A Mission Planning Method for Long-Endurance Unmanned Aerial Vehicles: Integrating Heterogeneous Ground Control Resource Allocation

Drones Pub Date : 2024-08-08 DOI:10.3390/drones8080385
Kai Li, Cheng Zhu, Xiaogang Pan, Long Xu, Kai Liu
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Abstract

Long-endurance unmanned aerial vehicles (LE-UAVs) are extensively used due to their vast coverage and significant payload capacities. However, their limited autonomous intelligence necessitates the intervention of ground control resources (GCRs), which include one or more operators, during mission execution. The performance of these missions is notably affected by the varying effectiveness of different GCRs and their fatigue levels. Current research on multi-UAV mission planning inadequately addresses these critical factors. To tackle this practical issue, we present an integrated optimization problem for multi-LE-UAV mission planning combined with heterogeneous GCR allocation. This problem extends traditional multi-UAV cooperative mission planning by incorporating GCR allocation decisions. The coupling of mission planning decisions with GCR allocation decisions increases the dimensionality of the decision space, rendering the problem more complex. By analyzing the problem’s characteristics, we develop a mixed-integer linear programming model. To effectively solve this problem, we propose a bilevel programming algorithm based on a hybrid genetic algorithm framework. Numerical experiments demonstrate that our proposed algorithm effectively solves the problem, outperforming the advanced optimization toolkit CPLEX. Remarkably, for larger-scale instances, our algorithm achieves superior solutions within 10 s compared with CPLEX’s 2 h runtime.
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长航时无人飞行器的任务规划方法:整合异构地面控制资源分配
长航时无人飞行器(LE-UAV)因其覆盖范围广、有效载荷大而被广泛使用。然而,由于其自主智能有限,在执行任务时需要地面控制资源(GCR)的干预,其中包括一名或多名操作员。这些任务的执行受到不同地面控制资源的不同效能及其疲劳程度的显著影响。目前关于多无人机任务规划的研究没有充分考虑到这些关键因素。为了解决这一实际问题,我们提出了一个结合异构 GCR 分配的多LE-UAV 任务规划综合优化问题。该问题将 GCR 分配决策纳入其中,从而扩展了传统的多无人机合作任务规划。任务规划决策与 GCR 分配决策的耦合增加了决策空间的维度,使问题变得更加复杂。通过分析该问题的特点,我们建立了一个混合整数线性规划模型。为了有效解决这个问题,我们提出了一种基于混合遗传算法框架的双级编程算法。数值实验证明,我们提出的算法能有效解决该问题,其性能优于高级优化工具包 CPLEX。值得注意的是,与 CPLEX 的 2 小时运行时间相比,对于更大规模的实例,我们的算法能在 10 秒内获得出色的解决方案。
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