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面向5G专网资源数据的数智化校验体系研究

Research on digital intelligence verifi cation system for 5G private network resource data
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摘要 为了高效提升5G专网资源数据质量,完善5G专网资源数据校验方法,本文提出面向5G专网资源数据的数智化校验体系框架。该框架以校验规则库研究为基础,将数据质量指标分解为完整性、规范性和关联性指标,并将指标规则嵌入到平台,打造智能化校验模块,完善5G专网数据管理流程规范,协同数据处理平台形成数据管理闭环,最后提供一个原型设计思路。该数智化校验体系框架为后续5G专网资源数据质量相关研究提供了一个整体性思路,相关的技术思路和方法设计可为5G专网资源数据的数智化校验提供借鉴。 In order to efficiently improve the quality of 5G private network resource data and perfect the verification method of 5G private network resource data,a framework of digital intelligent verification system for 5G private network resource data is proposed,which is based on the research of verifi cation rule base,decomposes data quality indicators into completeness,normality and correlation,and embeds the indicator rules into 5G private network operation and maintenance platform to create an intelligent verifi cation module,and improve the data management process specifi cation of 5G private network and form a closed loop of data management in cooperation with the data processing platform.Finally,a prototype design idea is provided to illustrate the feasibility.The framework of this data-intelligent verifi cation system provides a holistic idea for the subsequent research on the quality of 5G dedicated network resource data,and the related technical ideas and method designs can provide reference for the data-intelligent verifi cation of 5G dedicated network resource data.
作者 梁晓明 刘丹月 LIANG Xiao-ming;LIU Dan-yue(China Mobile Group Guangdong Co.,Ltd.,Guangzhou 510000,China)
出处 《电信工程技术与标准化》 2024年第5期77-83,共7页 Telecom Engineering Technics and Standardization
关键词 数智化校验 数据质量 5G专网 intelligence verifi cation system data quality 5G private network
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