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Using Machine Learning for Timely Estimates of Ocean Color Information From Hyperspectral Satellite Measurements in the Presence of Clouds, Aerosols, and SunglintRetrievals of ocean color from space are important for better understanding of the ocean ecosystem but can be limited under conditions such as clouds, aerosols, and sunglint. Many ocean color algorithms use a few selected spectral bands to perform an atmospheric correction and then derive the upwelling radiance from the ocean. The limitations in the atmospheric correction under certain conditions lead to many gaps in daily spatial coverage of ocean color retrievals. To address these limitations, we introduce a new approach that uses machine learning to estimate ocean color from top of atmosphere radiances or reflectance measurements. In this approach, a principal component analysis is used to decompose the hyperspectral measurements into spectral features that describe the scattering and absorption of the atmosphere and the underlying surface. The coefficients of the principal components are then used to train a neural network to predict ocean color properties derived from the MODIS atmospheric correction algorithm. This machine learning approach is independent of a priori information and does not rely on any radiative transfer modeling. We apply the approach to two hyperspectral UV/VIS instruments, the ozone monitoring instrument (OMI) and the TROPOspheric Monitoring Instrument (TROPOMI), using measurements from 320–500 nm to show that it can be used to reproduce ocean color properties in less-than-ideal conditions. This machine learning approach complements the current atmospheric correction ocean color retrievals by filling in the gaps resulting from cloud, aerosol, and sunglint contamination. This method can be applied to the future hyperspectral Ocean Color Instrument (OCI), which will be onboard NASA’s Plankton, Aerosol Cloud, ocean Ecosystem (PACE) ocean color satellite set to launch in 2024.
Document ID
20220017179
Acquisition Source
Goddard Space Flight Center
Document Type
Reprint (Version printed in journal)
Authors
Zachary Fasnacht ORCID
(Science Systems and Applications (United States) Lanham, Maryland, United States)
Joanna Joiner ORCID
(Goddard Space Flight Center Greenbelt, Maryland, United States)
David Haffner
(Science Systems and Applications (United States) Lanham, Maryland, United States)
Wenhan Qin ORCID
(Science Systems and Applications (United States) Lanham, Maryland, United States)
Alexandre Vassilkov
(Science Systems and Applications (United States) Lanham, Maryland, United States)
Patricia Castellanos
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Nickolay Krotkov ORCID
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Date Acquired
November 14, 2022
Publication Date
May 5, 2022
Publication Information
Publication: Frontiers in Remote Sensing
Publisher: Frontiers Media
Volume: 3
Issue Publication Date: May 1, 2022
e-ISSN: 2673-6187
Subject Category
Oceanography
Cybernetics, Artificial Intelligence And Robotics
Funding Number(s)
WBS: 583998.04.01.01
CONTRACT_GRANT: NNG17HP01C
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
Professional Review
Keywords
Ocean color
OMI
TROPOMI
PACE
TEMPO
GLIMR
Chlorophyll
Machine learning
Neural network
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