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CVR与AVC技术的节能减排效果评估研究 被引量:4

Energy Conservation and Emission Reduction Assessment for CVR and AVC
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摘要 智能配电技术对电网侧落实节能减排具有重要作用,而降压节电策略(Conservation Voltage Reduc-tion,CVR)与先进电压控制技术(Advanced Voltage Control,AVC)是智能配电技术的主要组成部分。对CVR与AVC的物理特性及经济特性的进行了分析;在此基础上,结合已有研究,构建了CVR与AVC的碳减排评估模型,并进行了量化分析,对CVR与AVC节能减排效果的评估有一定的指导作用。 Intelligent power distribution technology plays a important role in grid-side energy saving and emission re- duction. Conservation Voltage Reduction (CVR) and Advanced Voltage Control (AVC) are the major parts of intelli- gent distribution technology. This paper begins with the analysis of the physical and economic characteristics of CVR and AVC. Then, energy saving and emission reduction assessment models are established for CVR and AVC combi- ning the existing research and a quantitative analysis is conducted. This research aims to provide a certain guidance for the assessment of CVR and AVC energy saving and emission reduction.
出处 《华东电力》 北大核心 2013年第5期908-911,共4页 East China Electric Power
基金 国家自然基金资助项目(71271082) 国家软科学研究计划项目(2012GXS4B064)~~
关键词 智能配电技术 CVR AVC 节能减排 intelligent power distribution technology CVR AVC energy saving and emission reduction
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