Perspective on Satellite-Based Land Data Assimilation to Estimate Water Cycle Components in an Era of Advanced Data Availability and Model Sophistication

The beginning of the 21st century is marked by a rapid growth of land surface satellite data and model sophistication. This offers new opportunities to estimate multiple components of the water cycle via satellite-based land data assimilation (DA) across multiple scales. By resolving more processes in land surface models and by coupling the land, the atmosphere, and other Earth system compartments, the observed information can be propagated to constrain additional unobserved variables. Furthermore, access to more satellite observations enables the direct constraint of more and more components of the water cycle that are of interest to end users. However, the finer level of detail in models and data is also often accompanied by an increase in dimensions, with more state variables, parameters, or boundary conditions to estimate, and more observations to assimilate. This requires advanced DA methods and efficient solutions. One solution is to target specific observations for assimilation based on a sensitivity study or coupling strength analysis, because not all observations are equally effective in improving subsequent forecasts of hydrological variables, weather, agricultural production, or hazards through DA. This paper offers a perspective on current and future land DA development, and suggestions to optimally exploit advances in observing and modeling systems.

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Main Authors: De Lannoy, Gabrielle, Bechtold, Michel, Albergel, Clément, Brocca, Luca, Calvet, Jean-Christophe, Carrassi, Alberto, Crow, Wade T., De Rosnay, Patricia, Durand, Michael, Forman, Bart, Geppert, Gernot, Girotto, Manuela, Franssen, Harrie-Jan Hendricks, Jonas, Tobias, Kumar, Sujay V., Lievens, Hans, Lu, Yang, Massari, Christian, Pauwels, Valentjn, Reichle, Rolf, Steele-Dunne, Susan
Other Authors: European Commission
Format: artículo de revisión biblioteca
Language:English
Published: Frontiers Media 2022-09-16
Subjects:Data assimilation, Soil moisture, Snow, Vegetation, Microwave remote sensing, Land surface modeling, Targeted observations,
Online Access:http://hdl.handle.net/10261/277859
http://dx.doi.org/10.13039/501100000780
http://dx.doi.org/10.13039/501100000844
http://dx.doi.org/10.13039/501100003130
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spelling dig-ias-es-10261-2778592023-01-25T13:43:39Z Perspective on Satellite-Based Land Data Assimilation to Estimate Water Cycle Components in an Era of Advanced Data Availability and Model Sophistication De Lannoy, Gabrielle Bechtold, Michel Albergel, Clément Brocca, Luca Calvet, Jean-Christophe Carrassi, Alberto Crow, Wade T. De Rosnay, Patricia Durand, Michael Forman, Bart Geppert, Gernot Girotto, Manuela Franssen, Harrie-Jan Hendricks Jonas, Tobias Kumar, Sujay V. Lievens, Hans Lu, Yang Massari, Christian Pauwels, Valentjn Reichle, Rolf Steele-Dunne, Susan European Commission Research Foundation - Flanders KU Leuven European Space Agency Data assimilation Soil moisture Snow Vegetation Microwave remote sensing Land surface modeling Targeted observations The beginning of the 21st century is marked by a rapid growth of land surface satellite data and model sophistication. This offers new opportunities to estimate multiple components of the water cycle via satellite-based land data assimilation (DA) across multiple scales. By resolving more processes in land surface models and by coupling the land, the atmosphere, and other Earth system compartments, the observed information can be propagated to constrain additional unobserved variables. Furthermore, access to more satellite observations enables the direct constraint of more and more components of the water cycle that are of interest to end users. However, the finer level of detail in models and data is also often accompanied by an increase in dimensions, with more state variables, parameters, or boundary conditions to estimate, and more observations to assimilate. This requires advanced DA methods and efficient solutions. One solution is to target specific observations for assimilation based on a sensitivity study or coupling strength analysis, because not all observations are equally effective in improving subsequent forecasts of hydrological variables, weather, agricultural production, or hazards through DA. This paper offers a perspective on current and future land DA development, and suggestions to optimally exploit advances in observing and modeling systems. This research is supported by Belspo EODAHR (SR/00/376), the European Commission, Horizon 2020 SHui (773903), FWO CONSOLIDATION (G0A7320N), ESA 4D-MED (4000136272/21/I-EF) and KU Leuven C1 (C14/21/057). Peer reviewed 2022-08-29T10:30:22Z 2022-08-29T10:30:22Z 2022-09-16 artículo de revisión Frontiers in Water 4: 981745 (2022) http://hdl.handle.net/10261/277859 10.3389/frwa.2022.981745 2624-9375 http://dx.doi.org/10.13039/501100000780 http://dx.doi.org/10.13039/501100000844 http://dx.doi.org/10.13039/501100003130 en #PLACEHOLDER_PARENT_METADATA_VALUE# info:eu-repo/grantAgreement/EC/H2020/773903 Publisher's version https://doi.org/10.3389/frwa.2022.981745 No open application/pdf Frontiers Media
institution IAS ES
collection DSpace
country España
countrycode ES
component Bibliográfico
access En linea
databasecode dig-ias-es
tag biblioteca
region Europa del Sur
libraryname Biblioteca del IAS España
language English
topic Data assimilation
Soil moisture
Snow
Vegetation
Microwave remote sensing
Land surface modeling
Targeted observations
Data assimilation
Soil moisture
Snow
Vegetation
Microwave remote sensing
Land surface modeling
Targeted observations
spellingShingle Data assimilation
Soil moisture
Snow
Vegetation
Microwave remote sensing
Land surface modeling
Targeted observations
Data assimilation
Soil moisture
Snow
Vegetation
Microwave remote sensing
Land surface modeling
Targeted observations
De Lannoy, Gabrielle
Bechtold, Michel
Albergel, Clément
Brocca, Luca
Calvet, Jean-Christophe
Carrassi, Alberto
Crow, Wade T.
De Rosnay, Patricia
Durand, Michael
Forman, Bart
Geppert, Gernot
Girotto, Manuela
Franssen, Harrie-Jan Hendricks
Jonas, Tobias
Kumar, Sujay V.
Lievens, Hans
Lu, Yang
Massari, Christian
Pauwels, Valentjn
Reichle, Rolf
Steele-Dunne, Susan
Perspective on Satellite-Based Land Data Assimilation to Estimate Water Cycle Components in an Era of Advanced Data Availability and Model Sophistication
description The beginning of the 21st century is marked by a rapid growth of land surface satellite data and model sophistication. This offers new opportunities to estimate multiple components of the water cycle via satellite-based land data assimilation (DA) across multiple scales. By resolving more processes in land surface models and by coupling the land, the atmosphere, and other Earth system compartments, the observed information can be propagated to constrain additional unobserved variables. Furthermore, access to more satellite observations enables the direct constraint of more and more components of the water cycle that are of interest to end users. However, the finer level of detail in models and data is also often accompanied by an increase in dimensions, with more state variables, parameters, or boundary conditions to estimate, and more observations to assimilate. This requires advanced DA methods and efficient solutions. One solution is to target specific observations for assimilation based on a sensitivity study or coupling strength analysis, because not all observations are equally effective in improving subsequent forecasts of hydrological variables, weather, agricultural production, or hazards through DA. This paper offers a perspective on current and future land DA development, and suggestions to optimally exploit advances in observing and modeling systems.
author2 European Commission
author_facet European Commission
De Lannoy, Gabrielle
Bechtold, Michel
Albergel, Clément
Brocca, Luca
Calvet, Jean-Christophe
Carrassi, Alberto
Crow, Wade T.
De Rosnay, Patricia
Durand, Michael
Forman, Bart
Geppert, Gernot
Girotto, Manuela
Franssen, Harrie-Jan Hendricks
Jonas, Tobias
Kumar, Sujay V.
Lievens, Hans
Lu, Yang
Massari, Christian
Pauwels, Valentjn
Reichle, Rolf
Steele-Dunne, Susan
format artículo de revisión
topic_facet Data assimilation
Soil moisture
Snow
Vegetation
Microwave remote sensing
Land surface modeling
Targeted observations
author De Lannoy, Gabrielle
Bechtold, Michel
Albergel, Clément
Brocca, Luca
Calvet, Jean-Christophe
Carrassi, Alberto
Crow, Wade T.
De Rosnay, Patricia
Durand, Michael
Forman, Bart
Geppert, Gernot
Girotto, Manuela
Franssen, Harrie-Jan Hendricks
Jonas, Tobias
Kumar, Sujay V.
Lievens, Hans
Lu, Yang
Massari, Christian
Pauwels, Valentjn
Reichle, Rolf
Steele-Dunne, Susan
author_sort De Lannoy, Gabrielle
title Perspective on Satellite-Based Land Data Assimilation to Estimate Water Cycle Components in an Era of Advanced Data Availability and Model Sophistication
title_short Perspective on Satellite-Based Land Data Assimilation to Estimate Water Cycle Components in an Era of Advanced Data Availability and Model Sophistication
title_full Perspective on Satellite-Based Land Data Assimilation to Estimate Water Cycle Components in an Era of Advanced Data Availability and Model Sophistication
title_fullStr Perspective on Satellite-Based Land Data Assimilation to Estimate Water Cycle Components in an Era of Advanced Data Availability and Model Sophistication
title_full_unstemmed Perspective on Satellite-Based Land Data Assimilation to Estimate Water Cycle Components in an Era of Advanced Data Availability and Model Sophistication
title_sort perspective on satellite-based land data assimilation to estimate water cycle components in an era of advanced data availability and model sophistication
publisher Frontiers Media
publishDate 2022-09-16
url http://hdl.handle.net/10261/277859
http://dx.doi.org/10.13039/501100000780
http://dx.doi.org/10.13039/501100000844
http://dx.doi.org/10.13039/501100003130
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