面向需求侧管理的负荷时序统计分析

M. Grabner, A. Souvent, B. Blazic, A. Košir
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引用次数: 6

摘要

本文简要介绍了作为斯洛文尼亚-日本NEDO项目范围内需求响应(DR)项目的一部分进行的研究。本研究的目的是在实际DR启动之前检查可能的年度变电站(SBS)峰值负荷降低,以评估未来计划的可能效益。使用各种类型的统计图对SBS负载时间序列数据进行了全面检查。采用无监督机器学习对日负荷曲线进行分析。如果每年有50个小时的DR激活可用,那么年峰值可以降低约5%。由于负载高度依赖于温度,因此使用监督机器学习计算归一化日峰值负载。在整个论文中可以看到,先进的统计图表和机器学习技术可以更好地评估未来的DR计划。
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Statistical Load Time Series Analysis for the Demand Side Management
The paper presents a brief summary of the study which was carried out as part of the demand response (DR) project in the scope of Slovenian-Japanese NEDO project. The purpose of this study was to examine the possible annual substation (SBS) peak load decrease before actual DR activation in order to assess the possible benefit of the future program. SBS load time series data were thoroughly examined with various types of statistical diagrams. The daily load profiles were analyzed with the unsupervised machine learning. With 50 hours of DR activation available per year, the annual peak could be decreased for around 5%. Since the load is highly dependent on temperature, normalized daily peak load was calculated with supervised machine learning. It can be seen throughout the paper that advanced statistical diagrams and machine learning techniques allow better assessment of future the DR program.
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