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

Taishan Lou;Yu Wang;Zhepeng Yue;Liangyu Zhao
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Abstract

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 cuckoo 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 initial 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.
基于 CS-GJO 算法的三维地形多无人机协同轨迹规划
现有的多无人机协同轨迹规划解决方案存在精度低、不稳定、收敛慢等问题。针对上述问题,本文介绍了一种基于布谷鸟搜索金豺优化算法(CS-GJO)的多无人机三维地形协同轨迹规划新方法。本文建立了单架无人机轨迹规划模型和多架无人机协同轨迹规划模型,并将模型求解问题重组为优化问题。在原有金豺优化算法的基础上,使用帐篷混沌映射来帮助生成金豺的初始种群,从而促进种群的多样性。随后,结合布谷鸟搜索算法的位置更新策略,更新金豺个体的位置信息,有效防止算法陷入局部最小值。最后,制定了相应的非线性控制参数。新参数加快了预探索阶段收敛因子的下降,从而提高了算法的整体搜索速度。此外,它们还减弱了后探索阶段收敛因子的下降,从而提高了算法的全局搜索能力。实验结果表明,CS-GJO 算法能高效、准确地完成三维环境下的多无人机合作轨迹规划。与其他比较算法相比,CS-GJO 算法还具有更好的稳定性、更高的优化精度和更快的收敛速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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