期刊文献+

话务网管大数据应用基础研究

Basic Research on Application of Big Data in Traffic Network Management
下载PDF
导出
摘要 话务网管数据是移动通信运营商进行网络运行质量指标分析和经营分析的基石,数据的准确性、时效性与运营商服务质量息息相关。当前,移动通信运营商话务网管数据汇总方式属传统的串行模式,在面临新地市分公司成立以及网元多元性和复杂性的与日俱增等诸多因素挑战下,亟需创新。广西公司借鉴开放最短路径优先协议的理念精髓,以提高运营商对话务网管数据准确性的高效管理为目的,创新性地研究应用了基于开放式话务网管数据汇总的新模式,为下一步开展网管大数据应用夯实了基础。 Traffic network management data is the foundation for mobile operators to analyze the network quality indicator and business management. Data accuracy and timeliness are closely related to the service quality of the operators. The present way for the mobile communication operators to collect traffic network management data still belongs to traditional serial mode. When faced with the challenges including the establishment of new city branch, and the diversity and daily increasing of complexity and plurality for network elements, it is badly in need of innovation. In order to improve the operator on the accuracy and efficient management of the traffic network management data, Guangxi companies make reference of the conceptual marrow in opening the easiest and quickest protocol and innovatively apply the new model of traffic network management data collection, thus laying a good foundation for the next step to carry out the big data applications.
出处 《通信技术》 2016年第8期1047-1050,共4页 Communications Technology
基金 中国移动通信集团广西有限公司2016年省级自主研发项目(JSXM-WG-2016-003)~~
关键词 话务网管 数据汇总 性能资源 大数据 traffic network management data collection performance resource big data
  • 相关文献

参考文献3

二级参考文献35

  • 1云亮.电信运营支撑系统的NGOSS体系简介[J].电信技术,2004(11):14-16. 被引量:1
  • 2Sriram Srinivasan.高级Perl编程[M].北京:中国电力出版社,2001.115-159.
  • 3陈明奇,姜禾,张娟,廖方宇.大数据时代的美国信息网络安全新战略分析[C].第27次全国计算机安全学术交流论文集,2012,(8):42-45.
  • 4Bill Franks.驾驭大数据[M].黄海,车皓阳,王悦,等,译.北京:人民邮电出版社,2013.
  • 5Thomas H. Davenport,Paul Barth,Randy Bean. How 'Big Data'is Different [ J ]. MIT Sloan Management Review, 2012,54(01 ) :22-24.
  • 6Victor Mayer- Schonberger, Kenneth Cukier..大数据时代[M].杭州:浙江人民出版社,2013:193-232.
  • 7Philip Russom. Big Data Analytics. TDWI Best Practices Report [R]. USA:TDWI,2011.
  • 8Paul Zikopoulos, Chris Eaton, Dirk de Roos etc. Under- standing Big Data: Analyties for Enterprise Class Hadoop and Streaming Data [ R]. USA: Me. Graw- Hill, 2012.
  • 9Hsinchun Chen,Roger H. L. Chiang,Veda C. Storey. Busi- ness Intelligence and Analytics: From Big Data To Big Im- pact [J]. MIS Quarterly ,2012,36(04) : 1165-1188.
  • 10车品觉.大数据的三个维度和十诫[EB/OL].(2014-03-07)[2014-05-10].http://tech.sina.com.ca.

共引文献81

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部