SAGIN 的弹性大规模访问:一种深度强化学习方法

Chaowei Wang;Mingliang Pang;Tong Wu;Feifei Gao;Lingli Zhao;Jiabin Chen;Wenyuan Wang;Dongming Wang;Zhi Zhang;Ping Zhang
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摘要

在“万物互联”和“数字双胞胎”的愿景下,未来6G将深度融合卫星、空中等多种异构网络,支持无缝连接和高效互操作,也被称为天空地一体化网络(SAGIN),其中基于Slotted ALOHA (S-ALOHA)的免授权上行随机接入可以降低海量物联网(IoT)设备的接入延迟和复杂性。然而,随着物联网用户数量的增加,S-ALOHA的碰撞概率不断增大,进一步降低了系统性能。在本文中,我们重点研究了在高空平台站(HAPS)辅助下的SAGIN中大规模物联网设备上行接入,研究了物联网设备的功率分配,以最大化系统接入能力和频谱效率(SE)。具体来说,我们首先优化了HAPS的3D部署。在此基础上,提出了基于S-ALOHA和非正交多址方法柔性融合的弹性海量接入(RMA)。为了在设备功率约束下最大化系统SE,我们将序列决策问题建模为马尔可夫决策过程,并使用优势参与者-批评者(A2C)算法进行求解。仿真结果表明,提出的RMA可以显著提高物联网终端的成功接入概率,基于A2C的资源调度也可以显著提高系统SE,且复杂度较低。
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Resilient Massive Access for SAGIN: A Deep Reinforcement Learning Approach
In the visionary ideals of “Internet of Everything” and “Digital Twins”, the future 6G will deeply integrate diverse heterogeneous networks such as satellite and aerial networks to support seamless connectivity and efficient interoperability, also known as space-air-ground integrated networks (SAGIN), in which the grant-free uplink random access based on Slotted ALOHA (S-ALOHA) can reduce access latency and complexity for massive Internet of Things (IoT) devices. However, with the increasing number of IoT users, the collision probability of S-ALOHA escalates and further degrades the system performance. In this paper, we focus on the massive IoT device uplink access in SAGIN aided by high altitude platform stations (HAPS), investigating power allocation for IoT devices to maximize system access capability and spectral efficiency (SE). Specifically, we first optimize 3D deployment of HAPS. Then the resilient massive access (RMA) based on flexible fusion of S-ALOHA and non-orthogonal multiple access methods is proposed. To maximize system SE with device power constraints, we model the sequential decision problem as a Markov decision process and solve it with the Advantage Actor-Critic (A2C) algorithm. Simulation results demonstrate the proposed RMA can significantly improve the IoT terminal successful access probability and the resource scheduling based on A2C also significantly increases the system SE with low complexity.
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Table of Contents IEEE Communications Society Information Corrections to “Coverage Rate Analysis for Integrated Sensing and Communication Networks” IEEE Journal on Selected Areas in Communications Publication Information Guest Editorial: Integrated Ground-Air-Space Wireless Networks for 6G Mobile—Part II
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