Model-Free Based Automated Trajectory Optimization for UAVs toward Data Transmission

Jingjing Cui, Z. Ding, Yansha Deng, A. Nallanathan
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引用次数: 6

Abstract

In this paper, we consider an unmanned aerial vehicle (UAV) enabled wireless network with a set of ground devices that are randomly distributed in an area and each having a certain amount of data for transmission. The UAV flies over this region from a starting point to a destination. During its flight, the UAV wants to communicate to the ground devices for maximizing the cumulative collected data by optimizing the trajectory of the UAV subject to its flight time constraint. Due to uncertainty in the locations of the ground devices and the communication dynamics, an accurate system model is difficult to acquire and maintain. With the help of stochastic modelling, we present a reinforcement learning based automated trajectory optimization algorithm. By dividing the considered region into small grids with finite state space and action space, we apply the Q-learning based automated trajectory optimization approach for maximizing the cumulative collected data during its flight time. Simulation results demonstrate that the reinforcement learning approach can find an optimal strategy under the flight time constraint.
基于无模型的无人机数据传输自动轨迹优化
在本文中,我们考虑一个无人机(UAV)无线网络,其中一组地面设备随机分布在一个区域内,每个设备都有一定数量的数据用于传输。无人机从起点到目的地飞越该区域。在飞行过程中,无人机希望在飞行时间约束下,通过优化飞行轨迹,与地面设备进行通信,使累积收集数据最大化。由于地面设备位置和通信动态的不确定性,精确的系统模型难以获取和维护。在随机模型的帮助下,提出了一种基于强化学习的自动轨迹优化算法。通过将考虑的区域划分为具有有限状态空间和动作空间的小网格,我们应用基于q学习的自动轨迹优化方法来最大化其飞行时间内的累积收集数据。仿真结果表明,强化学习方法可以在飞行时间约束下找到最优策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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