Energy Management Strategy based on Deep Q-network in the Solar-powered UAV Communications System

Jiayi Cong, Bin Li, Xianzhen Guo, Ruonan Zhang
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引用次数: 6

Abstract

In this paper, we consider a general UAV-enabled wireless communication system where a solar-powered UAV is deployed to provide continuous communication services for the ground users (GUs). To get better aerodynamic effect and longer maintaining-flight time, the fixed-wing UAV with thin-film solar cells is adopted for the ground coverage. We first divide the energy component of solar-powered UAV as the aerodynamic energy consumption, communication energy consumption and solar energy harvesting from solar cells. Then, we provide the communication capacity of the GUs in our UAV communication system. In order to obtain better throughput capacity under the precondition of continuous flight, we maximize the capacity by jointly optimizing all of the energy components of UAV and three-dimensional (3-D) flight trajectory. To solve the optimization problem, we employ deep Q-Network (DQN) to simplify the decision-making processes and improve the computational efficiency. Furthermore, we compared different retained energy and intensity variations to explore the performance of communications system. The numerical results show that the DQN algorithm can receive great reward in both maintaining-flight time and the capacity.
基于深q网络的太阳能无人机通信系统能量管理策略
在本文中,我们考虑了一种通用的无人机无线通信系统,其中部署了太阳能无人机为地面用户(GUs)提供连续通信服务。为了获得更好的气动效果和更长的维持飞行时间,地面覆盖采用了带有薄膜太阳能电池的固定翼无人机。首先将太阳能无人机的能量构成分为气动能耗、通信能耗和太阳能电池的太阳能收集。然后给出了无人机通信系统中GUs的通信能力。为了在连续飞行的前提下获得更好的吞吐量,通过对无人机的所有能量分量和三维飞行轨迹进行联合优化,使能力最大化。为了解决优化问题,我们采用深度q网络(deep Q-Network, DQN)来简化决策过程,提高计算效率。此外,我们比较了不同的保留能量和强度变化,以探讨通信系统的性能。数值结果表明,DQN算法在保持飞行时间和保持容量方面都有较好的效果。
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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