Application of the Gaussian anamorphosis to assimilation in a 3-D coupled physical-ecosystem model of the North Atlantic with the EnKF: a twin experiment

We consider the application of the Ensemble Kalman Filter (EnKF) to a coupled ocean ecosystem model (HYCOM-NORWECOM). Such models, especially the ecosystem models, are characterized by strongly non-linear interactions active in ocean blooms and present important difficulties for the use of data assi...

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Main Authors: E. Simon, L. Bertino
Format: Article in Journal/Newspaper
Language:English
Published: Copernicus Publications 2009
Subjects:
Online Access:http://www.ocean-sci.net/5/495/2009/os-5-495-2009.pdf
https://doaj.org/article/8dc96625c83845b59c5cb9255aed181d
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author E. Simon
L. Bertino
author_facet E. Simon
L. Bertino
author_sort E. Simon
collection Unknown
description We consider the application of the Ensemble Kalman Filter (EnKF) to a coupled ocean ecosystem model (HYCOM-NORWECOM). Such models, especially the ecosystem models, are characterized by strongly non-linear interactions active in ocean blooms and present important difficulties for the use of data assimilation methods based on linear statistical analysis. Besides the non-linearity of the model, one is confronted with the model constraints, the analysis state having to be consistent with the model, especially with respect to the constraints that some of the variables have to be positive. Furthermore the non-Gaussian distributions of the biogeochemical variables break an important assumption of the linear analysis, leading to a loss of optimality of the filter. We present an extension of the EnKF dealing with these difficulties by introducing a non-linear change of variables (anamorphosis function) in order to execute the analysis step in a Gaussian space, namely a space where the distributions of the transformed variables are Gaussian. We present also the initial results of the application of this non-Gaussian extension of the EnKF to the assimilation of simulated chlorophyll surface concentration data in a North Atlantic configuration of the HYCOM-NORWECOM coupled model.
format Article in Journal/Newspaper
genre North Atlantic
genre_facet North Atlantic
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http://www.ocean-sci.net/5/495/2009/os-5-495-2009.pdf
https://doaj.org/article/8dc96625c83845b59c5cb9255aed181d
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op_source Ocean Science, Vol 5, Iss 4, Pp 495-510 (2009)
publishDate 2009
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spelling fttriple:oai:gotriple.eu:oai:doaj.org/article:8dc96625c83845b59c5cb9255aed181d 2025-01-16T23:36:25+00:00 Application of the Gaussian anamorphosis to assimilation in a 3-D coupled physical-ecosystem model of the North Atlantic with the EnKF: a twin experiment E. Simon L. Bertino 2009-11-01 http://www.ocean-sci.net/5/495/2009/os-5-495-2009.pdf https://doaj.org/article/8dc96625c83845b59c5cb9255aed181d en eng Copernicus Publications 1812-0784 1812-0792 http://www.ocean-sci.net/5/495/2009/os-5-495-2009.pdf https://doaj.org/article/8dc96625c83845b59c5cb9255aed181d undefined Ocean Science, Vol 5, Iss 4, Pp 495-510 (2009) envir geo Journal Article https://vocabularies.coar-repositories.org/resource_types/c_6501/ 2009 fttriple 2023-01-22T19:25:25Z We consider the application of the Ensemble Kalman Filter (EnKF) to a coupled ocean ecosystem model (HYCOM-NORWECOM). Such models, especially the ecosystem models, are characterized by strongly non-linear interactions active in ocean blooms and present important difficulties for the use of data assimilation methods based on linear statistical analysis. Besides the non-linearity of the model, one is confronted with the model constraints, the analysis state having to be consistent with the model, especially with respect to the constraints that some of the variables have to be positive. Furthermore the non-Gaussian distributions of the biogeochemical variables break an important assumption of the linear analysis, leading to a loss of optimality of the filter. We present an extension of the EnKF dealing with these difficulties by introducing a non-linear change of variables (anamorphosis function) in order to execute the analysis step in a Gaussian space, namely a space where the distributions of the transformed variables are Gaussian. We present also the initial results of the application of this non-Gaussian extension of the EnKF to the assimilation of simulated chlorophyll surface concentration data in a North Atlantic configuration of the HYCOM-NORWECOM coupled model. Article in Journal/Newspaper North Atlantic Unknown
spellingShingle envir
geo
E. Simon
L. Bertino
Application of the Gaussian anamorphosis to assimilation in a 3-D coupled physical-ecosystem model of the North Atlantic with the EnKF: a twin experiment
title Application of the Gaussian anamorphosis to assimilation in a 3-D coupled physical-ecosystem model of the North Atlantic with the EnKF: a twin experiment
title_full Application of the Gaussian anamorphosis to assimilation in a 3-D coupled physical-ecosystem model of the North Atlantic with the EnKF: a twin experiment
title_fullStr Application of the Gaussian anamorphosis to assimilation in a 3-D coupled physical-ecosystem model of the North Atlantic with the EnKF: a twin experiment
title_full_unstemmed Application of the Gaussian anamorphosis to assimilation in a 3-D coupled physical-ecosystem model of the North Atlantic with the EnKF: a twin experiment
title_short Application of the Gaussian anamorphosis to assimilation in a 3-D coupled physical-ecosystem model of the North Atlantic with the EnKF: a twin experiment
title_sort application of the gaussian anamorphosis to assimilation in a 3-d coupled physical-ecosystem model of the north atlantic with the enkf: a twin experiment
topic envir
geo
topic_facet envir
geo
url http://www.ocean-sci.net/5/495/2009/os-5-495-2009.pdf
https://doaj.org/article/8dc96625c83845b59c5cb9255aed181d