基于势场方向的无人机群分布式任务架构

Wenda Yang, Minggong Wu, Xiang-xi Wen, Senlin Wang, Yuming Heng, Zhe Zhang
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引用次数: 0

摘要

无人机(UAV)群监视具有部署灵活、无人员伤亡、群存活率高、成本效益高等优点。它已经成为我们在战场上不能忽视的一支力量。任务规划技术作为保证无人机蜂群成活率和提高探测效率的关键技术,是未来实现无人机蜂群自主探测的基础。介绍了无人机分布式任务规划方法。讨论了主流的无人机规划方法。我们重点研究了改进的人工势场(IAPF)方法。在多目标类型的复杂场景中,采用任务空间离散栅格化建模方法。通过与混合人工势场和蚁群算法(HAPF-ACO)的仿真结果对比,验证了所提方法在搜索性能上的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed task architecture of UAV swarm based on potential field direction
Unmanned Aerial Vehicle (UAV) swarm surveillance has many advantages: flexible deployment, no casualties, high swarm survival rate, and high cost-effectiveness. It has become a force that we cannot ignore on the battlefield. As the key technology to ensure the survival rate of UAV swarms and improve detection efficiency, mission planning technology is the basis for realizing the autonomous detection of UAV swarms in the future. This paper introduces the method of UAV distributed mission planning. The mainstream UAV planning methods are discussed. We focus on the improved artificial potential field (IAPF) approach. The modeling method of discrete rasterization of task space is adopted in complex scenes of multiple target types. Compared with the simulation results of hybrid artificial potential field and ant colony optimization (HAPF-ACO), the superiority of the proposed method in search performance is verified.
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