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Deep Q-Learning for Two-Hop Communications of Drone Base Stations

机译:深度Q-Learning为无人机基站的两跳通信

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摘要

In this paper, we address the application of the flying Drone Base Stations (DBS) in order to improve the network performance. Given the high degrees of freedom of a DBS, it can change its position and adapt its trajectory according to the users movements and the target environment. A two-hop communication model, between an end-user and a macrocell through a DBS, is studied in this work. We propose Q-learning and Deep Q-learning based solutions to optimize the drone’s trajectory. Simulation results show that, by employing our proposed models, the drone can autonomously fly and adapts its mobility according to the users’ movements. Additionally, the Deep Q-learning model outperforms the Q-learning model and can be applied in more complex environments.
机译:在本文中,我们解决了飞行无人机基站(DBS)的应用,以提高网络性能。鉴于DB的高度自由度,它可以根据用户的移动和目标环境改变其位置并调整其轨迹。在这项工作中研究了一个双跳通信模型,在最终用户和宏小区之间进行了DB。我们提出了Q-Learning和Deep Q学习的解决方案,以优化无人机的轨迹。仿真结果表明,通过采用我们的拟议模型,无人机可以根据用户的动作自动飞行并适应其移动性。另外,深度Q学习模型优于Q学习模型,可以在更复杂的环境中应用。

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