多旋翼无人机的编队控制与子群生成

M. M. Shahzad, Muhammad Haroon Asad, Muhammad Haris, Hammad Munawar, M. Yousaf
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引用次数: 0

摘要

集体行为研究领域的灵感来自于自然自组织系统,如蜜蜂、鱼群、群居昆虫、鸟群和其他群居动物。这些行为可以通过复制在自然群体中发现的相同规则来转化为机器人。由于在监视、农业和军事等领域的广泛应用,空中蜂群机器人的部署已经变得非常重要。这些应用导致了空中蜂群机器人平台的发展,以解决现实世界的问题。例如,一群低技术、低成本的小型无人机可以有效地攻击一个高科技目标。同样,一群无人机可以在灾区执行监视和救援任务,并通过多个无人机群构建应急通信网络。群体技术的关键部分是多种群体智能算法,这些算法已经被V-rep、Gazebo和MATLAB等各种仿真平台提出并进行了测试。它们很少部署在硬件上,以解决实际场景,包括编队控制、导航、模式形成和一些子群生成算法。团队连接性是群体网络的一个重要方面,它体现了群体的集体智慧,并确保算法能够部署和解决现实世界的问题。许多研究人员提出了单群网络中的团队连通性算法,但在执行任务时仍然留下了子群之间的连通性差距。本研究工作有助于设计一种群体智能算法,以改进群体代理与子群体之间的连通性和团队连通性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Formation Control and Sub-Swarm Generation of Multirotor UAVs
The research field of collective behaviors takes inspiration from natural self-organizing systems like honeybees, fish schools, social insects, bird flocks, and other social animals. These behaviors can be transformed into robots by replicating the same set of rules as found in the natural swarms. The deployment of aerial swarm robotics has become significant due to their multiple applications in surveillance, agriculture, and military. These applications lead to the development of aerial swarm robotic platforms to solve real-world problems. For example, a swarm of low-tech, cost-effective small UAVs can engage a high-tech target effectively. Similarly, a swarm of UAVs can perform surveillance and rescue missions in disastrous areas and build an emergency communication network through multiple UAV swarms. The critical part of swarm technology is multiple swarm intelligence algorithms that have been proposed and tested by various simulation platforms such as V-rep, Gazebo and MATLAB. Very few of them have been deployed on hardware to solve real scenarios that include formation control, navigation, pattern formation, and a few sub-swarm generation algorithms. Team connectivity is one of the essential aspects of a swarm network that emerges the collective intelligence of the group and ensures the readiness of the algorithm to deploy and solve real-world problems. Many researchers proposed the team connectivity algorithms in a single swarm network but still left the connectivity gap between the sub-swarms during a mission. This research work contributes toward designing a swarm intelligence algorithm to improve the connectivity techniques and team connectivity between the swarm agents and the sub-swarm groups.
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