航空学报 > 2026, Vol. 47 Issue (4): 332208-332208   doi: 10.7527/S1000-6893.2025.32208

无人机群空基回收任务规划方法

武柯文, 赵斌(), 谭雁英   

  1. 西北工业大学 精确制导与控制研究所,西安 710072
  • 收稿日期:2025-05-08 修回日期:2025-06-11 接受日期:2025-07-17 出版日期:2025-07-28 发布日期:2025-07-25
  • 通讯作者: 赵斌 E-mail:binzhao@nwpu.edu.cn
  • 基金资助:
    国家自然科学基金(62373307)

Aerial recovery mission planning method for UAV swarm

Kewen WU, Bin ZHAO(), Yanying TAN   

  1. Institute of Precision Guidance and Control,Northwestern Polytechnical University,Xi’an 710072,China
  • Received:2025-05-08 Revised:2025-06-11 Accepted:2025-07-17 Online:2025-07-28 Published:2025-07-25
  • Contact: Bin ZHAO E-mail:binzhao@nwpu.edu.cn
  • Supported by:
    National Natural Science Foundation of China(62373307)

摘要:

针对复杂环境下的空基回收任务规划问题,建立了考虑回收时间窗口的任务规划问题模型,采用分层框架削弱任务分配与航迹规划之间的耦合特性。首先,设计了基于剪枝概率路径图(P-PRM)与Dubins曲线的航迹预规划方法,分析无人机的可回收区间并融入任务规划流程。其次,根据空基回收问题特点设计分布式粒子群算法(DPSO)进行回收任务分配。最后,针对航迹时空约束与避障约束,基于4种同伦航迹变形方法建立航迹库,在CT空间中分析航迹可行性,以二分法优化同伦参数快速搜索最优航迹。一体规划与重规划结果证明了所提出任务规划方法的有效性,与集中式的粒子群算法和遗传算法相比,分布式粒子群算法具有搜索效率高、收敛快速的优点;与一般航迹规划方法相比,剪枝概率路径图的规划速度更快且仍能保持较短的航迹长度。同伦变形方法可以在航迹规划层面满足避障与期望航时约束。

关键词: 空基回收, 任务规划, 粒子群算法, 概率路径图, 同伦航迹

Abstract:

To address the mission planning problem of aerial recovery in complex environments, a mission planning model incorporating recovery time windows has been established, and a hierarchical framework is adopted to mitigate the coupling characteristics between task assignment and trajectory planning. First, a trajectory pre-planning method based on Pruned Probabilistic Roadmap (P-PRM) and Dubins curves is designed to analyze UAV recoverable intervals and integrate them into the mission planning process. Subsequently, a Distributed Particle Swarm Optimization (DPSO) algorithm is implemented for recovery task assignment, taking into account the characteristics of aerial recovery mission. Furthermore, to satisfy both spatiotemporal and obstacle avoidance constraints, a trajectory library is constructed utilizing four distinct homotopy-based trajectory deformation methods. The trajectory feasibility is analyzed in Configuration-Time (CT) space, and optimal homotopy parameters are efficiently determined through binary search optimization. Experimental validation demonstrates the effectiveness of the proposed integrated planning and replanning methodology. In comparison with centralized Particle Swarm Optimization and Genetic Algorithm approaches, DPSO demonstrates superior performance in search efficiency and convergence rate. Relative to conventional trajectory planning methods in large-scale scenarios, P-PRM exhibits enhanced planning speed while maintaining compact trajectory lengths. The implemented homotopy deformation method effectively satisfies both obstacle avoidance and expected flight time constraints within the trajectory planning framework.

Key words: aerial recovery, task assignment, Particle Swarm Optimization (PSO), Probabilistic Roadmap (PRM), homotopy trajectory

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