• 查询稿件
  • 获取最新论文
  • 知晓行业信息
刘敏, 马小宁, 戚小玉, 刘彦军, 武威. 铁路数据服务平台综合管理驾驶舱的设计与实现[J]. 铁路计算机应用, 2020, 29(1): 39-43.
引用本文: 刘敏, 马小宁, 戚小玉, 刘彦军, 武威. 铁路数据服务平台综合管理驾驶舱的设计与实现[J]. 铁路计算机应用, 2020, 29(1): 39-43.
LIU Min, MA Xiaoning, QI Xiaoyu, LIU Yanjun, WU Wei. Integrated management cockpit for railway data service platform[J]. Railway Computer Application, 2020, 29(1): 39-43.
Citation: LIU Min, MA Xiaoning, QI Xiaoyu, LIU Yanjun, WU Wei. Integrated management cockpit for railway data service platform[J]. Railway Computer Application, 2020, 29(1): 39-43.

铁路数据服务平台综合管理驾驶舱的设计与实现

Integrated management cockpit for railway data service platform

  • 摘要: 为充分发挥数据可视化技术在铁路大数据领域的重要作用,分析了大数据可视化技术的发展现状和趋势,结合铁路数据服务平台的建设目的、数据来源和总体框架,运用可视化技术和数据交互技术,从资产普查、资产概览、共享服务、分析应用、运维管理等5个可视化方面设计研发了铁路数据服务平台综合管理驾驶舱,对铁路数据服务平台进行全方位的展示,分析数据的变化特征和演变规律,挖掘数据隐藏价值,形象直观地为运维人员、分析人员及管理人员提供综合监控、数据展现与辅助决策等功能,解决了从海量、无规则数据中快速定位及挖掘潜在信息难的问题。

     

    Abstract: In order to give full play to the important role of data visualization technology in the field of railway big data, this paper analyzed the development status and trend of big data visualization technology, combined with the construction purpose, data source and overall framework of railway data service platform, and used visualization technology and data interaction technology, designed and developed the integrated management cockpit of railway data service platform from five aspects:asset survey visualization, asset overview visualization, shared service visualization, analysis application visualization, operation and maintenance management visualization.The paper also used big data visualization technology to display the railway data service platform in an all-round way, analyzed the change characteristics and evolution laws of data, mined the hidden value of data, provided the functions of comprehensive monitoring, data display and auxiliary decision-making for operation and maintenance personnel, analysts and management personnel visually, solved the problem of rapid positioning and mining potential information from massive and irregular data difficult questions.

     

/

返回文章
返回