Improved mesoscopic meteorological modeling of the urban climate for building physics applications

IF 1.8 4区 工程技术 Q3 CONSTRUCTION & BUILDING TECHNOLOGY
Dominik Strebel, D. Derome, A. Kubilay, J. Carmeliet
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引用次数: 0

Abstract

Meteorological mesoscale models with different urban parametrization are used to predict the local urban climate at 250 m resolution. The authors propose a hybrid machine learning approach to improve the mesoscale prediction accuracy using measured air temperature data from a sensor network and remove simulation bias. The simulation of the urban climate of Zurich during a hot summer is used as case study showing the improvements of the simulation accuracy. Based on the hybrid model results, a cumulative heat exposure index is proposed to map local hotspots in the city and assess the difference of cooling loads between rural and urban environments. Furthermore, intra-urban microclimatic differences of a typical mid-latitude city are explored to highlight the benefits of detailed simulations for building physics purposes.
改进城市气候的中观气象模型,用于建筑物理应用
不同城市参数化的气象中尺度模型用于预测 250 米分辨率的当地城市气候。作者提出了一种混合机器学习方法,利用传感器网络测得的气温数据提高中尺度预测精度,并消除模拟偏差。以苏黎世炎热夏季的城市气候模拟为案例,展示了模拟精度的提高。根据混合模型的结果,提出了累积热暴露指数,以绘制城市的局部热点,并评估农村和城市环境的冷却负荷差异。此外,还探讨了典型中纬度城市的城市内部小气候差异,以突出详细模拟对建筑物理的益处。
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来源期刊
Journal of Building Physics
Journal of Building Physics 工程技术-结构与建筑技术
CiteScore
5.10
自引率
15.00%
发文量
10
审稿时长
5.3 months
期刊介绍: Journal of Building Physics (J. Bldg. Phys) is an international, peer-reviewed journal that publishes a high quality research and state of the art “integrated” papers to promote scientifically thorough advancement of all the areas of non-structural performance of a building and particularly in heat, air, moisture transfer.
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