Multimodal learning–based reconstruction of high-resolution spatial wind speed fields

Wind speed at the sea surface is a key quantity for a variety of scientific applications and human activities. For its importance, many observation techniques exist, ranging from in situ to satellite observations. However, none of such techniques can capture the spatiotemporal variability of the phe...

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Main Authors: Matteo Zambra, Nicolas Farrugia, Dorian Cazau, Alexandre Gensse, Ronan Fablet
Format: Article
Language:English
Published: Cambridge University Press 2025-01-01
Series:Environmental Data Science
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Online Access:https://www.cambridge.org/core/product/identifier/S2634460224000347/type/journal_article
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author Matteo Zambra
Nicolas Farrugia
Dorian Cazau
Alexandre Gensse
Ronan Fablet
author_facet Matteo Zambra
Nicolas Farrugia
Dorian Cazau
Alexandre Gensse
Ronan Fablet
author_sort Matteo Zambra
collection DOAJ
description Wind speed at the sea surface is a key quantity for a variety of scientific applications and human activities. For its importance, many observation techniques exist, ranging from in situ to satellite observations. However, none of such techniques can capture the spatiotemporal variability of the phenomenon at the same time. Reanalysis products, obtained from data assimilation methods, represent the state-of-the-art for sea-surface wind speed monitoring but may be biased by model errors and their spatial resolution is not competitive with satellite products. In this work, we propose a scheme based on both data assimilation and deep learning concepts to process spatiotemporally heterogeneous input sources to reconstruct high-resolution time series of spatial wind speed fields. This method allows to us make the most of the complementary information conveyed by the different sea-surface information typically available in operational settings. We use synthetic wind speed data to emulate satellite images, in situ time series and reanalyzed wind fields. Starting from these pseudo-observations, we run extensive numerical simulations to assess the impact of each input source on the model reconstruction performance. We show that our proposed framework outperforms a deep learning–based inversion scheme and can successfully exploit the spatiotemporal complementary information of the different input sources. We also show that the model can learn the possible bias in reanalysis products and attenuate it in the output reconstructions.
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institution Kabale University
issn 2634-4602
language English
publishDate 2025-01-01
publisher Cambridge University Press
record_format Article
series Environmental Data Science
spelling doaj-art-25685bfc07614ac2a03be37559a135de2025-01-16T21:47:23ZengCambridge University PressEnvironmental Data Science2634-46022025-01-01410.1017/eds.2024.34Multimodal learning–based reconstruction of high-resolution spatial wind speed fieldsMatteo Zambra0https://orcid.org/0000-0002-4435-8624Nicolas Farrugia1Dorian Cazau2Alexandre Gensse3Ronan Fablet4IMT Atlantique, Brest, France Lab-STICC, Brest, FranceIMT Atlantique, Brest, France Lab-STICC, Brest, FranceLab-STICC, Brest, France ENSTA Bretagne, Brest, FranceNaval Group, Toulon, FranceIMT Atlantique, Brest, France Lab-STICC, Brest, FranceWind speed at the sea surface is a key quantity for a variety of scientific applications and human activities. For its importance, many observation techniques exist, ranging from in situ to satellite observations. However, none of such techniques can capture the spatiotemporal variability of the phenomenon at the same time. Reanalysis products, obtained from data assimilation methods, represent the state-of-the-art for sea-surface wind speed monitoring but may be biased by model errors and their spatial resolution is not competitive with satellite products. In this work, we propose a scheme based on both data assimilation and deep learning concepts to process spatiotemporally heterogeneous input sources to reconstruct high-resolution time series of spatial wind speed fields. This method allows to us make the most of the complementary information conveyed by the different sea-surface information typically available in operational settings. We use synthetic wind speed data to emulate satellite images, in situ time series and reanalyzed wind fields. Starting from these pseudo-observations, we run extensive numerical simulations to assess the impact of each input source on the model reconstruction performance. We show that our proposed framework outperforms a deep learning–based inversion scheme and can successfully exploit the spatiotemporal complementary information of the different input sources. We also show that the model can learn the possible bias in reanalysis products and attenuate it in the output reconstructions.https://www.cambridge.org/core/product/identifier/S2634460224000347/type/journal_articledeep learningmultimodal learningsea-surface wind speed reconstructionvariational data assimilation
spellingShingle Matteo Zambra
Nicolas Farrugia
Dorian Cazau
Alexandre Gensse
Ronan Fablet
Multimodal learning–based reconstruction of high-resolution spatial wind speed fields
Environmental Data Science
deep learning
multimodal learning
sea-surface wind speed reconstruction
variational data assimilation
title Multimodal learning–based reconstruction of high-resolution spatial wind speed fields
title_full Multimodal learning–based reconstruction of high-resolution spatial wind speed fields
title_fullStr Multimodal learning–based reconstruction of high-resolution spatial wind speed fields
title_full_unstemmed Multimodal learning–based reconstruction of high-resolution spatial wind speed fields
title_short Multimodal learning–based reconstruction of high-resolution spatial wind speed fields
title_sort multimodal learning based reconstruction of high resolution spatial wind speed fields
topic deep learning
multimodal learning
sea-surface wind speed reconstruction
variational data assimilation
url https://www.cambridge.org/core/product/identifier/S2634460224000347/type/journal_article
work_keys_str_mv AT matteozambra multimodallearningbasedreconstructionofhighresolutionspatialwindspeedfields
AT nicolasfarrugia multimodallearningbasedreconstructionofhighresolutionspatialwindspeedfields
AT doriancazau multimodallearningbasedreconstructionofhighresolutionspatialwindspeedfields
AT alexandregensse multimodallearningbasedreconstructionofhighresolutionspatialwindspeedfields
AT ronanfablet multimodallearningbasedreconstructionofhighresolutionspatialwindspeedfields