基于深度强化学习的无人机网络轨迹设计与泛化

Xuan Li, Qiang Wang, Jie Liu, Wenqi Zhang
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引用次数: 6

摘要

本文以无人机(UAV)作为基站飞行,提供无线通信服务。提出了两种设计无人机轨迹的算法,并分析了不同训练方法对无人机向新环境转移的影响。当无人机用于跟踪沿特定路径移动的用户时,我们提出了一种基于近端策略优化(PPO)的算法来最大化瞬时和率(MSR-PPO)。该无人机被建模为一个深度强化学习(DRL)代理,通过与环境的交互来学习如何移动。当无人机在未知路径上为用户提供紧急服务时,我们提出了一种随机训练近端策略优化(RT-PPO)算法,该算法可以将预先训练好的模型转移到新的任务中,以实现快速部署。与经典的DRL算法不同的是,智能体是在相同的任务上进行训练来学习其动作的,RT-PPO将任务的特征随机化,以获得转移到新任务的能力。数值结果表明,MSR-PPO算法取得了显著的改进,RT-PPO算法具有良好的泛化性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trajectory Design and Generalization for UAV Enabled Networks:A Deep Reinforcement Learning Approach
In this paper, an unmanned aerial vehicle (UAV) flies as a base station (BS) to provide wireless communication service. We propose two algorithms for designing the trajectory of the UAV and analyze the impact of different training approaches on transferring to new environments. When the UAV is used to track users that move along some specific paths, we propose a proximal policy optimization (PPO) -based algorithm to maximize the instantaneous sum rate (MSR-PPO). The UAV is modeled as a deep reinforcement learning (DRL) agent to learn how to move by interacting with the environment. When the UAV serves users along unknown paths for emergencies, we propose a random training proximal policy optimization (RT-PPO) algorithm which can transfer the pre-trained model to new tasks to achieve quick deployment. Unlike classical DRL algorithms that the agent is trained on the same task to learn its actions, RT-PPO randomizes the features of tasks to get the ability to transfer to new tasks. Numerical results reveal that MSR-PPO achieves a remarkable improvement and RT-PPO shows an effective generalization performance.
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