Deep learning based emulator for simulating CMAQ surface NO2 levels over the CONUS

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Abstract

This study details the development and evaluation of an emulator model of the Community Multiscale Air Quality (CMAQ) model, utilizing a U-Net deep learning architecture to accelerate the simulation of surface NO2 concentrations across the Contiguous United States (CONUS). The emulator employs a subset of meteorological, land cover, and emission input variables identical to those in CMAQ. An initial assessment of the model based on 3-fold monthly cross-validation during the summer (JJA) demonstrates excellent accuracy for 1-h NO2 concentration, with a correlation coefficient (R) of 0.979 and an Index of Agreement (IOA) of 0.989. Subsequently, the model’s robustness is examined by training it with NEI 2011 and 2014 data and then evaluating it using NEI 2017 data. This yields an R of 0.949 and an IOA of 0.974. We utilize the emulator to investigate the semi-normalized sensitivity of NO2 concentrations to NOx emissions, which exhibits a satisfactory alignment with CMAQ Decoupled Direct Method (DDM) sensitivities, with an MAE of 0.271 ppb for 1-h sensitivity coefficients. Diurnal cycle analysis of NOx sensitivity coefficients spatially averaged in 15 major urban environments indicates slight over- and underestimations of the morning and evening peaks, respectively, with the MAE varying from 0.27 (Dallas) to 0.92 ppb (Los Angeles). Remarkably, the emulator’s computational efficiency significantly surpasses CMAQ’s, providing more than 400 times the simulation speed on a single CPU and over 600 times when utilizing both CPU and GPU. As such, the emulator represents a promising tool for efficient CMAQ modeling, with potential applications in health impact assessments, emission reduction strategies, and emission inventory optimization.

Type
Publication
Atmospheric Environment, Volume 316, 120192
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Supplementary notes can be accessed here.

Ahmed Khan Salman
Ahmed Khan Salman
Ph.D. candidate of Atmospheric Sciences at Dept. of Earth & Atmospheric Sciences

My research interests include Atmospheric Sciences, Air-Quality, Remote Sensing and AI (Deep Learning/ Machine Learning).

Prof. Yunsoo Choi
Prof. Yunsoo Choi
Professor of Atmospheric Chemistry, Air-Quality Modeling, AI (Deep Learning/Machine Learning), Satellite Remote Sensing

My research interests include Atmospheric Chemistry, Air-Quality Modeling and AI (Deep Learning/ Machine Learning).

Jincheol Park
Jincheol Park
Ph.D. candidate of Atmospheric Sciences at Dept. of Earth & Atmospheric Sciences

My research interests include Atmospheric Sciences, Air-Quality, Sensitivity Analysis and Numerical Modeling.

Mahsa Payami
Mahsa Payami
Graduate student of Atmospheric Sciences at Dept. of Earth & Atmospheric Sciences

My research interests include Atmospheric Sciences, Air-Quality and Artifical Intelligence.

Semko Momeni
Semko Momeni
Ph.D. candidate of Atmospheric Sciences at Dept. of Earth & Atmospheric Sciences

My research interests include Atmospheric Sciences, Air-Quality, Data Assimilation and Numerical Modeling.

Masoud Ghahremanloo
Masoud Ghahremanloo
Postdoctoral scholar specializing in satellite remote sensing, artificial intelligence (deep/machine learning), and atmospheric sciences.

My research interests include Air-Quality, Remote Sensing and AI (Deep Learning/ Machine Learning).