6G超低时延超高可靠大规模无线传输技术

项目来源

国家重点研发计划(NKRD)

项目主持人

朱鹏程

项目受资助机构

北京交通大学

项目编号

2021YFB2900301

立项年度

2021

立项时间

未公开

项目级别

国家级

研究期限

未知 / 未知

受资助金额

966.00万元

学科

多模态网络与通信

学科代码

未公开

基金类别

“多模态网络与通信”重点专项

关键词

无线通信 ; 超低时延 ; 超高可靠 ; 超大规模MIMO ; 网络仿真 ; 子带双工系统 ; Wireless communication ; Ultra-low latency ; Ultra-high reliability ; Hyperscale MIMO ; Network simulation ; Subband duplex system

参与者

艾渤;陈霞;李宗辉;牛勇;蒋雁翔;郝鹏

参与机构

东南大学;中兴通讯股份有限公司

项目标书摘要:超低时延超高可靠通信是6G垂直行业应用的关键技术,是6G最重要的需求之一。随着6G 网络规模不断扩大,跨域数据传输时延与可靠性难以保障;新兴垂直业务需要时频空波码等无线资源与计算缓存资源的协同服务。基于此,本课题将面向6G超低时延超高可靠跨域协同与多域资源调配关键技术,围绕业务驱动的跨域时延分析与多网协同机制、海量终端跨域全网智能协同与适配术、6G 超低时延超高可靠多域资源智能管控等问题展开研究。具体地,本课题将研究跨域时延与多网协同机制,建立流量与链路状态驱动的网络端到端时延分析模型,实现跨自治域高效路径编排;研究海量终端跨域协同与适配技术,构建面向海量终端的异构分布式学习架构,实现多域网络资源的智能实时优化;研究超低时延超高可靠边缘多域资源的智能管控,建立用户业务与多域资源动态映射关系,构建动态高可靠网络服务机制。

Application Abstract: Ultra-low latency and ultra-reliable communication is one of the key technologies for future 6G networks.As network scale keeps increasing,it is difficult to guarantee the latency and reliability of cross-domain data transmission.Emerging vertical services require synergistic services between radio resources and computing cache resources.This project focuses on the key technologies of 6G ultra-low latency and ultra-high reliability cross-domain collaboration and multi-domain resource allocation,focusing on service-driven cross-domain delay analysis and multi-network collaboration mechanism,cross-domain network-wide intelligent collaboration and adaptation of massive terminals,and intelligent management and control of 6G ultra-low latency and ultra-high reliability multi-domain resources.Specifically,this project will study the cross-domain delay and multi-network collaboration mechanism,establish an end-to-end network delay analysis model driven by traffic and link state,and realize efficient path orchestration across autonomous domains.Research on cross-domain collaboration and adaptation technology of massive terminals,build a heterogeneous distributed learning architecture for massive terminals,and realize intelligent real-time optimization of multi-domain network resources.Research on the intelligent management and control of ultra-low latency and ultra-high reliability edge multi-domain resources,establish a dynamic mapping relationship between user services and multi-domain resources,and build a dynamic and highly reliable network service mechanism.

项目受资助省

北京市

  • 排序方式:
  • 9
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  • 1.Resource Hopping Multiple Access based Federated Learning Scheme for 6G Massive IoT with Differential Privacy

    • 关键词:
    • Big data;Data communication systems;Data privacy;Internet of things;Learning systems;Mobile telecommunication systems;Data environment;Decentralised;Differential privacies;Hopping patterns;Large scale Internet;Large scale internet of thing;Learning schemes;Multiple access;Rapid growth;Resource hopping multiple access
    • Zhang, Yimeng;Li, Guangkai;Mal, Guoyu;Mal, Yiyan;Yang, Mi;Lu, Yunlong;Ail, Bo
    • 《10th International Conference on Computer and Communication Systems, ICCCS 2025》
    • 2025年
    • April 18, 2025 - April 21, 2025
    • Chengdu, China
    • 会议

    With the widespread use of mobile devices and the rapid growth of big data, the application of federated learning in decentralized data environments has attracted increasing attention. 5G and 6G mobile communication systems take the large-scale Internet of things as one of the core scenarios, which can be employed to realize the real-time data transmissions of massive terminals in federated learning. Multiple access technology is the key to achieve massive connectivity in 6G massive IoT. Resource hopping multiple access achieves efficient access by assigning different resource hopping patterns to different users. In this paper, a federated learning scheme combining RHMA and differential privacy is proposed, which divides the communication channel into multiple subchannels and allocates hopping patterns according to data characteristics and computational resources. Therein, differential privacy mechanism effectively protects the privacy of user data by adding noise to the model training process of federated learning. Experimental results show that the proposed scheme not only improves the training speed of the federated learning model, but also improves the robustness and security of the system while ensuring user privacy. © 2025 IEEE.

    ...
  • 2.Model-Based Deep Learning for Massive Access in mmWave Cell-Free Massive MIMO System

    • 关键词:
    • Clustering algorithms;Communication channels (information theory);Expectation maximization algorithm;Gaussian distribution;Image segmentation;Monolithic microwave integrated circuits;Time difference of arrival;Cell-free;Cell-free massive multiple-input multiple-output;Deep learning;Grant-free random access;Millimeter wave commu-nication;Model-based OPC;Multiple inputs;Multiple outputs;Multiple-Input Multiple- Output systems;Random access
    • Li, Tao;Jiang, Yanxiang;Huang, Yige;Zhu, Pengcheng;Zheng, Fu-Chun;Wang, Dongming
    • 《59th Annual IEEE International Conference on Communications Workshops, ICC Workshops 2024》
    • 2024年
    • June 9, 2024 - June 13, 2024
    • Denver, CO, United states
    • 会议

    In this paper, massive access in millimeter wave (mmWave) cell-free massive multiple-input multiple-output (CF-mMIMO) system is investigated. We propose a model-based deep learning algorithm to solve the joint active detection and channel estimation (JADCE) problem in grant-free random access. By exploiting structured sparsity and cluster sparsity, we unfold the vector approximate message propagation (VAMP) algorithm with Bernoulli Gaussian mixed distribution into a network and introduce a parameter estimation module to adapt different active ratios and noise variance based on the expectation maximization (EM) algorithm. The proposed network benefits from the param-eter learning ability of deep learning and the low computation complexity of the model-based method. Simulation results show that the proposed network achieves better detection performance and faster convergence rate than the considered state-of-the-art algorithms. © 2024 IEEE.

    ...
  • 3.Base Station Association and Handover for Cellular-Connected Multi-Antenna UAVs

    • 关键词:
    • Aircraft communication;Antenna grounds;Beam forming networks;Beamforming;Mobile antennas;Multibeam antennas;Unmanned aerial vehicles (UAV);Aerial vehicle;Cellular netework;Cellulars;Coverage probabilities;Ground terminals;Hand over;Handover management;Management scheme;Multi-antenna;Unmanned aerial vehicle
    • Su, Junpeng;Zheng, Fu-Chun
    • 《12th IEEE International Black Sea Conference on Communications and Networking, BlackSeaCom 2024》
    • 2024年
    • June 24, 2024 - June 27, 2024
    • Tbilisi, Georgia
    • 会议

    In this paper, we investigate coverage enhancement, base station (BS) association, and BS handover management schemes for cellular-connected unmanned aerial vehicles (UAVs) equipped with beamforming capabilities. Specifically, we consider the following characteristics of cellular-connected UAVs: 1) They can receive signals from more BSs than ground terminals, but they also experience greater interference. 2) They often reside at locations with in zero or low power directions of BSs, resulting in unstable reference signal received power (RSRP). These characteristics lead to issues such as poor coverage for cellular-connected UAVs and frequent BS handovers. We have therefore in this paper established a multi-antenna cellular-connected UAV system, where the UAV can perform beamforming based on predefined beamforming vectors. Subsequently, we considered two communications scenarios: UAV being associated with a single BS and multiple BSs cooperating to serve the UAV. In each scenario, we proposed corresponding BS association, UAV beamforming and handover strategies to enhance the UAV's coverage probability in cellular networks and to some extent reduce the number of handovers for the UAV. Finally, we validated the effectiveness of the proposed methods in both scenarios through simulations. © 2024 IEEE.

    ...
  • 4.User-Centric Clustering for Uplink Cell-Free Massive MIMO URLLC Systems

    • 关键词:
    • Genes;Image coding;Image compression;Image segmentation;Image thinning;Access points;Cell-free;Cell-free massive MIMO;Clusterings;Communications systems;Low-latency communication;Multiple inputs;Multiple outputs;Ultra reliable and low-latency communication;User-centric
    • Wang, Jingchen;Fang, Jiaxing;Chen, Li;Guo, Haiyou;Shu, Feng;Zhu, Pengcheng
    • 《2024 IEEE/CIC International Conference on Communications in China, ICCC 2024》
    • 2024年
    • August 7, 2024 - August 9, 2024
    • Hangzhou, China
    • 会议

    This paper considers the uplink cell-free massive multiple-input multiple-output (CF mMIMO) ultra reliable and low-latency communications (URLLC) system. Different from the original CF mMIMO, we consider a user-centric (UC) architecture, where each device is served by a cluster of access points (APs) in the system. Therefore, it requires less signaling overhead and computations for signal detection. However, the APs cluster for each device is formed solely based on the received power of the reference signal at APs in the most related works, which can't guarantee fairness among devices. For this, we propose a UC clustering algorithm to overcome the limitation. Firstly, we derive the lower bound of ergodic rates for CF mMIMO URLLC systems with local partial zero-forcing (PZF) performed at APs and large-scale fading decoding (LSFD) performed at the central processing unit (CPU). Then, we utilize a genetic algorithm to solve the max-min rate optimization problem of UC clustering. Simulation results demonstrate its effectiveness in ensuring fairness in CF mMIMO URLLC systems. © 2024 IEEE.

    ...
  • 5.Joint Optimization of Flying Trajectory and Task Offloading for UAV-Enabled MEC Networks: A Digital Twin-Assisted Hybrid Learning Approach

    • 关键词:
    • Benchmarking;Computation offloading;Deep learning;Deep reinforcement learning;Dynamic random access storage;Maneuverability;Mobile edge computing;Reinforcement learning;Resource allocation;Static random access storage ;Unmanned aerial vehicles (UAV);VTOL/STOL aircraft;Aerial vehicle;Edge computing;Hybrid learning approach;Joint optimization;Learning modules;Manoeuvrability;Optimization module;Reinforcement learnings;Task delay;Task offloading
    • Wu, Jiaqi;Luo, Jingjing;Wang, Tong;Gao, Lin
    • 《99th IEEE Vehicular Technology Conference, VTC2024-Spring 2024》
    • 2024年
    • June 24, 2024 - June 27, 2024
    • Singapore, Singapore
    • 会议

    Unmanned Aerial Vehicles (UAVs), with their high levels of flexibility and maneuverability, can greatly enhance the capabilities of Mobile Edge Computing (MEC) by acting as edge computing servers. In practice, however, it is often challenging to jointly optimize the flying trajectories of UAVs and the offloading decisions of tasks, due to the fast and randomly changing of physical environments. In this work, we investigate an UAV-enable MEC network with the assistance of Digital Twin (DT), where a DT layer is introduced to simulate the Physical Entity (PE) layer, generate different strategies, and evaluate their performances. Specifically, we formulate a joint flying trajectories, task offloading, and resource allocation problem on the DT layer, aiming at minimizing both task delay and energy consumption, under the maximum tolerated delay and resource constraints. To solve the problem in an online distributed manner and implement the derived strategies on the real PE layer, we propose a hierarchical learning approach, which consists of a Deep Reinforcement Learning (DRL) module and a Constrained Optimization (CO) module. First, the DRL module determines the UAVs' flying trajectories. Then, the CO module determines the MDs' task offloading decisions and the associated resource allocations, given the UAV s' flying decisions. Finally, the outputs of both modules are combined together to train the DRL module by using the Deep Deterministic Policy Gradient (DDPG) method. Experiment results show that our proposed DT-assisted scheme outperforms existing benchmark schemes in terms of both task delay and energy cost. © 2024 IEEE.

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  • 6.Improved Design of Resource Hopping Based Multiple Access for Grant-Free Random Access in 6G mMTC System

    • 关键词:
    • Integrated circuit design;Interference suppression;Mobile telecommunication systems;Multiple access interference;Collision resolution;Grant-free random access;Improved designs;Multiple access;Random access;Resource hopping based multiple access;Successive interference cancelation;Successive interference cancellations;User identification
    • Zhang, Wanyue;Li, Guangkai;Ma, Guoyu;Ma, Yiyan;Wang, Wanqiao;Feng, Botao;Ai, Bo
    • 《99th IEEE Vehicular Technology Conference, VTC2024-Spring 2024》
    • 2024年
    • June 24, 2024 - June 27, 2024
    • Singapore, Singapore
    • 会议

    In order to satisfy the increasingly massive connection in mMTC system, multiple access technology is a key enabler in the future 6G mMTC. Recently, an emerging multiple access scheme named resource hopping based multiple access (RHMA) has been proposed to achieve reliable user identification and data detection in grant-free random access for mMTC. However, the collision resolution of RHMA is still limited for the future 6G mMTC requirements. Therefore, an improved design is proposed in this paper to enhance the collision resolution capability of RHMA. Specifically, successive interference cancellation (SIC) is combined with user identification and segment decoding at the receiver of RHMA. Also, the user identification of RHMA is improved to eliminate the false alarm user caused by collision and blind channel estimation is considered to recover the signal on the colliding segments. The simulation results show that the improved design is able to achieve a higher collision resolution capability of RHMA. © 2024 IEEE.

    ...
  • 7.Ray-tracing Based Channel Modeling and Characteristics Analysis for LEO Satellite-to-Ground Systems

    • 关键词:
    • Communication satellites;Orbits;Satellite communication systems;Spectral density;Channel characteristics;Channel modelling;Characteristics analysis;Low earth orbit satellite communication;Low earth orbit satellites;Modeling analyzes;Received power;Satellite communications;Urban environments;Urban scenarios
    • Zhang, Kaiyuan;Yang, Songjiang;Wang, Yinghua;Huang, Jie;Wang, Cheng-Xiang
    • 《18th European Conference on Antennas and Propagation, EuCAP 2024》
    • 2024年
    • March 17, 2024 - March 22, 2024
    • Glasgow, United kingdom
    • 会议

    With the vision of global coverage for the sixth generation (6G) wireless communication systems, the low Earth orbit (LEO) satellite systems have drawn considerable attention. In this paper, A LEO satellite-to-ground channel model for urban scenarios is proposed based on ray-tracing. The channel model is divided into the atmospheric part and near-ground part, and the effects of ionospheric scintillation, rainfall, and multipath are studied. The model analyzes the multipath effect in the near-ground with the image method, assuming that the incident rays come from a circular plane transmitter over the ground. Channel characteristics such as delay power spectral density (PSD) and received power of signals are derived. The simulation results show that the received power increases with the satellite elevation angle increasing in urban scenarios. © 2024 18th European Conference on Antennas and Propagation, EuCAP 2024. All Rights Reserved.

    ...
  • 8.A Novel Link Adaptation Approach for URLLC: A DRL-Based Method with OLLA

    • 关键词:
    • Channel state information;Deep learning;Block error rates;Communications systems;Deep reinforcement learning;Finite blocklength;Link adaptation;Low-latency communication;Modulation and coding schemes;Outdated CSI;Reinforcement learnings;Ultra-reliable low latency communication
    • Gao, Wei;Zheng, Paul;Hu, Yulin;Shen, Chao;Ai, Bo;Schmeink, Anke
    • 《25th IEEE Wireless Communications and Networking Conference, WCNC 2024》
    • 2024年
    • April 21, 2024 - April 24, 2024
    • Dubai, United arab emirates
    • 会议

    The strict block error rate (BLER) requirement under the time-varying nature of wireless channels in Ultra-reliable low-latency communication (URLLC) systems pose sig-nificant challenges for link adaptation (LA). To tackle these challenges, we propose a novel LA method that adaptively selects the modulation and coding scheme (MCS) without requiring perfect channel knowledge which is unrealistic to obtain in URLLC. The goal is to maximize the coding rate while ensuring strict BLER constraints in URLLC systems. To achieve this, we utilize the Deep Q-Network (DQN) algorithm to select the MCS dynamically. Furthermore, we enhance the MCS selection process by using the Outer Loop Link Adaptation algorithm for transmission reliability improvement. Given the nature of URLLC, the samples of ACK and NACK are highly imbalanced, which can cause issues in the training process. To address it, we propose a novel training mechanism that improves the performance of DQN model and convergence speed during the training stage. Through extensive simulations, we demonstrate that our proposed algorithm outperforms existing methods regarding coding rate and imposing strict BLER constraints. © 2024 IEEE.

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  • 9.A Monte Carlo Tree Search-Based Routing Scheme With VR Video QoE Guarantees in SDNs

    • 关键词:
    • Application programs;Monte Carlo methods;Quality of service;Routing protocols;Virtual reality;High pressure;Monte carlo search;Quality-of-experience;Routing scheme;Search-based;Software-defined networking;Software-defined networkings;Tree-search;Video quality;Virtual reality
    • Xu, Mingchun;Zhou, Yingjie;Chen, Yu
    • 《25th IEEE Wireless Communications and Networking Conference, WCNC 2024》
    • 2024年
    • April 21, 2024 - April 24, 2024
    • Dubai, United arab emirates
    • 会议

    Virtual Reality (VR) applications have attracted great attention from both industry and academia in recent years. With an increasing demand for these applications, there is high pressure on resource and performance optimization using software-defined networking. In this paper, we consider one type of QoE models in the literature; and then use the Monte Carlo Tree Search and develop an SDN-based routing scheme to guarantee users' QoE for VR applications. Our routing scheme is tested using computer simulation in a 5x5 square grid network. Simulation results indicate that our routing scheme consistently outperforms the shortest path first (SPF) algorithm in terms of the QoE scores. © 2024 IEEE.

    ...
  • 10.Joint Beamforming and Power Control Scheme for URLLC Service in RSMA-Integrated Network-Assisted Full-Duplex MIMO System

    • 关键词:
    • Resource allocation;Full-duplex;Joint beamforming;Low-latency communication;Multiple access;Network-assisted full-duplex;Power-control;Rate splitting;Rate-splitting multiple access;System throughput;Ultra-reliable and low-latency communication
    • Cheng, Mengqian;Jiang, Peng;Hao, Peng;Tao, Tao;Shu, Feng;Zhu, Pengcheng
    • 《2024 IEEE/CIC International Conference on Communications in China, ICCC 2024》
    • 2024年
    • August 7, 2024 - August 9, 2024
    • Hangzhou, China
    • 会议

    In this paper, we introduce rate-splitting multiple access (RSMA) into the network-assisted full-duplex (NAFD) MIMO system for downlink transmission. Based on this framework, we investigate the resource allocation problem of ultrareliable and low-latency communication (URLLC). Our objective is to maximize the total system throughput by jointly optimizing downlink beamforming, common rate allocation and uplink user power control. This problem is intractable due to its non-convex nature, thus we employ a low-complexity algorithm to obtain a suboptimal solution. Simulation results demonstrate that the proposed algorithm converges rapidly and significantly improves the system throughput. © 2024 IEEE.

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