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Comparative Study on Machine Learning Methods for Urban Building Energy Analysis

机译:机器学习方法在城市建筑能耗分析中的比较研究

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摘要

There has been an increasing interest in applying machine learning methods in urban energy assessment. This research implemented six statistical learning methods in estimating domestic gas and electricity using both physical and socio-economic explanatory variables in London. The input variables include dwelling types, household tenure, household composition, council tax band, population age groups, etc. Six machine learning methods are two linear approaches (full linear and Lasso) and four non-parametric methods (MARS multivariate adaptive regression spline, SVM support vector machine, bagging MARS, and boosting). The results indicate that all the four non-parametric models outperform two linear models. The SVM models perform the best among these models for both gas and electricity. The bagging MARS performs only a little worse than the SVM for gas use prediction. The Lasso model has similar predictive capability to the full linear model in this case.
机译:在城市能源评估中应用机器学习方法的兴趣日益浓厚。这项研究使用伦敦的物理和社会经济解释变量,实施了六种统计学习方法来估算家用天然气和电力。输入变量包括居住类型,家庭使用权,家庭组成,议会税阶,人口年龄组等。六种机器学习方法是两种线性方法(完全线性和套索)和四种非参数方法(MARS多元自适应回归样条, SVM支持向量机,袋装MARS和boosting)。结果表明,所有四个非参数模型均优于两个线性模型。对于气体和电力,SVM模型在这些模型中表现最佳。套袋式MARS在预测用气方面仅比SVM差一点。在这种情况下,套索模型具有与完整线性模型相似的预测能力。

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