Uncertainty in Ocean-Color Estimates of Chlorophyll for Phytoplankton Groups

Over the past decade, techniques have been presented to derive the community structure of phytoplankton at synoptic scales using satellite ocean-color data. There is a growing demand from the ecosystem modeling community to use these products for model evaluation and data assimilation. Yet, from the...

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Published in:Frontiers in Marine Science
Main Authors: Brewin, Robert J. W., Ciavatta, Stefano, Sathyendranath, Shubha, Jackson, Thomas, Tilstone, Gavin, Curran, Kieran, Airs, Ruth L., Cummings, Denise, Brotas, Vanda, Organelli, Emanuele, Dall'Olmo, Giorgio, Raitsos, Dionysios E.
Format: Article in Journal/Newspaper
Language:English
Published: Frontiers Media 2020
Subjects:
Online Access:http://hdl.handle.net/10451/41146
https://doi.org/10.3389/fmars.2017.00104
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spelling ftunivlisboa:oai:repositorio.ul.pt:10451/41146 2023-05-15T17:35:51+02:00 Uncertainty in Ocean-Color Estimates of Chlorophyll for Phytoplankton Groups Brewin, Robert J. W. Ciavatta, Stefano Sathyendranath, Shubha Jackson, Thomas Tilstone, Gavin Curran, Kieran Airs, Ruth L. Cummings, Denise Brotas, Vanda Organelli, Emanuele Dall'Olmo, Giorgio Raitsos, Dionysios E. 2020-01-19T20:09:21Z http://hdl.handle.net/10451/41146 https://doi.org/10.3389/fmars.2017.00104 eng eng Frontiers Media https://www.frontiersin.org/articles/10.3389/fmars.2017.00104 2296-7745 http://hdl.handle.net/10451/41146 doi:10.3389/fmars.2017.00104 openAccess http://creativecommons.org/licenses/by/4.0/ CC-BY phytoplankton size function chlorophyll ocean-color uncertainty article 2020 ftunivlisboa https://doi.org/10.3389/fmars.2017.00104 2022-05-25T18:39:59Z Over the past decade, techniques have been presented to derive the community structure of phytoplankton at synoptic scales using satellite ocean-color data. There is a growing demand from the ecosystem modeling community to use these products for model evaluation and data assimilation. Yet, from the perspective of an ecosystem modeler these products are of limited use unless: (i) the phytoplankton products provided by the remote-sensing community match those required by the ecosystem modelers; and (ii) information on per-pixel uncertainty is provided to evaluate data quality. Using a large dataset collected in the North Atlantic, we re-tune a method to estimate the chlorophyll concentration of three phytoplankton groups, partitioned according to size [pico- (<2 μm), nano- (2–20 μm) and micro-phytoplankton (>20 μm)]. The method is modified to account for the influence of sea surface temperature, also available from satellite data, on model parameters and on the partitioning of microphytoplankton into diatoms and dinoflagellates, such that the phytoplankton groups provided match those simulated in a state of the art marine ecosystem model (the European Regional Seas Ecosystem Model, ERSEM). The method is validated using another dataset, independent of the data used to parameterize the method, of more than 800 satellite and in situ match-ups. Using fuzzy-logic techniques for deriving per-pixel uncertainty, developed within the ESA Ocean Colour Climate Change Initiative (OC-CCI), the match-up dataset is used to derive the root mean square error and the bias between in situ and satellite estimates of the chlorophyll for each phytoplankton group, for 14 different optical water types (OWT). These values are then used with satellite estimates of OWTs to map uncertainty in chlorophyll on a per pixel basis for each phytoplankton group. It is envisaged these satellite products will be useful for those working on the validation of, and assimilation of data into, marine ecosystem models that simulate different ... Article in Journal/Newspaper North Atlantic Universidade de Lisboa: repositório.UL Frontiers in Marine Science 4
institution Open Polar
collection Universidade de Lisboa: repositório.UL
op_collection_id ftunivlisboa
language English
topic phytoplankton
size
function
chlorophyll
ocean-color
uncertainty
spellingShingle phytoplankton
size
function
chlorophyll
ocean-color
uncertainty
Brewin, Robert J. W.
Ciavatta, Stefano
Sathyendranath, Shubha
Jackson, Thomas
Tilstone, Gavin
Curran, Kieran
Airs, Ruth L.
Cummings, Denise
Brotas, Vanda
Organelli, Emanuele
Dall'Olmo, Giorgio
Raitsos, Dionysios E.
Uncertainty in Ocean-Color Estimates of Chlorophyll for Phytoplankton Groups
topic_facet phytoplankton
size
function
chlorophyll
ocean-color
uncertainty
description Over the past decade, techniques have been presented to derive the community structure of phytoplankton at synoptic scales using satellite ocean-color data. There is a growing demand from the ecosystem modeling community to use these products for model evaluation and data assimilation. Yet, from the perspective of an ecosystem modeler these products are of limited use unless: (i) the phytoplankton products provided by the remote-sensing community match those required by the ecosystem modelers; and (ii) information on per-pixel uncertainty is provided to evaluate data quality. Using a large dataset collected in the North Atlantic, we re-tune a method to estimate the chlorophyll concentration of three phytoplankton groups, partitioned according to size [pico- (<2 μm), nano- (2–20 μm) and micro-phytoplankton (>20 μm)]. The method is modified to account for the influence of sea surface temperature, also available from satellite data, on model parameters and on the partitioning of microphytoplankton into diatoms and dinoflagellates, such that the phytoplankton groups provided match those simulated in a state of the art marine ecosystem model (the European Regional Seas Ecosystem Model, ERSEM). The method is validated using another dataset, independent of the data used to parameterize the method, of more than 800 satellite and in situ match-ups. Using fuzzy-logic techniques for deriving per-pixel uncertainty, developed within the ESA Ocean Colour Climate Change Initiative (OC-CCI), the match-up dataset is used to derive the root mean square error and the bias between in situ and satellite estimates of the chlorophyll for each phytoplankton group, for 14 different optical water types (OWT). These values are then used with satellite estimates of OWTs to map uncertainty in chlorophyll on a per pixel basis for each phytoplankton group. It is envisaged these satellite products will be useful for those working on the validation of, and assimilation of data into, marine ecosystem models that simulate different ...
format Article in Journal/Newspaper
author Brewin, Robert J. W.
Ciavatta, Stefano
Sathyendranath, Shubha
Jackson, Thomas
Tilstone, Gavin
Curran, Kieran
Airs, Ruth L.
Cummings, Denise
Brotas, Vanda
Organelli, Emanuele
Dall'Olmo, Giorgio
Raitsos, Dionysios E.
author_facet Brewin, Robert J. W.
Ciavatta, Stefano
Sathyendranath, Shubha
Jackson, Thomas
Tilstone, Gavin
Curran, Kieran
Airs, Ruth L.
Cummings, Denise
Brotas, Vanda
Organelli, Emanuele
Dall'Olmo, Giorgio
Raitsos, Dionysios E.
author_sort Brewin, Robert J. W.
title Uncertainty in Ocean-Color Estimates of Chlorophyll for Phytoplankton Groups
title_short Uncertainty in Ocean-Color Estimates of Chlorophyll for Phytoplankton Groups
title_full Uncertainty in Ocean-Color Estimates of Chlorophyll for Phytoplankton Groups
title_fullStr Uncertainty in Ocean-Color Estimates of Chlorophyll for Phytoplankton Groups
title_full_unstemmed Uncertainty in Ocean-Color Estimates of Chlorophyll for Phytoplankton Groups
title_sort uncertainty in ocean-color estimates of chlorophyll for phytoplankton groups
publisher Frontiers Media
publishDate 2020
url http://hdl.handle.net/10451/41146
https://doi.org/10.3389/fmars.2017.00104
genre North Atlantic
genre_facet North Atlantic
op_relation https://www.frontiersin.org/articles/10.3389/fmars.2017.00104
2296-7745
http://hdl.handle.net/10451/41146
doi:10.3389/fmars.2017.00104
op_rights openAccess
http://creativecommons.org/licenses/by/4.0/
op_rightsnorm CC-BY
op_doi https://doi.org/10.3389/fmars.2017.00104
container_title Frontiers in Marine Science
container_volume 4
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