A physics-based reduced order model for urban air pollution prediction
Moaad Khamlich, Giovanni Stabile, Gianluigi Rozza, L\'aszl\'o, K\"ornyei, Zolt\'an Horv\'ath

TL;DR
This paper introduces a physics-based reduced order model using data-driven techniques to enable real-time urban air pollution prediction, significantly reducing computational costs compared to traditional methods.
Contribution
It develops a novel POD-R and neural network-based reduced order modeling framework for efficient, real-time urban air quality prediction, integrating empirical data with physics-based modeling.
Findings
Significantly reduces computational time for air pollution modeling
Validated on synthetic and real data with promising results
Suitable for real-time air quality monitoring applications
Abstract
This article presents an innovative approach for developing an efficient reduced-order model to study the dispersion of urban air pollutants. The need for real-time air quality monitoring has become increasingly important, given the rise in pollutant emissions due to urbanization and its adverse effects on human health. The proposed methodology involves solving the linear advection-diffusion problem, where the solution of the Reynolds-averaged Navier-Stokes equations gives the convective field. At the same time, the source term consists of an empirical time series. However, the computational requirements of this approach, including microscale spatial resolution, repeated evaluation, and low time scale, necessitate the use of high-performance computing facilities, which can be a bottleneck for real-time monitoring. To address this challenge, a problem-specific methodology was developed…
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Taxonomy
TopicsModel Reduction and Neural Networks · Wind and Air Flow Studies · Air Quality Monitoring and Forecasting
