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1. 中国移动通信有限公司研究院,北京 100053
2. 中国移动通信集团有限公司,北京 100032
3. 中国移动通信集团河南有限公司,河南 郑州 450008
Published Online:2021-10,
Published:20 October 2021
移动端阅览
Lingli DENG, Ninglun GU, Xiangyang YUAN, et al. Network intelligence standards, open source and industry research[J]. Telecommunications science, 2021, 37(10): 12-21.
Lingli DENG, Ninglun GU, Xiangyang YUAN, et al. Network intelligence standards, open source and industry research[J]. Telecommunications science, 2021, 37(10): 12-21. DOI: 10.11959/j.issn.1000-0801.2021217.
网络智能化是AI技术与通信网络的硬件、软件、系统、流程等的深度融合,利用AI技术助力通信网络流程智能化,降本、增效、提质,促进技术体系变革,使能业务敏捷创新。自动驾驶网络提出通过简化网络架构、封装自治域和提供业务/网络操作控制闭环,实现用户体验最优化、管理操作自动化和资源效率最大化,为网络智能化明晰了目标架构和实现路径。首先,以自动驾驶网络的分层架构与分级框架为基础,梳理总结网络智能化技术体系;其次,对相关标准组织、开源社区、产业协作以及研发应用现状进行广泛调研;最后,结合运营商应用需求与相关实践,为引导后续产业发展提供差距分析、协作建议和总结展望。
Network intelligence is the deep integration of AI technology and communication network hardware
software
systems
processes
etc.to improve process intelligence
reduce costs
increase efficiency
improve quality
accelerate technology innovation
and enable service agility.The autonomous network proposes to optimize user experience
automate management operations
and maximize resource efficiency by simplifying the network architecture
encapsulating autonomous domains
and providing closed loops for business/network operation control
which clarifies the target architecture and implementation path for network intelligence.Firstly
based on the layered architecture and evaluation framework of the autonomous network
the network intelligent technology system was summerized.Secondly
extensive research on relevant standards organizations
open source communities
industrial collaboration
and R&D and application status were conducted.Finally
gap analysis
collaborative suggestions and summary prospects for guiding the following-up industry development were provided in terms of the application requirements from operators in related practices.
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