无人机
计算机科学
避碰
运动规划
采样(信号处理)
规划师
路径(计算)
航空学
实时计算
空中交通管制
碰撞
空气空间
航空航天工程
人工智能
计算机安全
电信
计算机网络
机器人
工程类
遗传学
探测器
生物
作者
Belal H. Sababha,Amjed Al‐Mousa,Remah Baniyounisse,Jawad Bdour
标识
DOI:10.1177/17298806221086431
摘要
Unmanned aircraft or drones as they are sometimes called are continuing to become part of more real-life applications. The integration of unmanned aerial vehicles in public airspace is becoming an important issue that should be addressed. As the number of unmanned aerial vehicles and their applications are largely increasing, air traffic with more unmanned aircraft has to be given more attention to prevent collisions and maintain safe skies. Unmanned aerial vehicle air traffic integration and regulation has become a priority to different regulatory agencies and has become of greater interest for many researchers all around the world. In this research, a sampling-based air traffic integration, path planning, and collision avoidance approach is presented. The proposed algorithm expands an existing 2D sampling-based approach. The original 2D approach deals with only two unmanned aircraft. Each of the two aircraft shares location information with a ground-based path planner computer, which would send back the avoidance waypoints after performing the 2D sampling. The algorithm proposed in this article can handle any number of drones in the 3D space by performing either 2D or 3D sampling. The proposed work shows a 10-fold enhancement in terms of the number of unmanned aerial vehicle collisions. The presented results also contribute to enabling a better understanding of what is expected of integrating more drones in dense skies.
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