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A Comparative Simulation Study of Multi-aircraft Cooperative Task Planning Based on Artificial Intelligence Optimization Algorithm

机译:基于人工智能优化算法的多机协同任务规划比较仿真研究

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Considering the inherent characteristics of the return module in manned space missions, this paper proposes a multi-aircraft collaborative target search strategy and establishes a multi-aircraft collaborative target search model. Based on the analysis of collaborative search solutions, this paper proposes a multi-aircraft collaborative search task solution based on an artificial intelligence optimization algorithm. However, the general artificial intelligence optimization algorithm suffers from slow convergence rate and excessive resource consumption. In order to effectively address this problem, this paper proposes GA-Dstar hybrid UAV trajectory planning algorithm to reduce the computation time by using the Dstar algorithm for planning the local path for searching within the local search range. The simulation results show that the proposed hybrid algorithm is more effective than the traditional GA algorithm for performing a global search. The proposed algorithm significantly reduces resource consumption while maintaining the optimality of the trajectory planning route. The improved algorithm proposed in this work is useful for multi-aircraft collaborative mission planning and related research.
机译:针对载人航天任务返回舱的固有特点,提出了多机协同目标搜索策略,建立了多机协同目标搜索模型。在分析协同搜索解决方案的基础上,提出了一种基于人工智能优化算法的多机协同搜索任务解决方案。然而,一般的人工智能优化算法收敛速度慢,资源消耗过大。为了有效地解决这一问题,本文提出了GA-Dstar混合无人机航迹规划算法,通过使用Dstar算法规划局部路径,在局部搜索范围内进行搜索,以减少计算时间。仿真结果表明,该混合算法比传统的遗传算法更能有效地进行全局搜索。该算法在保持轨迹规划路径最优性的同时,显著降低了资源消耗。本文提出的改进算法可用于多机协同任务规划及相关研究。

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