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基于5G技术的铁路基础设施动态检测数据实时汇聚方案研究 被引量:3

Real time aggregation scheme of railway infrastructure dynamic detection data based on 5G technology
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摘要 针对铁路基础设施动态检测数据人工汇聚时效性差、准确性低等问题,设计了基于5G移动通信(简称:5G)技术的铁路基础设施动态检测数据实时汇聚方案总体架构,阐述了方案的关键技术,并介绍了5G技术在铁路基础设施检测业务中的应用效果,为解决检测数据汇聚过程中的时效性、规范性、安全性等相关问题提供了思路。 Aiming at the problems of poor timeliness and low accuracy of manual aggregation of railway infrastructure dynamic detection data,this paper designed the overall architecture for the scheme of real time aggregation of railway infrastructure dynamic detection data based on 5th generation mobile communication(abbreviated as 5G),expounded the key technologies of the scheme,and introduced the application effect of 5G technology in railway infrastructure detection business.The scheme provids ideas for solving the related problems such as timeliness,standardization and safety in the process of detection data aggregation.
作者 姚莉 陶凯 张文轩 刘国跃 王凡 YAO Li;TAO Kai;ZHANG Wenxuan;LIU Guoyue;WANG Fan(Beijing INMAI Technology Co.Ltd.,Beijing 100081,China;Infrastructure Inspection Research Institute,China Academy of Railway Sciences Corporation Limited,Beijing 100081,China)
出处 《铁路计算机应用》 2022年第4期1-6,共6页 Railway Computer Application
基金 中国国家铁路集团有限公司系统性重大项目基金(P2020T001)。
关键词 5G移动通信 铁路基础设施 动态检测数据 实时汇聚 智能铁路 5th generation mobile communication(5G) railway infrastructures dynamic inspection real-time data aggregation intelligent railway
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