期刊文献+

智能配用电大数据关键技术研究 被引量:25

Research on the Key Technology of Big Data for Smart Power Distribution and Utilization
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摘要 随着智能电网的建设,积累了大量的配用电数据,通过对数据的分析可以更准确地实现用电负荷预测、错峰调度等高级应用。介绍了国内外智能配用电网大数据关键技术研究现状,重点分析了国内外智能配用电业务、大数据应用方面的技术发展;分析了智能配用电大数据关键技术,提出配用电大数据架构,设计智能配用电大数据应用方案,推动智能配用电业务的综合智能化、精益化发展。 Through the construction of smart grid, the State Grid Corporation has accumulated a large number of data of power distribution and utilization. Through the analysis of the big data, a more accurate on advanced applications such as load forecasting and staggering peak can be achieved. The domestic and international study status on key technologies of big data for power distribution and utilization networks are introduced, and the domestic and international technology development about power distribution and utilization business, big data applications are emphatically analyzed. The big data technology of smart power distribution and utilization is analyzed, and the scheme of big data applications for power distribution and consumption is proposed, which would promote the integrated intelligent and lean development of smart power distribution and consumption business.
出处 《供用电》 2015年第8期12-18,共7页 Distribution & Utilization
基金 国家高技术研究发展计划(863计划)资助项目(2015AA050203)~~
关键词 智能配用电 大数据 体系架构 关键技术 方案设计 smart power distribution and utilization big data architecture key technology scheme design
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