A new machine-learning-based analysis for improving satellite-retrieved atmospheric composition data: OMI SO2 as an example
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Published:2022-09-27
Issue:18
Volume:15
Page:5497-5514
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ISSN:1867-8548
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Container-title:Atmospheric Measurement Techniques
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language:en
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Short-container-title:Atmos. Meas. Tech.
Author:
Li CanORCID, Joiner JoannaORCID, Liu FeiORCID, Krotkov Nickolay A.ORCID, Fioletov VitaliORCID, McLinden ChrisORCID
Abstract
Abstract. Despite recent progress, satellite retrievals of
anthropogenic SO2 still suffer from relatively low signal-to-noise
ratios. In this study, we demonstrate a new machine learning data analysis
method to improve the quality of satellite SO2 products. In the absence
of large ground-truth datasets for SO2, we start from SO2 slant
column densities (SCDs) retrieved from the Ozone Monitoring Instrument (OMI)
using a data-driven, physically based algorithm and calculate the ratio
between the SCD and the root mean square (rms) of the fitting residuals for
each pixel. To build the training data, we select presumably clean pixels
with small SCD / rms ratios (SRRs) and set their target SCDs to zero. For polluted pixels with relatively large SRRs, we set the target to the
original retrieved SCDs. We then train neural networks (NNs) to reproduce
the target SCDs using predictors including SRRs for individual pixels, solar zenith, viewing zenith and phase angles, scene reflectivity, and O3 column amounts, as well as the monthly mean SRRs. For data analysis, we employ two NNs: (1) one trained daily to produce analyzed SO2 SCDs for polluted pixels each day and (2) the other trained once every month to produce analyzed SCDs for less polluted pixels for the entire month. Test results for 2005 show that our method can significantly reduce noise and artifacts over background regions. Over polluted areas, the monthly mean NN-analyzed and original SCDs generally agree to within ±15 %, indicating that our method can retain SO2 signals in the original retrievals except for large volcanic eruptions. This is further confirmed by running both the NN-analyzed and original SCDs through a top-down emission algorithm to estimate the annual SO2 emissions for ∼500 anthropogenic sources, with the two datasets yielding similar results. We also explore two alternative approaches to the NN-based analysis method. In one, we employ a simple linear interpolation model to
analyze the original SCD retrievals. In the other, we develop a PCA–NN
algorithm that uses OMI measured radiances, transformed and
dimension-reduced with a principal component analysis (PCA) technique, as
inputs to NNs for SO2 SCD retrievals. While the linear model and the
PCA–NN algorithm can reduce retrieval noise, they both underestimate
SO2 over polluted areas. Overall, the results presented here
demonstrate that our new data analysis method can significantly improve the
quality of existing OMI SO2 retrievals. The method can potentially be
adapted for other sensors and/or species and enhance the value of satellite
data in air quality research and applications.
Publisher
Copernicus GmbH
Subject
Atmospheric Science
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