Deep learning to evaluate US NOx emissions using surface ozone predictions

Emissions of nitrogen oxides (NOx = NO + NO2) in the United States have declined significantly during the past three decades. However, satellite observations since 2009 indicate total column NO2 is no longer declining even as bottom-up inventories suggest continued decline in emissions. Multiple explanations have been proposed for this discrepancy including (a) the increasing relative importance of nonurban NOx to total column NO2, (b) differences between background and urban NOx lifetimes, and (c) that the actual NOx emissions are declining more slowly after 2009. Here, we use a deep learning model trained by NOx emissions and surface observations of ozone to assess consistency between the reported NOx trends between 2005 and 2014 and observations of surface ozone. We find that the satellite-derived trends best reproduce ozone in low NOx emission (background) regions. The 2010-2014 trend from older satellite-derived emission estimates produced at low spatial resolution results in the largest bias in surface ozone in regions with high NOx emissions, reflecting the blending of urban and background NOx in these low-resolution top-down analyses. In contrast, the trend from higher resolution satellite-based estimates, which are more capable of capturing the urban emission signature, is in better agreement with ozone in high NOx emission regions, and is consistent with the trend based on surface observations of NO2. Our results confirm that the satellite-derived trends reflect anthropogenic and background influences.

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Copyright 2022 American Geophysical Union.


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Author He, Tai�Long
Jones, Dylan B. A.
Miyazaki, Kazuyuki
Huang, Binxuan
Liu, Yuyang
Jiang, Zhe
White, E. Charlie
Worden, Helen M.
Worden, John R.
Publisher UCAR/NCAR - Library
Publication Date 2022-02-27T00:00:00
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Topic Category geoscientificInformation
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Metadata Date 2023-08-18T18:18:03.274361
Metadata Record Identifier edu.ucar.opensky::articles:25090
Metadata Language eng; USA
Suggested Citation He, Tai�Long, Jones, Dylan B. A., Miyazaki, Kazuyuki, Huang, Binxuan, Liu, Yuyang, Jiang, Zhe, White, E. Charlie, Worden, Helen M., Worden, John R.. (2022). Deep learning to evaluate US NOx emissions using surface ozone predictions. UCAR/NCAR - Library. http://n2t.net/ark:/85065/d77d2zpr. Accessed 30 January 2025.

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