Physically-constrained data-driven inversions to infer the bed topography beneath glaciers flows. Application to East Antarctica

A method to infer the bed elevation from glaciers surface measurements (eleva-tion, velocity) and sparse in-situ thickness values is developed and assessed. This inversion method relies on: a statistical model (Deep Neural Network) based on the in-situ thickness measurements, the dedicated RU-SIA fl...

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Published in:Computational Geosciences
Main Authors: Monnier, Jérôme, Zhu, Jiamin
Other Authors: Institut de Mathématiques de Toulouse UMR5219 (IMT), Université Toulouse Capitole (UT Capitole), Université Fédérale Toulouse Midi-Pyrénées-Université Fédérale Toulouse Midi-Pyrénées-Institut National des Sciences Appliquées - Toulouse (INSA Toulouse), Institut National des Sciences Appliquées (INSA)-Université Fédérale Toulouse Midi-Pyrénées-Institut National des Sciences Appliquées (INSA)-Université Toulouse - Jean Jaurès (UT2J)-Université Toulouse III - Paul Sabatier (UT3), Université Fédérale Toulouse Midi-Pyrénées-Centre National de la Recherche Scientifique (CNRS)
Format: Report
Language:English
Published: HAL CCSD 2021
Subjects:
Online Access:https://hal.science/hal-01926620
https://hal.science/hal-01926620v4/document
https://hal.science/hal-01926620v4/file/MonnierZhu-ComputSc21.pdf
https://doi.org/10.1007/s10596-021-10070-1
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spelling ftunivnantes:oai:HAL:hal-01926620v4 2023-05-15T14:03:14+02:00 Physically-constrained data-driven inversions to infer the bed topography beneath glaciers flows. Application to East Antarctica Monnier, Jérôme Zhu, Jiamin Institut de Mathématiques de Toulouse UMR5219 (IMT) Université Toulouse Capitole (UT Capitole) Université Fédérale Toulouse Midi-Pyrénées-Université Fédérale Toulouse Midi-Pyrénées-Institut National des Sciences Appliquées - Toulouse (INSA Toulouse) Institut National des Sciences Appliquées (INSA)-Université Fédérale Toulouse Midi-Pyrénées-Institut National des Sciences Appliquées (INSA)-Université Toulouse - Jean Jaurès (UT2J)-Université Toulouse III - Paul Sabatier (UT3) Université Fédérale Toulouse Midi-Pyrénées-Centre National de la Recherche Scientifique (CNRS) 2021-06-07 https://hal.science/hal-01926620 https://hal.science/hal-01926620v4/document https://hal.science/hal-01926620v4/file/MonnierZhu-ComputSc21.pdf https://doi.org/10.1007/s10596-021-10070-1 en eng HAL CCSD info:eu-repo/semantics/altIdentifier/doi/10.1007/s10596-021-10070-1 hal-01926620 https://hal.science/hal-01926620 https://hal.science/hal-01926620v4/document https://hal.science/hal-01926620v4/file/MonnierZhu-ComputSc21.pdf doi:10.1007/s10596-021-10070-1 info:eu-repo/semantics/OpenAccess https://hal.science/hal-01926620 2021 Data assimilation reduced flow model surface data bed inference Antarctica deep learning inference topography glaciers [INFO.INFO-MS]Computer Science [cs]/Mathematical Software [cs.MS] [INFO.INFO-NA]Computer Science [cs]/Numerical Analysis [cs.NA] [INFO.INFO-NE]Computer Science [cs]/Neural and Evolutionary Computing [cs.NE] [MATH.MATH-OC]Mathematics [math]/Optimization and Control [math.OC] [SDU.STU.GL]Sciences of the Universe [physics]/Earth Sciences/Glaciology info:eu-repo/semantics/preprint Preprints, Working Papers, . 2021 ftunivnantes https://doi.org/10.1007/s10596-021-10070-1 2023-03-08T02:58:03Z A method to infer the bed elevation from glaciers surface measurements (eleva-tion, velocity) and sparse in-situ thickness values is developed and assessed. This inversion method relies on: a statistical model (Deep Neural Network) based on the in-situ thickness measurements, the dedicated RU-SIA flow model (RU for Reduced Uncertainty) natively integrating the surface measurements (altimetry, InSAR) and advanced Variational Data Assimilation processes. The RU-SIA model takes into account basal slipperiness and non uniform vertical profiles (including thermal gradients) via an unique dimensionless parameter. The inversion method is robust; it may be applied to very poorly covered and uncovered areas during airborne campaigns as soon as flows are moderately sheared. Numerical inversions are performed for some large East Antarctica Ice Sheet areas presenting surface velocities ranging from ∼ 5 to 80 m/y. Estimations are provided in uncovered areas during airborne campaigns hence presenting up to now highly uncertain bed elevation values. The estimations are valid for wave lengths greater than ∼ 10 ¯ h due to the considered shallow flow assumption, with a resolution at ∼ ¯ h (¯ h a characteristic thickness value). Detailed analysis and comparisons with the bed topography BedMap2 are presented. Report Antarc* Antarctica East Antarctica Ice Sheet Université de Nantes: HAL-UNIV-NANTES East Antarctica Computational Geosciences 25 5 1793 1819
institution Open Polar
collection Université de Nantes: HAL-UNIV-NANTES
op_collection_id ftunivnantes
language English
topic Data assimilation
reduced flow model
surface data
bed inference
Antarctica
deep learning
inference
topography
glaciers
[INFO.INFO-MS]Computer Science [cs]/Mathematical Software [cs.MS]
[INFO.INFO-NA]Computer Science [cs]/Numerical Analysis [cs.NA]
[INFO.INFO-NE]Computer Science [cs]/Neural and Evolutionary Computing [cs.NE]
[MATH.MATH-OC]Mathematics [math]/Optimization and Control [math.OC]
[SDU.STU.GL]Sciences of the Universe [physics]/Earth Sciences/Glaciology
spellingShingle Data assimilation
reduced flow model
surface data
bed inference
Antarctica
deep learning
inference
topography
glaciers
[INFO.INFO-MS]Computer Science [cs]/Mathematical Software [cs.MS]
[INFO.INFO-NA]Computer Science [cs]/Numerical Analysis [cs.NA]
[INFO.INFO-NE]Computer Science [cs]/Neural and Evolutionary Computing [cs.NE]
[MATH.MATH-OC]Mathematics [math]/Optimization and Control [math.OC]
[SDU.STU.GL]Sciences of the Universe [physics]/Earth Sciences/Glaciology
Monnier, Jérôme
Zhu, Jiamin
Physically-constrained data-driven inversions to infer the bed topography beneath glaciers flows. Application to East Antarctica
topic_facet Data assimilation
reduced flow model
surface data
bed inference
Antarctica
deep learning
inference
topography
glaciers
[INFO.INFO-MS]Computer Science [cs]/Mathematical Software [cs.MS]
[INFO.INFO-NA]Computer Science [cs]/Numerical Analysis [cs.NA]
[INFO.INFO-NE]Computer Science [cs]/Neural and Evolutionary Computing [cs.NE]
[MATH.MATH-OC]Mathematics [math]/Optimization and Control [math.OC]
[SDU.STU.GL]Sciences of the Universe [physics]/Earth Sciences/Glaciology
description A method to infer the bed elevation from glaciers surface measurements (eleva-tion, velocity) and sparse in-situ thickness values is developed and assessed. This inversion method relies on: a statistical model (Deep Neural Network) based on the in-situ thickness measurements, the dedicated RU-SIA flow model (RU for Reduced Uncertainty) natively integrating the surface measurements (altimetry, InSAR) and advanced Variational Data Assimilation processes. The RU-SIA model takes into account basal slipperiness and non uniform vertical profiles (including thermal gradients) via an unique dimensionless parameter. The inversion method is robust; it may be applied to very poorly covered and uncovered areas during airborne campaigns as soon as flows are moderately sheared. Numerical inversions are performed for some large East Antarctica Ice Sheet areas presenting surface velocities ranging from ∼ 5 to 80 m/y. Estimations are provided in uncovered areas during airborne campaigns hence presenting up to now highly uncertain bed elevation values. The estimations are valid for wave lengths greater than ∼ 10 ¯ h due to the considered shallow flow assumption, with a resolution at ∼ ¯ h (¯ h a characteristic thickness value). Detailed analysis and comparisons with the bed topography BedMap2 are presented.
author2 Institut de Mathématiques de Toulouse UMR5219 (IMT)
Université Toulouse Capitole (UT Capitole)
Université Fédérale Toulouse Midi-Pyrénées-Université Fédérale Toulouse Midi-Pyrénées-Institut National des Sciences Appliquées - Toulouse (INSA Toulouse)
Institut National des Sciences Appliquées (INSA)-Université Fédérale Toulouse Midi-Pyrénées-Institut National des Sciences Appliquées (INSA)-Université Toulouse - Jean Jaurès (UT2J)-Université Toulouse III - Paul Sabatier (UT3)
Université Fédérale Toulouse Midi-Pyrénées-Centre National de la Recherche Scientifique (CNRS)
format Report
author Monnier, Jérôme
Zhu, Jiamin
author_facet Monnier, Jérôme
Zhu, Jiamin
author_sort Monnier, Jérôme
title Physically-constrained data-driven inversions to infer the bed topography beneath glaciers flows. Application to East Antarctica
title_short Physically-constrained data-driven inversions to infer the bed topography beneath glaciers flows. Application to East Antarctica
title_full Physically-constrained data-driven inversions to infer the bed topography beneath glaciers flows. Application to East Antarctica
title_fullStr Physically-constrained data-driven inversions to infer the bed topography beneath glaciers flows. Application to East Antarctica
title_full_unstemmed Physically-constrained data-driven inversions to infer the bed topography beneath glaciers flows. Application to East Antarctica
title_sort physically-constrained data-driven inversions to infer the bed topography beneath glaciers flows. application to east antarctica
publisher HAL CCSD
publishDate 2021
url https://hal.science/hal-01926620
https://hal.science/hal-01926620v4/document
https://hal.science/hal-01926620v4/file/MonnierZhu-ComputSc21.pdf
https://doi.org/10.1007/s10596-021-10070-1
geographic East Antarctica
geographic_facet East Antarctica
genre Antarc*
Antarctica
East Antarctica
Ice Sheet
genre_facet Antarc*
Antarctica
East Antarctica
Ice Sheet
op_source https://hal.science/hal-01926620
2021
op_relation info:eu-repo/semantics/altIdentifier/doi/10.1007/s10596-021-10070-1
hal-01926620
https://hal.science/hal-01926620
https://hal.science/hal-01926620v4/document
https://hal.science/hal-01926620v4/file/MonnierZhu-ComputSc21.pdf
doi:10.1007/s10596-021-10070-1
op_rights info:eu-repo/semantics/OpenAccess
op_doi https://doi.org/10.1007/s10596-021-10070-1
container_title Computational Geosciences
container_volume 25
container_issue 5
container_start_page 1793
op_container_end_page 1819
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