Decentralized Hybrid Flocking Guidance for a Swarm of Small UAVs

Seunghan Lim, Yeongho Song, Joonwon Choi, Hyun Myung, Heungsik Lim, H. Oh
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引用次数: 5

Abstract

Flocking is defined as flying in groups without colliding into each other through data exchange where each UAV applies a decentralized algorithm. In this paper, hybrid flocking control is proposed by using three types of guidance methods: vector field, Cucker-Smale model, and potential field. Typically, hybrid flocking control using several methods can lead to generating conflicting commands and thus degrading the performance of the mission. To address this issue, the adaptive Cucker-Smale model is proposed. Besides, we use social learning particle swarm optimization to determine the optimal weightings between guidance methods. It is verified through numerical simulations that the optimal weighting for missions such as loitering and target tracking results in effective flocking.
小型无人机群的分散混合群集制导
蜂群是指每架无人机采用分散算法,通过数据交换,在不发生碰撞的情况下成组飞行。本文采用矢量场、Cucker-Smale模型和势场三种制导方法,提出了混合簇控制方法。通常,使用几种方法的混合群集控制可能导致产生冲突的命令,从而降低任务的性能。为了解决这一问题,提出了自适应cucker - small模型。此外,我们使用社会学习粒子群算法来确定引导方法之间的最优权重。通过数值仿真验证了在漫游和目标跟踪等任务中,最优加权可以实现有效的集群。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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