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Globally solving a nonlinear UAV task assignment problem by stochastic and deterministic optimization approaches

机译:通过随机和确定性优化方法全局求解非线性无人机任务分配问题

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In this paper,we consider a task allocationmodel that consists of assigning a set of m unmanned aerial vehicles (UAVs) to a set of n tasks in an optimal way. The optimality is quantified by target scores. The mission is to maximize the target score while satisfying capacity constraints of both the UAVs and the tasks. This problem is known to be NP-hard. Existing algorithms are not suitable for the large scale setting. Scalability and robustness are recognized as two main issues.We deal with these issues by two optimization approaches. The first approach is the Cross-Entropy (CE) method, a generic and practical tool of stochastic optimization for solving NP-hard problem. The second one is Branch and Bound algorithm, an efficient classical tool of global deterministic optimization. The numerical results show the efficiency of our approaches, in particular the CE method for very large scale setting.
机译:在本文中,我们考虑一种任务分配模型,该模型包括以最优方式将一组m无人机(UAV)分配给一组n个任务。最优性通过目标分数来量化。任务是在满足无人机和任务的能力约束的同时,最大化目标得分。已知此问题是NP难题。现有算法不适用于大规模设置。可扩展性和鲁棒性被认为是两个主要问题。我们通过两种优化方法来处理这些问题。第一种方法是交叉熵(CE)方法,它是解决NP难题的随机优化的通用实用工具。第二个是分支定界算法,这是一种高效的全局确定性优化经典工具。数值结果表明了我们方法的效率,特别是对于非常大规模设置的CE方法。

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