Surrogate Modeling of Urban Boundary-Layer Flow
Gurpreet S. Hora, Marco G. Giometto

TL;DR
This paper develops a machine learning surrogate model using MLPs to efficiently predict urban boundary-layer flow statistics across various wind angles, significantly reducing computational costs compared to traditional simulations.
Contribution
It introduces a multi-layer perceptron surrogate that outperforms spline interpolation in predicting flow statistics with fewer training samples.
Findings
MLP surrogate outperforms spline interpolation in accuracy.
Model predicts flow for unseen wind angles effectively.
Surrogate is $10^4$ times faster than large-eddy simulations.
Abstract
Surrogate modeling is a viable solution for applications involving repetitive evaluations of expensive computational fluid dynamics models, such as uncertainty quantification and inverse problems. This study proposes a multi-layer perceptron (MLP) based machine-learning surrogate for canopy flow statistics accommodating any approaching mean-wind angle. The training and testing of the surrogate model is based on results from large-eddy simulations of open-channel flow over and within surface-mounted cubes under neutral ambient stratification. The training dataset comprises flow statistics from various approaching mean-wind angles, and the surrogate is asked to "connect between the dots," i.e., to predict flow statistics for unseen values of the approaching mean-wind angle. The MLP performance is compared against a more traditional spline-based interpolation approach for a range of…
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Taxonomy
TopicsWind and Air Flow Studies · Hydrology and Sediment Transport Processes · Hydrology and Drought Analysis
