Litcius/Paper detail

A Coupled Deep Learning Model for Estimating Surface NO<sub>2</sub> Levels From Remote Sensing Data: 15‐Year Study Over the Contiguous United States

Masoud Ghahremanloo, Yannic Lops, Yunsoo Choi, Seyedali Mousavinezhad, Jia Jung

2023Journal of Geophysical Research Atmospheres27 citationsDOIOpen Access PDF

Abstract

Abstract This study proposes a novel two‐step deep learning (DL) model for estimating surface NO 2 concentrations using satellite data over the contiguous United States (CONUS) from 2005 to 2019. The first phase of the model uses partial convolutional neural network (PCNN), an advanced DL model that accurately imputes gaps between surface NO 2 stations and creates 5,478 daily‐mean NO 2 grids (PCNN‐NO 2 ) of the 2005–2019 period over the study area. We then feed the PCNN‐NO 2 , along with other predictor variables, into a deep neural network (DNN) to estimate surface NO 2 levels, achieving exceptional performance with a correlation coefficient of 0.975–0.978, a mean absolute bias of 0.99–1.38 ppb, and a root mean square error of 1.47–1.97 ppb. Spatial cross‐validation results also indicate strong spatial performance of PCNN‐DNN surface NO 2 estimates. In addition to its accurate estimates, the PCNN‐DNN model consistently generates estimated NO 2 grids without any missing values, improving the quality of various applications such as emission reduction strategies and public health studies. Between 2005 and 2019, the 5,478 daily estimated NO 2 grids over the CONUS reveal significant reductions in NO 2 levels in 14 major urban environments: Washington D.C. (−43%), New York (−45%), Los Angeles (−38%), Chicago (−25%), Boston (−43%), Houston (−34%), Dallas (−40%), Philadelphia (−41%), Phoenix (−38%), Detroit (−20%), Denver (−23%), Atlanta (−0.7%), Cincinnati (−38%), and Pittsburgh (−56%). Furthermore, the study shows that the denser urban regions that in‐situ stations are installed in, the higher the difference between in‐situ observations and regional‐mean NO 2 levels.

Topics & Concepts

Deep learningArtificial neural networkMean squared errorConvolutional neural networkArtificial intelligenceAtlantaCorrelation coefficientStatisticsPhoenixComputer scienceEnvironmental scienceMetropolitan areaMathematicsGeographyArchaeologyAir Quality and Health ImpactsAir Quality Monitoring and ForecastingAtmospheric and Environmental Gas Dynamics