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Solving the Multi-Functional Heterogeneous UAV Cooperative Mission Planning Problem Using Multi-Swarm Fruit Fly Optimization Algorithm

机译:用多群果蝇优化算法解决多功能异构无人机合作社任务规划问题

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摘要

The complexity of unmanned aerial vehicle (UAV) missions is increasing with the rapid development of UAV technology. Multiple UAVs usually cooperate in the form of teams to improve the efficiency of mission execution. The UAVs are equipped with multiple sensors with complementary functions to adapt to the complex mission constraints. Reasonable task assignment, task scheduling, and UAV trajectory planning are the prerequisites for efficient cooperation of multi-functional heterogeneous UAVs. In this paper, a multi-swarm fruit fly optimization algorithm (MFOA) with dual strategy switching is proposed to solve the multi-functional heterogeneous UAV cooperative mission planning problem with the criterion of simultaneously minimizing the makespan and the total mission time. First, the multi-swarm mechanism is introduced to enhance the global search capability of the fruit fly optimization algorithm. Second, in the smell-based search phase, the local search strategies and large-scale search strategies are designed to drive multiple fruit fly swarms, and the dual strategy switching method is presented. Third, in the vision-based search stage, the greedy selection strategy is adopted. Finally, numerical simulation experiments are designed. The simulation results show that the MFOA algorithm is more effective and stable for solving the multi-functional heterogeneous UAV cooperative mission planning problem compared with other algorithms.
机译:无人驾驶飞行器(UAV)任务的复杂性随着UAV技术的快速发展而增加。多个无人机通常以团队的形式合作,以提高使命执行的效率。无人机配备了多个传感器,具有互补功能,可适用于复杂的任务约束。合理的任务分配,任务调度和UAV轨迹规划是多功能异构无人机有效合作的先决条件。在本文中,提出了一种具有双策略切换的多群果蝇优化算法(MFOA),以解决多功能异构无人机合作社任务规划问题,同时最小化Mapspan和总任务时间。首先,引入了多群机制以增强果蝇优化算法的全球搜索能力。其次,在基于气味的搜索阶段,本地搜索策略和大规模搜索策略旨在驱动多个果蝇群,并提出了双策略切换方法。第三,在基于视觉的搜索阶段,采用了贪婪选择策略。最后,设计了数值模拟实验。仿真结果表明,与其他算法相比,MFOA算法更有效和稳定,用于解决多功能异构无人机合作社任务规划问题。

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