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Energy Demand Forecasting for an Office Building Based on Random Forests

机译:基于随机林的办公大楼能源需求预测

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A random forest (RF) is a classifier consisting of an ensemble of decision trees and has already been demonstrated to have effective predictive classification capabilities in many fields. Currently, however, few scholars have considered using RFs to forecast the energy consumption of buildings without historical load data. In this paper, RFs were applied to forecast the energy demand of an office building in Shanghai. A predictive model was obtained by training on 30 office buildings that were also located in Shanghai. Then, the trained predictive model was used to forecast the energy demand of an unknown building. The results demonstrated the feasibility of using RFs to forecast the energy demand of unknown office buildings.
机译:随机森林(RF)是由决策树的集合组成的分类器,并且已经证明在许多领域具有有效的预测分类能力。然而,目前,很少有学者考虑使用RFS预测建筑物的能耗而无需历史负载数据。本文采用了RFS预测上海办公楼的能源需求。通过在上海的30个办公楼培训获得预测模型。然后,训练有素的预测模型用于预测未知建筑的能源需求。结果表明,使用RF预测未知办公楼的能源需求的可行性。

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