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Dynamic task allocation for formation air-to-ground attack

机译:编队空对地攻击的动态任务分配

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In accordance with the allocation of random arriving tasks, queuing network is proposed and then utilized to establish combat model for air-to-ground attack of formation. With the methodology of Markov Decision Processes (MDP), the paper establishes the dynamic task assignment model under the complete information condition. Allowing for the issue of dynamic task allocation with incomplete information, load threshold and value function sharing mechanism are proposed. Afterwards, two layers Q-learning algorithm is presented in this context to establish the dynamic task allocation model, which aims to achieve the cooperation with in formation and between formations. The simulation result indicates that the model aforementioned can enhance the long-term profit value, as well as avoid omitting the target with bigger income. Furthermore, it sheds light on the study on the dynamic task allocation and combat effectiveness evaluation for air-to-ground attack of formation problem in theory and method.
机译:根据随机到达任务的分配,提出了排队网络,然后利用该网络建立编队空对地攻击的作战模型。利用马尔可夫决策过程(MDP)的方法,建立了在完全信息条件下的动态任务分配模型。考虑到信息不完整的动态任务分配问题,提出了负载阈值和价值函数共享机制。在此基础上,提出了两层Q学习算法,建立了动态​​任务分配模型,旨在实现与编队之间以及编队之间的协作。仿真结果表明,上述模型可以提高长期利润价值,并且可以避免忽略较大收入的目标。进而从理论和方法上对编队空对空攻击的动态任务分配和作战效能评估研究进行了阐述。

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