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面向6G的用户为中心网络研究综述

施建锋 杨照辉 黄诺 陈晓 张玉洁 陈明

施建锋, 杨照辉, 黄诺, 陈晓, 张玉洁, 陈明. 面向6G的用户为中心网络研究综述[J]. 电子与信息学报, 2023, 45(5): 1873-1887. doi: 10.11999/JEIT220242
引用本文: 施建锋, 杨照辉, 黄诺, 陈晓, 张玉洁, 陈明. 面向6G的用户为中心网络研究综述[J]. 电子与信息学报, 2023, 45(5): 1873-1887. doi: 10.11999/JEIT220242
SHI Jianfeng, YANG Zhaohui, HUANG Nuo, CHEN Xiao, ZHANG Yujie, CHEN Ming. A Survey on User-centric Networks for 6G[J]. Journal of Electronics & Information Technology, 2023, 45(5): 1873-1887. doi: 10.11999/JEIT220242
Citation: SHI Jianfeng, YANG Zhaohui, HUANG Nuo, CHEN Xiao, ZHANG Yujie, CHEN Ming. A Survey on User-centric Networks for 6G[J]. Journal of Electronics & Information Technology, 2023, 45(5): 1873-1887. doi: 10.11999/JEIT220242

面向6G的用户为中心网络研究综述

doi: 10.11999/JEIT220242
基金项目: 江苏省自然科学基金(BK20210641),东南大学移动通信国家重点实验室开放研究基金(2021D11, 2022D10),江苏省高等学校自然科学研究项目(20KJB510037, 21KJB510031),南京信息工程大学人才启动项目(2020r009)
详细信息
    作者简介:

    施建锋:男,博士,讲师、研究生导师,研究方向为新一代移动通信网络、天地一体化网络、无线资源管理、凸优化理论等

    杨照辉:男,博士,博士后研究员,研究方向为无人机辅助通信、超可靠超低时延通信、边缘计算和非正交多址接入等

    黄诺:男,博士,副研究员,研究方向为无线光通信系统的传输设计和无线通信网络的资源分配等

    陈晓:女,博士,讲师,研究方向为大规模MIMO无线通信、基于机器学习的无线通信等

    张玉洁:女,硕士,讲师,研究方向为绿色能源、新能源电池和智能控制等

    陈明:男,博士,教授、博士生导师,研究方向为信号处理、无线资源管理等

    通讯作者:

    施建锋 jianfeng.shi@nuist.edu.cn

  • 中图分类号: TN929.5

A Survey on User-centric Networks for 6G

Funds: The Natural Science Foundation of Jiangsu Province of China (BK20210641), The Open Research Fund of National Mobile Communications Research Laboratory, Southeast University (2021D11, 2022D10), The Natural Science Foundation of the Jiangsu Higher Education Institutions of China (20KJB510037, 21KJB510031), The Startup Foundation for Introducing Talent of NUIST (2020r009)
  • 摘要: 与第5代移动通信网络(5G)相比,第6代移动通信网络(6G)有望引入新的性能指标和应用方案,如全球覆盖、更高的频谱/能源/成本效率、更高的智能和安全水平。用户为中心网络(UCN)将成为实现6G的关键推动者,因为其突破了传统基站为中心网络并与信息产业的新兴技术形成了有效融合。该文将从物理层的信道估计和预测、网络上层的性能分析以及链路层的无线资源管理等方面综述这一新型网络的研究现状。首先,讨论和分析UCN的概念和总体网络架构;其次,总结UCN网络中信道估计预测方法、性能分析策略和无线资源管理(RRM)方案;最后,在广泛的调研基础上,探讨UCN网络中的开放性问题,为今后的研究方向提供思路。此综述旨在使读者快速而全面地了解UCN的当前技术状况,从而吸引更多的研究人员进入这一领域。
  • 图  1  近几年全球移动数据量增长趋势[1]

    图  2  UCN网络示意图

    图  3  UCN中具有解耦特性的不同场景

    图  4  UCN各层次节点中资源配备示意图

    图  5  UCN中多维无线资源分配示意图

    图  6  物理层无线资源与网络上层资源示意图

    表  1  已有综述工作对比

    文献全面综述信道估计与预测性能分析无线资源管理贡献
    文献[8]××CRAN在工业界和学术界的全面综述:物理层和
    上层无线资源管理方面的关键技术。
    文献[9]×××CRAN体系架构、优势和挑战及其实现。
    本文UCN信道估计、性能分析和无线资源管理等方面的全面综述:
    已有工作总结和未来研究热点探讨。
    下载: 导出CSV

    表  2  缩略词

    缩写全拼含义
    3GPPthe Third-Generation Partnership Project第3代伙伴计划
    5Gthe Fifth Generation mobile network第5代移动通信网络
    6Gthe Sixth Generation mobile network第6代移动通信网络
    APAccess Point接入节点
    BCDBlock Coordinate Descent块坐标下降
    BINLPBinary Integer Non-Linear Programming二进制整数非线性优化
    CRANCloud Radio Access Network云接入网
    CSIChannel State Information信道状态信息
    CVSINRCluster Virtual Signal-to-Interference-plus-Noise Ratio群虚拟信干燥比
    DeDUDecoupled Downlink and Uplink上下行解耦
    MISOMultiple Input Single Output多输入单输出
    MIMOMultiple Input Multiple Output多输入多输出
    MINLPMixed-Integer Non-Linear Programming混合整型非线性优化
    SISOSingle Input Single Output单输入单输出
    TCNTraditional Cellular Network传统蜂窝网络
    UCNUser-Centric Network用户为中心网络
    UDNUltra-Dense Network超密集网络
    WMMSEWeighted Minimum Mean Square Error权重最小均方误差
    下载: 导出CSV

    表  3  UCN与TCN之间的对比

    对比内容网络
    TCNUCN
    部署范围较大范围室内/热点区域
    AP密度
    用户密度远高于AP密度与AP密度相仿
    覆盖特点异构,不规则形状单层,规则的蜂窝形状
    用户移动性
    速率中低
    前传链路理想的有线链路理想的有线链路/非理想的无线链路
    下载: 导出CSV

    表  4  信道估计与预测研究工作总结

    类别文献方法
    基于模型的传统估计预测文献[15,26]压缩感知
    文献[18,19,21]图论
    文献[16,17,20,25,27]优化理论(松弛、罚函数、BCD)
    基于人工智能的新型估计预测文献[23,24,30-35]深度神经网络(循环神经网络、卷积神经网络)
    文献[28,29,34,35]长短时记忆网络
    下载: 导出CSV

    表  5  性能分析研究工作总结

    性能指标类别场景文献方法
    概率类(覆盖概率、中断概率和
    用户接入概率等)
    SISO文献[36]随机几何
    SISO文献[37]级数逼近
    DeDU文献[48]随机几何
    容量类(中断容量、遍历容量和
    用户数据速率等)
    SISO文献[38-40]随机几何
    MIMO文献[44,45]分布逼近
    综合类(能效和切换率等)SISO文献[47]随机几何
    下载: 导出CSV

    表  6  无线资源管理研究工作总结

    类别资源种类文献方法
    单维资源管理功率资源文献[49-52]交替迭代、凸优化理论、深度Q学习网络
    计算资源文献[54,55]深度强化学习、合作博弈理论
    训练资源文献[53]图论
    2维资源管理子载波&功率文献[56,57]分支切割、交替迭代
    链路容量&计算文献[58]松弛近似、罚函数
    比特&计算文献[58,59]线性优化理论、循环神经网络
    波束方向&功率文献[60-62]松弛近似、深度Q学习网络
    3维资源管理子载波、功率&比特文献[63]交替迭代
    用户调度、子载波&功率文献[64,65]交替迭代、粒子群算法、松弛近似
    比特、波束方向&功率文献[66]深度学习神经网络
    AP集群、波束方向&功率文献[67-72]粒子群算法、凸优化理论、松弛近似、WMMSE、
    深度残差学习网络、深度神经网络
    导频、波束方向&功率文献[73]信号处理理论、松弛近似
    4维资源管理计算、存储、波束方向&功率文献[74]松弛近似、交替迭代
    AP集群、传输时隙、波束方向&功率文献[75]松弛近似、凸优化理论
    AP集群、前传链路压缩比、波束方向&功率文献[76]范数最小化、凸优化理论
    用户调度、AP集群、子载波&功率文献[77]交替迭代、协同优化理论
    下载: 导出CSV
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出版历程
  • 收稿日期:  2022-03-08
  • 修回日期:  2022-05-23
  • 网络出版日期:  2022-06-01
  • 刊出日期:  2023-05-10

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