Aplicação de um modelo de aprendizado de máquina em estudo de eficiência energética de edificações: foco para sistemas construtivos leves

G. Moro, Rodrigo dos Santos Veloso Martins, T. Giglio
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Abstract

The use of machine learning techniques in thermoenergetic performance studies of buildings emerges as an alternative to conventional methods which analysis require greater data complexity. This research aims to apply a machine learning technique in the study of energy efficiency of a building executed in a light construction system. Thus, an algorithm was implemented referring to an optimized model of classification and regression tree (CART) for application in a data set. This data set includes 2048 parametric simulations of a housing in a light construction system to the climate of the city of São Paulo, whose output indicators are the annual thermal load for heating and the annual thermal load for cooling. From the application of a tree pruning methodology and the use of Grid Search and k-fold Cross Validation techniques, the training and testing of the model was repeated 100 times, thus obtaining average results of 1.11\% of error for heating loads and 1.52\% of error for predicting cooling loads. Subsequently, a sensitivity analysis was performed, revealing the thermal transmittance property of the walls as the parameter with the greatest influence on the prediction of heating load and the condition of contact between the ground and the floor as the parameter with the greatest influence on the prediction of cooling load. Finally, decision trees were generated for visual analysis of strategies that can be adopted to obtain better levels of thermoenergetic performance. Thus, a more simplified diagnosis of energy efficiency was obtained, with low complexity in the interpretation of its results, favoring greater diffusion of the technology in light systems.
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机器学习模型在建筑能效研究中的应用:关注轻型建筑系统
在建筑物的热能性能研究中使用机器学习技术是传统方法的一种替代方法,传统方法需要更大的数据复杂性进行分析。本研究旨在将机器学习技术应用于轻型建筑系统中建筑的能效研究。因此,实现了一种参考分类和回归树(CART)的优化模型的算法,用于在数据集中应用。该数据集包括2048个轻型建筑系统中的住房对圣保罗市气候的参数模拟,其输出指标是供暖的年度热负荷和制冷的年度热负载。通过应用树木修剪方法和网格搜索和k次交叉验证技术,对模型进行了100次重复训练和测试,从而获得了热负荷1.11%误差和冷负荷1.52%误差的平均结果。随后,进行了敏感性分析,揭示了对热负荷预测影响最大的参数是墙壁的传热特性,而对冷负荷预测影响最大的参数是地面和地板之间的接触条件。最后,生成了决策树,用于对可以采取的策略进行可视化分析,以获得更好的热能性能水平。因此,获得了更简化的能效诊断,其结果解释的复杂性较低,有利于该技术在光系统中的更大扩散。
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12 weeks
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