectively moving in a particular direction so that the swarm as a whole increases the amount of relevant measurements and thus accessible information. We use both simulation and real robotic experiments for presenting, testing, and validating our algorithm. CIMAX is designed to be used in underwater swarm robots for troubleshooting an oxygen depletion phenomenon known as “anoxia.”.
机译:机器人群和移动传感器网络用于各个领域的环境监测和操作领域。特别是在其他不可进入的环境中,由于它们的高空间分辨率和群体中的个体失败的空间分辨率,分散的机器人群可能是有利的。然而,这种机器人群可能需要能够在部署期间补偿错位或适应环境的动态变化。在没有担任决策者的中央实体的情况下,在群体中达成的集体决定,没有担任决策者可能是一个具有挑战性的任务。在这里,我们介绍了集体决策的CIMAX算法,以最大化由群体收集的信息。代理基于各个传感器读数谈判,并最终决定统称在特定方向上,使得整个群体增加了相关测量的量,从而增加了可访问的信息。我们使用模拟和实际机器人实验来提出,测试和验证我们的算法。 Cimax旨在用于水下群机器人,用于排除称为“缺氧”的氧气耗尽现象。

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