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Electricity demand profile prediction based on household characteristics

机译:基于家庭特征的用电需求预测

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This work proposes a methodology for predicting the typical daily load profile of electricity usage based on static data obtained from surveys. The methodology intends to: (1) determine consumer segments based on the metering data using the k-means clustering algorithm, (2) correlate survey data to the segments, and (3) develop statistical and machine learning classification models to predict the demand profile of the consumers. The developed classification models contribute to make the study and planning of demand side management programs easier, provide means for studying the impact of alternative tariff setting methods and generate useful knowledge for policy makers.
机译:这项工作提出了一种基于从调查中获得的静态数据来预测典型每日用电量的方法。该方法旨在:(1)使用k-means聚类算法基于计量数据确定消费者细分;(2)将调查数据与细分相关;以及(3)开发统计和机器学习分类模型以预测需求概况的消费者。发达的分类模型有助于简化需求方管理计划的研究和计划,为研究替代性关税设定方法的影响提供手段,并为决策者提供有用的知识。

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