用户名: 密码: 验证码:
基于大数据标签技术的电网监控智能分析方法
详细信息    查看全文 | 推荐本文 |
  • 英文篇名:Intelligent analysis method of power grid monitoring based on big data label technology
  • 作者:叶康 ; 冷喜武 ; 肖飞 ; 李雄 ; 朱励程
  • 英文作者:Ye Kang;Leng Xiwu;Xiao Fei;Li Xiongli;Zhu Licheng;Electric Power Dispatching and Control Center of State Grid Shanghai Municipal Electric Power Company;National Electric Power Dispatching and Control Center,State Grid Corporation of China;Tellhow Software Co.,Ltd.;
  • 关键词:电网监控 ; 大数据 ; 数据标签 ; 智能分析 ; 数据辨识
  • 英文关键词:grid monitoring;;big data;;data label;;intelligent analysis;;data identification
  • 中文刊名:电测与仪表
  • 英文刊名:Electrical Measurement & Instrumentation
  • 机构:国网上海市电力公司电力调度控制中心;国家电网公司电力调度控制中心;泰豪软件股份有限公司;
  • 出版日期:2018-12-11 10:22
  • 出版单位:电测与仪表
  • 年:2019
  • 期:04
  • 语种:中文;
  • 页:81-85
  • 页数:5
  • CN:23-1202/TH
  • ISSN:1001-1390
  • 分类号:TM76
摘要
在电网规模和数据量急速增长的环境下,传统存储的关系型数据库、数据集成及整合分析方式已经无法满足业务应用的需求,本文分析梳理了电网监控应用需求,引入数据标签技术来解决目前的技术瓶颈。通过对数据物理表进行梳理,将业务专家的经验与数据物理表结构融合而成,数据标签能够提供统一业务化的标签给下游使用方,节省计算资源、便于全局优化的特点,基于数据标签开展电力业务数据辨识、数据治理、数据加工,相较于传统数据存储和治理模式,能够大幅提高电网监控业务智能化水平。
        With the rapid growth of power grid scale and data volume,the traditional storage relational database,data integration and integration analysis methods have been unable to meet the needs of business applications. This paper analyzes and combs the application requirements of power grid monitoring,and introduces data labeling technology to solve the current technical bottleneck. By combing the data physical tables and combining the experience of business experts with the structure of data physical tables,data labels can provide uniform business labels for downstream users,save computing resources and facilitate global optimization. Based on data labels,power business data identification,data management and data addition are carried out. Compared with the traditional data storage and management mode,it can greatly improve the intelligent level of power grid monitoring business.
引文
[1]李广建,化柏林.大数据分析与情报分析关系辨析[J].中国图书馆学报,2014,20(7):1405-1415.Li Guangjian,Hua Bailin.Analyze of the relationship between big data analysis and intelligence analysis[J].Journal of Chinese library,2014,20(7):1405-1415.
    [2]方涛,庞南生.基于RFID的电力资产电子化标签管理应用实现[J].价值工程,201,55(26):60-62.Fang Tao,Pang Nansheng.Implementation of RFID-based electronic asset tag management application for power assets[J].Value engineering,2015,55(26):60-62.
    [3]罗元剑,姜建国,王思叶,等.基于有限状态机的RFID流数据过滤与清理技术[J].软件学报,2014,(8):1713-1728.Luo Yuanjian,Jiang Jianguo,Wang Siye,et al.RFID stream data filtering and cleaning technology based on finite-state machine[J].Journal of Software,2014,(8):1713-1728.
    [4]林森,欧阳柳.基于大数据理论的电力客户标签体系构建[J].电气技术,2016,17(12):98-101.Lin Sen,Ouyang Liu.Construction of power customer labeling system based on big data theory[J].Electrical Engineering,2016,17(12):98-101.
    [5]刘巍,黄曌,李鹏,等.面向智能配电网的大数据统一支撑平台体系与构架[J].电工技术学报,2014,6(2):486-491.Liu Wei,Huang Wei,Li Peng,et al.Big data unified support platform system and framework for smart distribution network[J].Journal of E-lectrotechnics,2014,6(2):486-491.
    [6]袁柳,张龙波.基于社会标签的时间特征进行标签预测方法[J].计算机科学,2012,39(6):179-183.Yuan Liu,Zhang Longbo.Applying Temporal Features of Social Tags to Tag Predication[J].Computer Science,2012,39(6):179-183.
    [7]李艳红,李德玉,王素格.一种符号型增量数据标签算法[J].计算机科学,2015,42(6):223-227.Li Yanhong,Li Deyu,Wang Suge.A Symbolic Incremental Data Labeling Algorithm[J].Computer Science,2015,42(6):223-227.
    [8]冯登国,张敏,李昊.大数据安全与隐私保护[J].计算机学报,2014,37(1):246-258.Feng Dengguo,Zhang Min,Li Wei.Big Data Security and Privacy Protection[J].Chinese Journal of Computers,2014,37(1):246-258.
    [9]吕辉,许道强,仲春林,等.基于电力大数据的标签画像技术与应用研究[J].电力信息与通信技术,2017,(2):43-48.LüHui,Xu Daoqiang,Zhong Chunlin,et al.Research on Label Image Technology and Application Based on Power Big Data[J].Power Information and Communication Technology,2017,(2):43-48.
    [10]王德文,杨力平.智能电网大数据流式处理方法与状态监测异常检测[J].电力系统自动化,2016,40(14):122-128.Wang Dewen,Yang Liping.Big data stream processing method and state monitoring anomaly detection of smart grid[J].Power System Automation,2016,40(14):122-128.

© 2004-2018 中国地质图书馆版权所有 京ICP备05064691号 京公网安备11010802017129号

地址:北京市海淀区学院路29号 邮编:100083

电话:办公室:(+86 10)66554848;文献借阅、咨询服务、科技查新:66554700