Estimating early-winter Antarctic sea ice thickness from deformed ice morphology

Satellites have documented variability in sea ice areal extent for decades, but there are significant challenges in obtaining analogous measurements for sea ice thickness data in the Antarctic, primarily due to difficulties in estimating snow cover on sea ice. Sea ice thickness (SIT) can be estimate...

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Published in:The Cryosphere
Main Authors: Mei, M. Jeffrey, Maksym, Ted, Weissling, Blake, Singh, Hanumant
Format: Text
Language:English
Published: 2019
Subjects:
Online Access:https://doi.org/10.5194/tc-13-2915-2019
https://tc.copernicus.org/articles/13/2915/2019/
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spelling ftcopernicus:oai:publications.copernicus.org:tc77434 2023-05-15T13:55:28+02:00 Estimating early-winter Antarctic sea ice thickness from deformed ice morphology Mei, M. Jeffrey Maksym, Ted Weissling, Blake Singh, Hanumant 2019-11-08 application/pdf https://doi.org/10.5194/tc-13-2915-2019 https://tc.copernicus.org/articles/13/2915/2019/ eng eng doi:10.5194/tc-13-2915-2019 https://tc.copernicus.org/articles/13/2915/2019/ eISSN: 1994-0424 Text 2019 ftcopernicus https://doi.org/10.5194/tc-13-2915-2019 2020-07-20T16:22:35Z Satellites have documented variability in sea ice areal extent for decades, but there are significant challenges in obtaining analogous measurements for sea ice thickness data in the Antarctic, primarily due to difficulties in estimating snow cover on sea ice. Sea ice thickness (SIT) can be estimated from snow freeboard measurements, such as those from airborne/satellite lidar, by assuming some snow depth distribution or empirically fitting with limited data from drilled transects from various field studies. Current estimates for large-scale Antarctic SIT have errors as high as ∼50 %, and simple statistical models of small-scale mean thickness have similarly high errors. Averaging measurements over hundreds of meters can improve the model fits to existing data, though these results do not necessarily generalize to other floes. At present, we do not have algorithms that accurately estimate SIT at high resolutions. We use a convolutional neural network with laser altimetry profiles of sea ice surfaces at 0.2 m resolution to show that it is possible to estimate SIT at 20 m resolution with better accuracy and generalization than current methods (mean relative errors ∼15 %). Moreover, the neural network does not require specification of snow depth or density, which increases its potential applications to other lidar datasets. The learned features appear to correspond to basic morphological features, and these features appear to be common to other floes with the same climatology. This suggests that there is a relationship between the surface morphology and the ice thickness. The model has a mean relative error of 20 % when applied to a new floe from the region and season. This method may be extended to lower-resolution, larger-footprint data such as such as Operation IceBridge, and it suggests a possible avenue to reduce errors in satellite estimates of Antarctic SIT from ICESat-2 over current methods, especially at smaller scales. Text Antarc* Antarctic Sea ice Copernicus Publications: E-Journals Antarctic The Antarctic The Cryosphere 13 11 2915 2934
institution Open Polar
collection Copernicus Publications: E-Journals
op_collection_id ftcopernicus
language English
description Satellites have documented variability in sea ice areal extent for decades, but there are significant challenges in obtaining analogous measurements for sea ice thickness data in the Antarctic, primarily due to difficulties in estimating snow cover on sea ice. Sea ice thickness (SIT) can be estimated from snow freeboard measurements, such as those from airborne/satellite lidar, by assuming some snow depth distribution or empirically fitting with limited data from drilled transects from various field studies. Current estimates for large-scale Antarctic SIT have errors as high as ∼50 %, and simple statistical models of small-scale mean thickness have similarly high errors. Averaging measurements over hundreds of meters can improve the model fits to existing data, though these results do not necessarily generalize to other floes. At present, we do not have algorithms that accurately estimate SIT at high resolutions. We use a convolutional neural network with laser altimetry profiles of sea ice surfaces at 0.2 m resolution to show that it is possible to estimate SIT at 20 m resolution with better accuracy and generalization than current methods (mean relative errors ∼15 %). Moreover, the neural network does not require specification of snow depth or density, which increases its potential applications to other lidar datasets. The learned features appear to correspond to basic morphological features, and these features appear to be common to other floes with the same climatology. This suggests that there is a relationship between the surface morphology and the ice thickness. The model has a mean relative error of 20 % when applied to a new floe from the region and season. This method may be extended to lower-resolution, larger-footprint data such as such as Operation IceBridge, and it suggests a possible avenue to reduce errors in satellite estimates of Antarctic SIT from ICESat-2 over current methods, especially at smaller scales.
format Text
author Mei, M. Jeffrey
Maksym, Ted
Weissling, Blake
Singh, Hanumant
spellingShingle Mei, M. Jeffrey
Maksym, Ted
Weissling, Blake
Singh, Hanumant
Estimating early-winter Antarctic sea ice thickness from deformed ice morphology
author_facet Mei, M. Jeffrey
Maksym, Ted
Weissling, Blake
Singh, Hanumant
author_sort Mei, M. Jeffrey
title Estimating early-winter Antarctic sea ice thickness from deformed ice morphology
title_short Estimating early-winter Antarctic sea ice thickness from deformed ice morphology
title_full Estimating early-winter Antarctic sea ice thickness from deformed ice morphology
title_fullStr Estimating early-winter Antarctic sea ice thickness from deformed ice morphology
title_full_unstemmed Estimating early-winter Antarctic sea ice thickness from deformed ice morphology
title_sort estimating early-winter antarctic sea ice thickness from deformed ice morphology
publishDate 2019
url https://doi.org/10.5194/tc-13-2915-2019
https://tc.copernicus.org/articles/13/2915/2019/
geographic Antarctic
The Antarctic
geographic_facet Antarctic
The Antarctic
genre Antarc*
Antarctic
Sea ice
genre_facet Antarc*
Antarctic
Sea ice
op_source eISSN: 1994-0424
op_relation doi:10.5194/tc-13-2915-2019
https://tc.copernicus.org/articles/13/2915/2019/
op_doi https://doi.org/10.5194/tc-13-2915-2019
container_title The Cryosphere
container_volume 13
container_issue 11
container_start_page 2915
op_container_end_page 2934
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