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Two-Stage Approach for Electricity Consumption Forecasting in Public Buildings

机译:公共建筑用电量的两阶段预测方法

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Many preprocessing and prediction techniques have been used for large-scale electricity load forecasting. However, small-scale prediction, such as in the case of public buildings, has received little attention. This field presents certain specific features. The most distinctive one is that consumption is extremely influenced by the activity in the building. For that reason, a suitable approach to predict the next 24-hour consumption profiles is presented in this paper. First, the features that influence the consumption are processed and selected. These environmental variables are used to cluster the consumption profiles in subsets of similar behavior using neural gas. A direct forecasting approach based on Support Vector Regression (SVR) is applied to each cluster to enhance the prediction. The input vector is selected from a set of past values. The approach is validated on teaching and research buildings at the University of Leon.
机译:许多预处理和预测技术已用于大规模电力负荷预测。但是,小规模的预测(例如在公共建筑中)很少受到关注。此字段显示某些特定功能。最独特的一点是,消费量受建筑物内活动的影响极大。因此,本文提出了一种预测下一个24小时消费情况的合适方法。首先,处理和选择影响功耗的特征。这些环境变量用于使用神经气体将消费分布图聚类为相似行为的子集。将基于支持向量回归(SVR)的直接预测方法应用于每个群集以增强预测。输入向量是从一组过去的值中选择的。该方法已在莱昂大学的教学楼和研究大楼中得到验证。

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