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基于大数据云计算的铁路智能运维系统技术研究 被引量:17

Study on Intelligent Operation and Maintenance System Based on Big Data and Cloud Computing
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摘要 在铁路信息化发展的过程中,各铁路相关业务系统产生了大量的基础数据,既是铁路维护管理和运营决策的重要支撑,也是铁路相关科研工作的重要依据。而在日常运维工作中,仅靠人工无法高效利用这些数据。为此,提出利用云计算技术对铁路各类业务产生的大数据进行深度挖掘分析,使铁路运维达到智能分析的目的。 In the process of railway informatization,a large amount of basic data has being generated .which plays a crucial role in the maintenance,operation and decision of railways and serves as the foundation for related scientific research.However,it's impossible to make full use of the data manually.So,it is proposed to conduct in-depth data mining into the big data generated in routine operation and maintenance by using cloud computing technology to achieve the aim of intelligent analysis for operation and maintenance.
作者 林刚 Lin Gang
出处 《铁道通信信号》 2019年第5期37-41,共5页 Railway Signalling & Communication
关键词 铁路 大数据 云计算 智能 运营维护 Railway Big data Cloud computing Intelligence Operation and maintenance
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