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Multi-UAV Collaborative Trajectory Planning for 3D Terrain Based on CS-GJO Algorithm

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摘要 Existing solutions for collaborative trajectory planning using multiple UAVs suffer from issues such as low accuracy,instability,and slow convergence.To address the aforementioned issues,this paper introduces a new method for multiple unmanned aerial vehicle(UAV)3D terrain cooperative trajectory planning based on the cuck0o search golden jackal optimization(CS-GJO)algorithm.A model for single UAV trajectory planning and a model for multi-UAV collaborative trajectory planning have been developed,and the problem of solving the models is restructured into an optimization problem.Building upon the original golden jackal optimization,the use of tent chaotic mapping aids in the generation of the golden jackal's inital population,thereby promoting population diversity.Subsequently,the position update strategy of the cuckoo search algorithm is combined for purpose of update the position information of individual golden jackals,effectively preventing the algorithm from getting stuck in local minima.Finally,the corresponding nonlinear control parameter were developed.The new parameters expedite the decrease in the convergence factor during the pre-exploration stage,resulting in an improved overall search speed of the algorithm.Moreover,they attenuate the decrease in the convergence factor during the post-exploration stage,thereby enhancing the algorithm's global search.The experimental results demonstrate that the CS-GJO algorithm efficiently and accurately accomplishes multi-UAV cooperative trajectory planning in a 3D environment.Compared with other comparative algorithms,the CS-GJO algorithm also has better stability,higher optimization accuracy,and faster convergence speed.
出处 《Complex System Modeling and Simulation》 EI 2024年第3期274-291,共18页 复杂系统建模与仿真(英文)
基金 supported by the Key Research and Development Program of Henan Province (No.241111222900) Natural Science Foundation of Henan (No.242300421716) Key Science and Technology Program of Henan Province (Nos.242102220044 and 242102210034) National Natural Science Foundation of China (No.62103379) Maker Space Incubation Project (No.2023ZCKJ102).
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  • 1贾永楠,田似营,李擎.无人机集群研究进展综述[J].航空学报,2020(S01):4-14. 被引量:97
  • 2郑昌文,严平,丁明跃,苏康.飞行器航迹规划研究现状与趋势[J].宇航学报,2007,28(6):1441-1446. 被引量:94
  • 3杨孝文.未来五大客机新技术[J].厦门航空,2012(1):88-89. 被引量:4
  • 4焦振江,王正平.基于改进蚁群算法的无人机航路规划[J].航空计算技术,2006,36(4):112-114. 被引量:12
  • 5Bortoff S A. Path planning for UAVs[C]∥The Proceedings of the American Control Conference. 2000: 364-368.
  • 6Agarwal A,Lim M H,Er M J,et al. ACO for a new TSP in region coverage[C]∥IEEE/RSJ International Conference on Intelligent Robots and Systems. 2005: 1717-1722.
  • 7Choest H. Coverage for robotics-a survey of recent results[J]. Annals of Mathematics and Artificial Intelligence,2001,31(1/2/3/4): 113-126.
  • 8Gabriely Y,Rimon E. Spanning-tree based coverage of continuous areas by a mobile robot[C]∥Proceedings of the 2001 IEEE International Conference on Robotics and Automation. 2001: 1927-1933.
  • 9Acar E U,Choset H,Rizzi A A,et al. Morse decompositions for coverage tasks [J]. The International Journal of Robotics Research,2002,21(4): 331-344.
  • 10Jones P,Vachtsevanos G,Tang L. Multi-unmanned aerial vehicle coverage planner for area surveillance missions[R]. AIAA-2007-6453,2007.

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