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Enhancing biologically inspired swarm behavior: Metaheuristics to foster the optimization of UAVs coordination in target search

机译:增强生物启发的群体行为:培养在目标搜索中的无人机协调优化的甲型学

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Recent miniaturization in Unmanned Aerial Vehicles (UAVs) technology encourages the use of many small UAVs for search missions in unknown environments, provided that the autonomous and adaptive coordination logic can be effective. In this research field, biologically inspired metaheuristics have been proposed to mimics swarms, flocks, and other coordination schemas. The design and management of such systems is a research challenge when considering (i) combination and optimization of multiple metaheuristics and (ii) enhancements of biologically inspired metaheuristic through technological advances. In this paper the swarm coordination of UAVs employed in target search is based on flocking and stigmergy, to provide robust formation control and dynamic environmental information sharing, respectively. The design of both metaheuristics takes into account UAVs equipment, and the coordination logic is adapted to the mission by means of a differential evolutionary algorithm. This algorithm optimizes the aggregated structural parameters of all metaheuristics to allow the most efficient coordination with respect to the mission environment. Some possible enhancements of stigmergy are studied by simulating target search tasks on synthetic and real-world scenarios. (C) 2019 Elsevier Ltd. All rights reserved.
机译:最近在无人机航空公司(无人机)技术中的小型化鼓励在未知环境中使用许多小无人机在未知环境中进行搜索任务的许多小无人机..自主和自适应协调逻辑可以有效。在本研究领域,已经提出了生物启发的核心学,以模仿群体,群体和其他协调模式。在考虑(i)组合和优化多种成分训练的组合和优化时,这些系统的设计和管理是一种研究挑战,并通过技术进步来增强生物学激发的成群制的增强。在本文中,目标搜索中使用的无人机的群体协调是基于植绒和耻辱,分别提供鲁棒的形成控制和动态环境信息共享。这两种成型学习的设计考虑了无人机设备,并且协调逻辑通过差分进化算法适应任务。该算法优化了所有美容仪的聚合结构参数,以允许对任务环境最有效的协调。通过模拟综合性和现实情景的目标搜索任务来研究耻辱的一些可能的增强。 (c)2019 Elsevier Ltd.保留所有权利。

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