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A novel surrogate model to support building energy labelling system: A new approach to assess cooling energy demand in commercial buildings

机译:支持建筑物能源标签系统的新型替代模型:评估商业建筑中冷却能源需求的新方法

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Researchers in many countries are developing surrogate models to estimate the energy performance of the building stock. In Brazil, the building energy labelling system can be performed using a simplified method which is based on a basic surrogate model using multiple linear regressions. Based on the limitations associated with this model the aim of this study was to develop a more accurate surrogate model to predict the annual cooling energy demand of commercial buildings. The combination of all possible variations of the properties and their values resulted in more than 2.5 quadrillion cases. One million cases sampled by Latin Hypercube method were considered. Several statistical modelling techniques were tested to generate the surrogate model: multiple linear regression, multivariate adaptive regression splines, support vector machines, the Gaussian process, random forests and artificial neural networks. The surrogate model was applied into a medium office to observe the difference between building energy simulation results. The results showed that the artificial neural network method presented the best performance, with a NRMSE below 1%. The validation procedure indicates that the novel surrogate model is able to describe the relation between inputs data and cooling energy demand. (C) 2016 Elsevier B.V. All rights reserved.
机译:许多国家/地区的研究人员正在开发替代模型,以估算建筑材料的能源性能。在巴西,可以使用简化方法来执行建筑能源标签系统,该方法基于使用多个线性回归的基本替代模型。基于与该模型相关的局限性,本研究的目的是建立一个更准确的替代模型来预测商业建筑的年度冷却能源需求。所有可能的特性变化及其值的组合导致超过2.5万亿个情况。考虑通过拉丁超立方方法抽样的一百万例病例。测试了几种统计建模技术以生成替代模型:多元线性回归,多元自适应回归样条,支持向量机,高斯过程,随机森林和人工神经网络。替代模型被应用到中型办公室,以观察建筑能耗模拟结果之间的差异。结果表明,人工神经网络方法表现出最好的性能,NRMSE低于1%。验证过程表明,新颖的替代模型能够描述输入数据与冷却能量需求之间的关系。 (C)2016 Elsevier B.V.保留所有权利。

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