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基于大数据挖掘技术的智能变电站故障追踪架构
引用本文:王磊,陈青,高洪雨,马志广,张艳杰,何登森.基于大数据挖掘技术的智能变电站故障追踪架构[J].电力系统自动化,2018,42(3):84-91.
作者姓名:王磊  陈青  高洪雨  马志广  张艳杰  何登森
作者单位:国网技术学院, 山东省济南市 250002,电网智能化调度与控制教育部重点实验室(山东大学), 山东省济南市 250061,国网技术学院, 山东省济南市 250002,国网技术学院, 山东省济南市 250002,国网技术学院, 山东省济南市 250002,国网技术学院, 山东省济南市 250002
基金项目:国家自然科学基金资助项目(51407105);山东省高等学校科研发展计划资助项目(J17KB163)
摘    要:文中提出了一种基于大数据平台的电网故障追踪方法,将故障诊断数据源延展至变电站层,利用Spark作为大数据处理工具对各类故障信息进行处理,有效地解决了海量监控数据的管理问题。通过数据挖掘技术对故障信息进行分析,找到故障元件的同时能够运用决策树对保护或断路器的不正确动作进行反向追踪,给出故障原因,使电网故障诊断的功能得到进一步优化。相比于目前依靠事故级报警信息的电网故障诊断,所提出的方法能够有效利用变电站层的各级监控数据,对故障做到追本溯源。

关 键 词:智能变电站  大数据  故障诊断  故障追踪  数据挖掘  决策树
收稿时间:2017/8/2 0:00:00
修稿时间:2017/12/25 0:00:00

Framework of Fault Trace for Smart Substation Based on Big Data Mining Technology
WANG Lei,CHEN Qing,GAO Hongyu,MA Zhiguang,ZHANG Yanjie and HE Dengsen.Framework of Fault Trace for Smart Substation Based on Big Data Mining Technology[J].Automation of Electric Power Systems,2018,42(3):84-91.
Authors:WANG Lei  CHEN Qing  GAO Hongyu  MA Zhiguang  ZHANG Yanjie and HE Dengsen
Affiliation:State Grid of China Technology College, Jinan 250002, China,Key Laboratory of Power System Intelligent Dispatch and Control(Shandong University), Ministry of Education, Jinan 250061, China,State Grid of China Technology College, Jinan 250002, China,State Grid of China Technology College, Jinan 250002, China,State Grid of China Technology College, Jinan 250002, China and State Grid of China Technology College, Jinan 250002, China
Abstract:This paper puts forward a new fault trace method for power grid based on big data platform. It extends the data source of fault diagnostic to the transformer substation and deals with the variety of fault date by the technology of Spark. This method can solve the problem of mass data processing. This paper analyzes the fault information by the data mining technology. The incorrect operation of protection or circuit breaker is traced-back by decision tree while the fault components are found. The reasons of the faults are given and the function of fault diagnosis system is optimized. Compared with the traditional fault diagnosis system which is based on the alarm messages, the proposed method can effectively use the monitoring data at every level in the substation and give the reasons of the faults.
Keywords:smart substation  big data  fault diagnosis  fault trace  data mining  decision tree
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