1.移动网络和移动多媒体技术国家重点实验室,广东 深圳 518055
2.中兴通讯股份有限公司,广东 深圳 518057
[ "赵喆(1974- ),男,中兴通讯股份有限公司无线研究院副院长,重点研究方向包括基带芯片总架构设计、通信基站IT化架构设计、无线关键算法和系统综合方案设计等。" ]
[ "陈嘉君(1995- ),男,中兴通讯股份有限公司工程师,主要研究方向为人工智能与移动通信。" ]
[ "高音(1980- ),女,中兴通讯股份有限公司正高级工程师、标准预研总工程师,3GPP RAN3原主席,CCSA TC624 WG4副组长,主要从事5G/6G无线网络创新技术研究和标准推进工作。" ]
收稿:2025-09-29,
修回:2025-10-14,
录用:2025-10-20,
纸质出版:2026-01-20
移动端阅览
赵喆,陈嘉君,高音.面向5G-Advanced与6G的智能无线电接入网:关键标准技术与未来演进[J].电信科学,2026,42(01):105-115.
Zhao Zhe,Chen Jiajun,Gao Yin.Intelligent radio access network for 5G-Advanced and 6G: key standard technologies and future evolution[J].Telecommunications Science,2026,42(01):105-115.
赵喆,陈嘉君,高音.面向5G-Advanced与6G的智能无线电接入网:关键标准技术与未来演进[J].电信科学,2026,42(01):105-115. DOI: 10.11959/j.issn.1000-0801.2026029.
Zhao Zhe,Chen Jiajun,Gao Yin.Intelligent radio access network for 5G-Advanced and 6G: key standard technologies and future evolution[J].Telecommunications Science,2026,42(01):105-115. DOI: 10.11959/j.issn.1000-0801.2026029.
5G/5G-Advanced在持续提升关键性能指标方面被寄予厚望,需要在时延、可靠性、连接数密度与用户体验等方面实现进一步突破。传统以人工操作为主的管理模式在效率、准确性与成本等方面的局限日益凸显。相较于传统优化方法,人工智能技术凭借其预测性与前瞻性,推动网络管理由被动应对转向主动感知与自优化,实现从“监测-响应”到“预判-编排”的迁移。基于3GPP在无线电接入网(radio access network,RAN)智能化方向的关键技术与标准化路径,结合典型用例场景,分析了AI/ML模型管理、数据采集与交互机制。面向6G智能RAN,进一步提出“意图驱动的协作任务”这一新型架构理念,其关键是通过RAN对应用层信息的感知、任务级别的服务质量(quality of service,QoS)监控、动态组和资源管理等技术实现6G网络人机及碳硅生态系统的无缝交互。
5G/5G-Advanced is expected to continuously enhance key performance indicators
requiring further breakthroughs in aspects such as latency
reliability
connection density
and user experience. The limitations of traditional human-computer interactive network management
which relies primarily on manual operations
are becoming increasingly evident in terms of efficiency
accuracy
and cost. Compared to traditional optimization methods
the predictive and forward-looking capabilities of AI/ML enable the network to shift from passive response to active perception and self-optimization
achieving a transition from “monitoring-reaction” to “prediction-orchestration”. Based on the key technologies and standardization paths for radio access network (RAN) intelligence defined by 3GPP
the AI/ML model management
data collection
and interaction mechanisms were analyzed in conjunction with typical use case scenarios. For intelligent RAN in 6G
a novel architectural concept termed the “intent-driven collaborative task”was proposed. Its key implementation relied on RAN's awareness of application-layer information
task-level quality of service (QoS) monitoring
dynamic grouping and resource management
and other technologies to achieve seamless interaction between human
machine
and the carbon-silicon ecosystem in 6G networks.
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