Predicting energy demand of residential buildings: A linear regression-based approach for a small sample size

Soufiane Boukarta
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Abstract

Abstract The key design strategies that reduce the energy demand of buildings are not present in most thermal codes in many countries. Therefore, modeling techniques offer an alternative to combine the architects' modus operandi with the energy efficiency in the early stages of architectural design and with higher speed and precision. However, a review of the scientific literature using modeling techniques shows that most researchers use a relatively large sample of thermal simulations. This paper proposes a simplified method based on the linear regression modeling technique and considers a relatively smaller sample of thermal simulations. A total of 6 key building design strategies were identified, related to the urban context, building envelope, and shape factor. A simulation protocol containing 60 possible combinations was designed by random selection. In the present study, the Pleiades software was used to estimate the annual energy demand for heating and cooling for a typical dwelling in a humid climate zone. A parametric study and sensitivity analysis to identify the most efficient parameters was performed in SPSS 21. The resulting model predicts the annual energy demand with an accuracy of 93.7%, a root mean square error (RMSE) of 5.88, and a scatter index (SI) of 8.59%. The models performed could efficiently and quickly assist architects while designing the buildings in the architectural practice.
住宅建筑能源需求预测:基于小样本的线性回归方法
在许多国家,减少建筑能源需求的关键设计策略并不存在于大多数热规范中。因此,建模技术提供了另一种选择,将建筑师的操作方式与建筑设计早期阶段的能源效率结合起来,并具有更高的速度和精度。然而,对使用建模技术的科学文献的回顾表明,大多数研究人员使用了相对较大的热模拟样本。本文提出了一种基于线性回归建模技术的简化方法,并考虑了相对较小的热模拟样本。总共确定了6个关键的建筑设计策略,这些策略与城市文脉、建筑围护结构和形状因素有关。通过随机选择,设计了包含60种可能组合的仿真方案。在目前的研究中,Pleiades软件被用来估计在潮湿气候区一个典型住宅的供暖和制冷的年能源需求。在SPSS 21中进行参数研究和敏感性分析,以确定最有效的参数。该模型预测年能源需求的精度为93.7%,均方根误差(RMSE)为5.88,散点指数(SI)为8.59%。在建筑实践中,所建立的模型能够高效、快速地辅助建筑师进行建筑设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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