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Gradient boosting machine learning to improve satellite-derived column water vapor measurement errorThe atmospheric products of the Multi-Angle Implementation of Atmospheric Correction (MAIAC) algorithm include column water vapor (CWV) at a 1 km resolution, derived from daily overpasses of NASA’s Moderate Resolution Imaging Spectroradiometer (MODIS) instruments aboard the Aqua and Terra satellites. We have recently shown that machine learning using extreme gradient boosting (XGBoost) can improve the estimation of MAIAC aerosol optical depth (AOD). Although MAIAC CWV is generally well validated (Pearson’s R > 0.97 versus CWV from AERONET sun photometers), it has not yet been assessed whether machine-learning approaches can further improve CWV. Using a novel spatiotemporal cross-validation approach to avoid overfitting, our XGBoost model, with nine features derived from land use terms, date, and ancillary variables from the MAIAC retrieval, quantifies and can correct a substantial portion of measurement error relative to collocated measurements at AERONET sites (26.9% and 16.5% decrease in root mean square error (RMSE) for Terra and Aqua datasets, respectively) in the Northeastern USA, 2000–2015. We use machine-learning interpretation tools to illustrate complex patterns of measurement error and describe a positive bias in MAIAC Terra CWV worsening in recent summertime conditions. We validate our predictive model on MAIAC CWV estimates at independent stations from the SuomiNet GPS network where our corrections decrease the RMSE by 19.7% and 9.5% for Terra and Aqua MAIAC CWV. Empirically correcting for measurement error with machine-learning algorithms is a post processing opportunity to improve satellite-derived CWV data for Earth science and
remote sensing applications.
Document ID
20210013966
Acquisition Source
Goddard Space Flight Center
Document Type
Reprint (Version printed in journal)
Authors
Allan C Just
(Icahn School of Medicine at Mount Sinai New York, New York, United States)
Yang Liu
(Icahn School of Medicine at Mount Sinai New York, United States)
Meytar Sorek-Hamer
(Universities Space Research Association Columbia, Maryland, United States)
Jonathan Rush
(Icahn School of Medicine at Mount Sinai New York, New York, United States)
Michael Dorman
(Ben-Gurion University of the Negev Beersheba, El Janūbī, Israel)
Robert Chatfield
(Ames Research Center Mountain View, California, United States)
Yujie Wang
(University of Maryland, Baltimore County Baltimore, Maryland, United States)
Alexei Lyapustin
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Itai Kloog
(Ben-Gurion University of the Negev Beersheba, El Janūbī, Israel)
Date Acquired
April 19, 2021
Publication Date
September 2, 2020
Publication Information
Publication: Atmospheric Measurement Techniques
Publisher: Copernicus.org (Germany)
Volume: 13
Issue: 9
Issue Publication Date: September 1, 2020
ISSN: 1867-1381
e-ISSN: 1867-8548
Subject Category
Geosciences (General)
Funding Number(s)
WBS: 437949.02.01.02.54
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
External Peer Committee
Keywords
MAIAC atmospheric products
machine learning
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