A data-driven approach for window opening predictions in non-air-conditioned buildings

IF 2.1 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Intelligent Buildings International Pub Date : 2021-08-17 DOI:10.1080/17508975.2021.1963651
Yu Fu, Tongyu Zhou, I. Lun, F. Khayatian, Wu Deng, Weiguang Su
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引用次数: 3

Abstract

ABSTRACT In non-air-conditioned buildings, opening or closing of windows is one of the most common behaviours that occupants tend to carry out to restore their thermal comfort. As an alternative approach to studying the occupant behaviour, particularly when it is difficult to run extensive field studies or due to limits like privacy concerns, this work explores a data-driven method to predict the window openings based on thermal comfort evaluation. The Gradient Boosting Decision Trees (GBDT) algorithm is applied to investigate the importance of selected features, including weather and main building characteristics, to the indoor thermal comfort in non-air-conditioned buildings across whole China. The training set comprises the building simulation results of 95 main cities covering all the five climate regions in China and has 828,360 groups of data in total. The predictor achieves a high accuracy of approximately 95%, and therefore enables the users to estimate the likelihood of window opening based on outdoor weather conditions and local building characteristics. As an original contribution, the study shows that conditioned upon the availability of adequate simulation data, a machine learning predictor trained solely on simulation data can accurately predict realistic window opening behaviours, without relying on any indoor measurement.
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非空调建筑开窗预测的数据驱动方法
摘要在非空调建筑中,打开或关闭窗户是居住者为恢复热舒适性而采取的最常见的行为之一。作为研究居住者行为的另一种方法,特别是当很难进行广泛的实地研究或由于隐私等限制时,这项工作探索了一种基于热舒适性评估的数据驱动方法来预测车窗开口。应用梯度提升决策树(GBDT)算法研究了包括天气和主要建筑特征在内的选定特征对中国非空调建筑室内热舒适性的重要性。该训练集包括覆盖中国所有五个气候区域的95个主要城市的建筑模拟结果,共有828360组数据。该预测器实现了大约95%的高精度,因此使用户能够基于室外天气条件和当地建筑特征来估计开窗的可能性。作为最初的贡献,该研究表明,在有足够模拟数据的情况下,仅根据模拟数据训练的机器学习预测器可以准确预测真实的开窗行为,而不依赖于任何室内测量。
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来源期刊
Intelligent Buildings International
Intelligent Buildings International CONSTRUCTION & BUILDING TECHNOLOGY-
CiteScore
4.60
自引率
4.30%
发文量
8
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