基于粒子群算法的无人机无碰撞四维轨迹规划

D. Alejo, J. A. Cobano, G. Heredia, A. Ollero
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引用次数: 40

摘要

本文提出了一种新的自动识别多无人机冲突的系统,并在考虑可用计算时间的情况下提出了最有效的解决方案。该系统采用一种基于轴向最小边界盒的算法检测碰撞,并采用一种基于简单一次策略的无碰撞轨迹规划算法快速计算出可行但非最优的初始解,采用粒子群优化(PSO)随机优化技术改进初始解,协同解决碰撞。PSO以最小的总体成本修改无人机的4D轨迹。在任务执行过程中,以较短的时间间隔确定最优轨迹是不可行的,因此采用了一种基于粒子群算法的任意时间方法。这种方法产生的轨迹随着可用计算时间的增加而质量提高。因此,该方法可以根据可用的计算时间实时应用。该方法已通过在同一工作空间内多架无人机场景的仿真验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Particle Swarm Optimization for collision-free 4D trajectory planning in Unmanned Aerial Vehicles
This paper presents a new system which automatically identifies conflicts between multiple UAVs (Unmanned Aerial Vehicles) and proposes the most effective solution considering the available computation time. The system detects conflicts using an algorithm based on axis-aligned minimum bounding box and resolves them cooperatively using a collision-free trajectory planning algorithm based on a simple one-at-a-time strategy to quickly compute a feasible but non-optimal initial solution and a stochastic optimization technique named Particle Swarm Optimization (PSO) to improve the initial solution. PSO modifies the 4D trajectories of the UAVs with an overall minimum cost. Determining optimal trajectories with short time intervals during the execution of the mission is not feasible, hence an anytime approach using PSO is applied. This approach yields trajectories whose quality improves when available computation time increases. Thus, the method could be applied in realtime depending on the available computation time. The method has been validated with simulations in scenarios with multiple UAVs in a common workspace.
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