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Use of Machine Learning and Principal Component Analysis to Retrieve Nitrogen Dioxide (NO2) With Hyperspectral Imagers and Reduce Noise in Spectral FittingNitrogen dioxide (NO2) is an important trace-gas pollutant and climate agent whose presence also leads to spectral interference in ocean color retrievals. NO2 column densities have been retrieved with satellite UV–Vis spectrometers such as the Ozone Monitoring Instrument (OMI) and the Tropospheric Monitoring Instrument (TROPOMI) that typically have spectral resolutions of the order of 0.5 nm or better and spatial footprints as small as 3.6 km × 5.6 km. These NO2 observations are used to estimate emissions, monitor pollution trends, and study effects on human health. Here, we investigate whether it is possible to retrieve NO2 amounts with lower-spectral-resolution hyperspectral imagers such as the Ocean Color Instrument (OCI) that will fly on the Plankton, Aerosol, Cloud, ocean Ecosystem (PACE) satellite set for launch in early 2024. OCI will have a spectral resolution of 5 nm and a spatial resolution of ∼ 1 km with global coverage in 1–2 d. At this spectral resolution, small-scale spectral structure from NO2 absorption is still present. We use real spectra from the OMI to simulate OCI spectra that are in turn used to estimate NO2 slant column densities (SCDs) with an artificial neural network (NN) trained on target OMI retrievals. While we obtain good results with no noise added to the OCI simulated spectra, we find that the expected instrumental noise substantially degrades the OCI NO2 retrievals. Nevertheless, the NO2 information from OCI may be of value for ocean color retrievals. OCI retrievals can also be temporally averaged over timescales of the order of months to reduce noise and provide higher-spatial-resolution maps that may be useful for downscaling lower-spatial-resolution data provided by instruments such as OMI and TROPOMI; this downscaling could potentially enable higher-resolution emissions estimates and be useful for other applications. In addition, we show that NNs that use coefficients of leading modes of a principal component analysis of radiance spectra as inputs appear to enable noise reduction in NO2 retrievals. Once trained, NNs can also substantially speed up NO2 spectral fitting algorithms as applied to OMI, TROPOMI, and similar instruments that are flying or will soon fly in geostationary orbit.
Document ID
20230017801
Acquisition Source
Goddard Space Flight Center
Document Type
Accepted Manuscript (Version with final changes)
Authors
Joanna Joiner ORCID
(Goddard Space Flight Center Greenbelt, United States)
Sergey Marchenko
(Science Systems and Applications (United States) Lanham, Maryland, United States)
Zachary Fasnacht
(Science Systems and Applications (United States) Lanham, Maryland, United States)
Lok Lamsal
(University of Maryland, College Park College Park, United States)
Can Li ORCID
(University of Maryland, College Park College Park, United States)
Alexander Vasilkov
(Science Systems and Applications (United States) Lanham, Maryland, United States)
Nickolay Krotkov ORCID
(Goddard Space Flight Center Greenbelt, United States)
Date Acquired
December 6, 2023
Publication Date
January 26, 2023
Publication Information
Publication: Atmospheric Measurement Techniques
Publisher: European Geosciences Union
Volume: 16
Issue: 2
Issue Publication Date: January 18, 2023
ISSN: 1867-1381
e-ISSN: 1867-8548
URL: https://amt.copernicus.org/articles/16/481/2023/
Subject Category
Geosciences (General)
Earth Resources and Remote Sensing
Funding Number(s)
WBS: 583998.04.01.01
CONTRACT_GRANT: NNH19ZDA001N-PACESAT
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
NASA Peer Committee
Keywords
NO2
PACE
Machine Learning
OMI
Noise Reduction
Neural Networks
nitrogen dioxide
air quality
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