Potential for High Fidelity Global Mapping of Common Inland Water Quality Products at High Spatial and Temporal Resolutions Based on a Synthetic Data and Machine Learning Approach

There is currently a scarcity of paired in-situ aquatic optical and biogeophysical data for productive inland waters, which critically hinders our capacity to develop and validate robust retrieval models for Earth Observation applications. This study aims to address this limitation through the devel...

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Main Authors: Jeremy Kravitz, Mark Matthews, Lisl Lain, Sarah Fawcett, Stewart Bernard
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-03-01
Series:Frontiers in Environmental Science
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fenvs.2021.587660/full
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spelling doaj-c3d07ef80a59409c9df5a0cacc5ec6172021-03-10T04:31:15ZengFrontiers Media S.A.Frontiers in Environmental Science2296-665X2021-03-01910.3389/fenvs.2021.587660587660Potential for High Fidelity Global Mapping of Common Inland Water Quality Products at High Spatial and Temporal Resolutions Based on a Synthetic Data and Machine Learning ApproachJeremy Kravitz0Jeremy Kravitz1Mark Matthews2Lisl Lain3Sarah Fawcett4Stewart Bernard5Department of Oceanography, University of Cape Town, Cape Town, South AfricaBiospheric Science Branch, NASA Ames Research Center, Mountain View, CA, United StatesCyanoLakes (Pty) Ltd, Cape Town, South AfricaDepartment of Oceanography, University of Cape Town, Cape Town, South AfricaDepartment of Oceanography, University of Cape Town, Cape Town, South AfricaEarth Systems Earth Observation Division, CSIR, Cape Town, South AfricaThere is currently a scarcity of paired in-situ aquatic optical and biogeophysical data for productive inland waters, which critically hinders our capacity to develop and validate robust retrieval models for Earth Observation applications. This study aims to address this limitation through the development of a novel synthetic dataset of top-of-atmosphere and bottom-of-atmosphere reflectances, which is the first to encompass the immense natural optical variability present in inland waters. Novel aspects of the synthetic dataset include: 1) physics-based, two-layered, size- and type-specific phytoplankton inherent optical properties (IOPs) for mixed eukaryotic/cyanobacteria assemblages; 2) calculations of mixed assemblage chlorophyll-a (chl-a) fluorescence; 3) modeled phycocyanin concentration derived from assemblage-based phycocyanin absorption; 4) and paired sensor-specific top-of-atmosphere reflectances, including optically extreme cases and the contribution of green vegetation adjacency. The synthetic bottom-of-atmosphere reflectance spectra were compiled into 13 distinct optical water types similar to those discovered using in-situ data. Inspection showed similar relationships of concentrations and IOPs to those of natural waters. This dataset was used to calculate typical surviving water-leaving signal at top-of-atmosphere, and used to train and test four state-of-the-art machine learning architectures for multi-parameter retrieval and cross-sensor capability. Initial results provide reliable estimates of water quality parameters and IOPs over a highly dynamic range of water types, at various spectral and spatial sensor resolutions. The results of this work represent a significant leap forward in our capacity for routine, global monitoring of inland water quality.https://www.frontiersin.org/articles/10.3389/fenvs.2021.587660/fulleutrophicationEarth observationwater qualityinland watersmachine learningradiative transfer modeling
collection DOAJ
language English
format Article
sources DOAJ
author Jeremy Kravitz
Jeremy Kravitz
Mark Matthews
Lisl Lain
Sarah Fawcett
Stewart Bernard
spellingShingle Jeremy Kravitz
Jeremy Kravitz
Mark Matthews
Lisl Lain
Sarah Fawcett
Stewart Bernard
Potential for High Fidelity Global Mapping of Common Inland Water Quality Products at High Spatial and Temporal Resolutions Based on a Synthetic Data and Machine Learning Approach
Frontiers in Environmental Science
eutrophication
Earth observation
water quality
inland waters
machine learning
radiative transfer modeling
author_facet Jeremy Kravitz
Jeremy Kravitz
Mark Matthews
Lisl Lain
Sarah Fawcett
Stewart Bernard
author_sort Jeremy Kravitz
title Potential for High Fidelity Global Mapping of Common Inland Water Quality Products at High Spatial and Temporal Resolutions Based on a Synthetic Data and Machine Learning Approach
title_short Potential for High Fidelity Global Mapping of Common Inland Water Quality Products at High Spatial and Temporal Resolutions Based on a Synthetic Data and Machine Learning Approach
title_full Potential for High Fidelity Global Mapping of Common Inland Water Quality Products at High Spatial and Temporal Resolutions Based on a Synthetic Data and Machine Learning Approach
title_fullStr Potential for High Fidelity Global Mapping of Common Inland Water Quality Products at High Spatial and Temporal Resolutions Based on a Synthetic Data and Machine Learning Approach
title_full_unstemmed Potential for High Fidelity Global Mapping of Common Inland Water Quality Products at High Spatial and Temporal Resolutions Based on a Synthetic Data and Machine Learning Approach
title_sort potential for high fidelity global mapping of common inland water quality products at high spatial and temporal resolutions based on a synthetic data and machine learning approach
publisher Frontiers Media S.A.
series Frontiers in Environmental Science
issn 2296-665X
publishDate 2021-03-01
description There is currently a scarcity of paired in-situ aquatic optical and biogeophysical data for productive inland waters, which critically hinders our capacity to develop and validate robust retrieval models for Earth Observation applications. This study aims to address this limitation through the development of a novel synthetic dataset of top-of-atmosphere and bottom-of-atmosphere reflectances, which is the first to encompass the immense natural optical variability present in inland waters. Novel aspects of the synthetic dataset include: 1) physics-based, two-layered, size- and type-specific phytoplankton inherent optical properties (IOPs) for mixed eukaryotic/cyanobacteria assemblages; 2) calculations of mixed assemblage chlorophyll-a (chl-a) fluorescence; 3) modeled phycocyanin concentration derived from assemblage-based phycocyanin absorption; 4) and paired sensor-specific top-of-atmosphere reflectances, including optically extreme cases and the contribution of green vegetation adjacency. The synthetic bottom-of-atmosphere reflectance spectra were compiled into 13 distinct optical water types similar to those discovered using in-situ data. Inspection showed similar relationships of concentrations and IOPs to those of natural waters. This dataset was used to calculate typical surviving water-leaving signal at top-of-atmosphere, and used to train and test four state-of-the-art machine learning architectures for multi-parameter retrieval and cross-sensor capability. Initial results provide reliable estimates of water quality parameters and IOPs over a highly dynamic range of water types, at various spectral and spatial sensor resolutions. The results of this work represent a significant leap forward in our capacity for routine, global monitoring of inland water quality.
topic eutrophication
Earth observation
water quality
inland waters
machine learning
radiative transfer modeling
url https://www.frontiersin.org/articles/10.3389/fenvs.2021.587660/full
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