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面向多无人机物流配送的双层任务规划方法OA

Two-layer task planning method for multi-UAV logistics distribution

中文摘要英文摘要

多无人机任务协同规划与配送路径规划是城市无人机物流配送的核心内容,两者相互耦合,需要进行一体化研究.为保障安全、高效完成多无人机物流配送任务,采用栅格法对三维城市超低空间进行环境建模,阐述了栅格危险度计算方法.构建一种无人机配送线路及航迹协同规划的双层规划模型,在上层规划模型中,考虑无人机载重及最大航程约束,以延迟惩罚代价最小为目标,引入遗传算法来确定无人机配送顺序;在下层规划模型中,考虑无人机性能约束,以时效性代价最小、无人机高度变化及栅格危险度最小为目标,提出一种综合改进粒子群优化(CIPSO)算法,求解无人机飞行路径.进行算例仿真分析,结果表明:与粒子群优化(PSO)算法、改进加速因子粒子群优化(ICPSO)算法相比,CIPSO算法总代价分别下降了 65.00%和 38.41%,所建模型与所提算法是可行的和有效的.

In urban UAV logistics distribution,the two main components that must be merged are multi-UAV task collaborative allocation and distribution path design.In order to ensure the safety and efficiency of multi-UAV logistics distribution,the grid method is used to model the ultra-low space environment of a three-dimensional city,and the grid risk calculation method is described.Secondly,a two-layer programming model of UAV distribution route and flight path collaborative planning is constructed.In the upper layer model,considering the constraints of UAV load and maximum range,a genetic algorithm is introduced to determine the UAV distribution order with the goal of minimum delay penalty cost.In the lower model,a comprehensive improved particle swarm optimization(CIPSO)algorithm is proposed to solve the flight path of the UAV by considering the performance constraints of the UAV and aiming at the minimization of timeliness cost,UAV height variation,and grid risk.Last but not least,the simulation results demonstrate that CIPSO's overall cost is lower than that of particle swarm optimization(PSO)and improved acceleration coefficients particle swarm optimization(ICPSO)algorithm by 65.00%and 38.41%,respectively.This suggests that the constructed model and the proposed algorithm developed in this study are both practical and efficient.

王飞;杨清平

中国民航大学 空中交通管理学院,天津 300300中国民航大学 空中交通管理学院,天津 300300

航空航天

物流无人机任务分配路径规划双层规划模型改进粒子群优化算法

logistics unmanned aerial vehicletask allocationpath planningtwo-layer programming modelimproved particle swarm optimization algorithm

《北京航空航天大学学报》 2026 (1)

94-103,10

天津市应用基础多元投入基金重点项目(21JCZDJC00840)中央高校基本科研业务费专项资金(3122019129) Tianjin Application Basic Diversified Investment Fund Key Project(21JCZDJC00840)The Fundamental Research Funds for the Central Universities(3122019129)

10.13700/j.bh.1001-5965.2023.0719

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