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A multirobot target searching method based on bat algorithm in unknown environments

机译:未知环境中基于蝙蝠算法的多机器人目标搜索方法

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Multirobot target searching in unknown environments is a currently trending topic of discussion. In this paper, an improved bat algorithm (BA) for multirobot target searching in unknown environments, named adaptive robotic bat algorithm (ARBA), is proposed; it acts as the controlling mechanism for robots. The obstacle avoidance problem is considered in the proposed ARBA. The adaptive inertial weight strategy helps ARBA improve its diversity and provides an effective mechanism for escaping from local optima. In addition, the Doppler effect is introduced to improve ARBA; the effect can be adaptively compensated when the robot moves and helps robots avoid premature convergence. Moreover, the location of the target in an unknown environment is unknown, and a multi-swarm strategy is introduced into the ARBA to improve the diversity and expand the search space of robots so that robots can find the location of the target as well as the target itself faster than the existing algorithms. Experiments were conducted in three aspects to verify the effectiveness and efficiency of AREA. We compared ARBA with the other algorithms in this field; the experimental results demonstrate that ARBA exhibits better performance in multirobot target searching and can be applied to multirobot intelligent systems. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在未知环境中的多机器人目标搜索是当前讨论的趋势。本文提出了一种改进的蝙蝠算法(BA),用于未知环境下的多机器人目标搜索,称为自适应机器人蝙蝠算法(ARBA)。它充当机器人的控制机制。拟议的ARBA考虑了避障问题。自适应惯性权重策略可帮助ARBA改善多样性,并为避免局部最优解提供了有效的机制。另外,引入了多普勒效应以改善ARBA。当机器人移动时,可以自适应补偿这种影响,并帮助机器人避免过早收敛。此外,未知环境中目标的位置是未知的,并且将多群策略引入了ARBA,以提高多样性并扩展机器人的搜索空间,以便机器人可以找到目标以及目标的位置。比现有算法更快地定位自己。从三个方面进行了实验,以验证AREA的有效性和效率。我们将ARBA与该领域的其他算法进行了比较。实验结果表明,ARBA在多机器人目标搜索中表现出更好的性能,可应用于多机器人智能系统。 (C)2019 Elsevier Ltd.保留所有权利。

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