引入新的形态参数以改进城市树冠气流模型:在真实城市环境中从 CFD 到机器学习的研究

IF 6 2区 工程技术 Q1 ENVIRONMENTAL SCIENCES
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引用次数: 0

摘要

本研究提出了一种机器学习(ML)框架,用于生成任意城市冠层几何结构中地面以上给定高度的空间分布平均风场。该框架以随机森林公式为基础,通过对一系列现实城市环境中的流动进行建筑分辨大涡流模拟来训练。该模型将多达 10 个形态参数(包括 3 个新开发的参数)映射到所考虑的水平面的平均风速。预测结果由一系列模型计算得出。在独立的评估区域,应用新开发的形态参数平均提高了 34% 以上的预测精度,在预测主要流道和明显低风速区域方面的优势优于之前单独描述的形态参数。ML 模型(如本文介绍的模型)快速高效,因此适合实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introducing new morphometric parameters to improve urban canopy air flow modeling: A CFD to machine-learning study in real urban environments
This study proposes a machine learning (ML) framework generating spatially-distributed mean wind fields at a given height above ground within arbitrary urban canopy geometries. The framework is based on the Random Forest formulation and is trained using building resolving large-eddy simulations of flow over a range of realistic urban environments. The model maps up to 10 morphometric parameters, including three newly developed ones, to the mean wind over a considered horizontal plane. Predictions are computed from an ensemble of models. In independent evaluation areas, the application of the newly developed morphometric parameters increases the prediction accuracy on average by over 34 % with strengths in predicting main flow channels and areas of notably low wind speeds better than previously described morphometric parameters alone. ML-models, such as the one presented herein, are fast and efficient and are therefore suitable for operational use.
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来源期刊
Urban Climate
Urban Climate Social Sciences-Urban Studies
CiteScore
9.70
自引率
9.40%
发文量
286
期刊介绍: Urban Climate serves the scientific and decision making communities with the publication of research on theory, science and applications relevant to understanding urban climatic conditions and change in relation to their geography and to demographic, socioeconomic, institutional, technological and environmental dynamics and global change. Targeted towards both disciplinary and interdisciplinary audiences, this journal publishes original research papers, comprehensive review articles, book reviews, and short communications on topics including, but not limited to, the following: Urban meteorology and climate[...] Urban environmental pollution[...] Adaptation to global change[...] Urban economic and social issues[...] Research Approaches[...]
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