优化辅助低地轨道卫星通信的 HAP 功率分配

Zain Ali;Zouheir Rezki;Mohamed-Slim Alouini
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摘要

下一代通信设备需要强大的连接能力,以便将偏远或受灾地区的传感器或移动设备等数以百万计的地面设备连接到网络。非地面网络(NTN)节点可在满足这些要求方面发挥重要作用。具体来说,低地轨道(LEO)卫星已成为一种高效、经济的技术,可通过空间远距离连接设备。然而,由于低功率和环境限制,低地轨道卫星可能需要高空平台(HAP)或无人飞行器等空中设备的协助,才能将数据传送到地面设备。此外,近地轨道网的功率有限,因此有效利用可用资源至关重要。在本文中,我们提出了一个低地轨道卫星与多个地面设备通信的模型,借助 HAP 将低地轨道数据转发给地面设备。我们提出的问题是优化低地轨道卫星和所有 HAP 的功率分配,使系统总速率最大化。为了利用卫星自由空间光学(FSO)通信的优势,我们考虑由低地轨道卫星通过 FSO 链路向 HAP 发送数据,然后通过无线电频率信道将数据广播给连接的地面设备。我们将复杂的非凸问题转化为凸问题,并计算出基于卡鲁什-库恩-塔克(KKT)条件的低地轨道卫星和 HAP 功率分配问题解决方案。然后,为了减少计算时间,我们提出了一种软行为批判(SAC)强化学习(RL)框架,该框架在提供与 KKT 方案性能相当的解决方案的同时,大大缩短了计算时间。我们的仿真结果表明,所提出的解决方案性能卓越,可扩展至系统中任何数量的 HAP 和地面设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing Power Allocation in HAPs Assisted LEO Satellite Communications
The next generation of communication devices will require robust connectivity for millions of ground devices such as sensors or mobile devices in remote or disaster-stricken areas to be connected to the network. Non-terrestrial network (NTN) nodes can play a vital role in fulfilling these requirements. Specifically, low-earth orbiting (LEO) satellites have emerged as an efficient and cost-effective technique to connect devices over long distances through space. However, due to their low power and environmental limitations, LEO satellites may require assistance from aerial devices such as high-altitude platforms (HAPs) or unmanned aerial vehicles to forward their data to the ground devices. Moreover, the limited power available at the NTNs makes it crucial to utilize available resources efficiently. In this paper, we present a model in which a LEO satellite communicates with multiple ground devices with the help of HAPs that relay LEO data to the ground devices. We formulate the problem of optimizing power allocation at the LEO satellite and all the HAPs to maximize the sum-rate of the system. To take advantage of the benefits of free-space optical (FSO) communication in satellites, we consider the LEO transmitting data to the HAPs on FSO links, which are then broadcast to the connected ground devices on radio frequency channels. We transform the complex non-convex problem into a convex form and compute the Karush-Kuhn-Tucker (KKT) conditions-based solution of the problem for power allocation at the LEO satellite and HAPs. Then, to reduce computation time, we propose a soft actor-critic (SAC) reinforcement learning (RL) framework that provides the solution in significantly less time while delivering comparable performance to the KKT scheme. Our simulation results demonstrate that the proposed solutions provide excellent performance and are scalable to any number of HAPs and ground devices in the system.
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