Machine learning for daily forecasts of Arctic sea-ice motion: an attribution assessment of model predictive skill

Abstract: Physics-based simulations of Arctic sea ice are highly complex, involving transport between different phases, length scales, and time scales. Resultantly, numerical simulations of sea-ice dynamics have a high computational cost and model uncertainty. We employ data-driven machine learning...

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Main Authors: Hoffman, Lauren, Mazloff, Matthew R, Gille, Sarah T, Giglio, Donata, Bitz, Cecilia M, Heimbach, Patrick, Matsuyoshi, Kayli
Format: Article in Journal/Newspaper
Language:unknown
Published: eScholarship, University of California 2023
Subjects:
Online Access:https://escholarship.org/uc/item/2t59n4jx
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spelling ftcdlib:oai:escholarship.org:ark:/13030/qt2t59n4jx 2023-10-01T03:53:45+02:00 Machine learning for daily forecasts of Arctic sea-ice motion: an attribution assessment of model predictive skill Hoffman, Lauren Mazloff, Matthew R Gille, Sarah T Giglio, Donata Bitz, Cecilia M Heimbach, Patrick Matsuyoshi, Kayli 2023-08-17 application/pdf https://escholarship.org/uc/item/2t59n4jx unknown eScholarship, University of California qt2t59n4jx https://escholarship.org/uc/item/2t59n4jx CC-BY article 2023 ftcdlib 2023-09-04T18:02:51Z Abstract: Physics-based simulations of Arctic sea ice are highly complex, involving transport between different phases, length scales, and time scales. Resultantly, numerical simulations of sea-ice dynamics have a high computational cost and model uncertainty. We employ data-driven machine learning (ML) to make predictions of sea-ice motion. The ML models are built to predict present-day sea-ice velocity given present-day wind velocity and previous-day sea-ice concentration and velocity. Models are trained using reanalysis winds and satellite-derived sea-ice properties. We compare the predictions of three different models: persistence (PS), linear regression (LR), and convolutional neural network (CNN). We quantify the spatio-temporal variability of the correlation between observations and the statistical model predictions. Additionally, we analyze model performance in comparison to variability in properties related to ice motion (wind velocity, ice velocity, ice concentration, distance from coast, bathymetric depth) to understand the processes related to decreases in model performance. Results indicate that a CNN makes skillful predictions of daily sea-ice velocity with a correlation up to 0.81 between predicted and observed sea-ice velocity, while the LR and PS implementations exhibit correlations of 0.78 and 0.69, respectively. The correlation varies spatially and seasonally; lower values occur in shallow coastal regions and during times of minimum sea-ice extent. LR parameter analysis indicates that wind velocity plays the largest role in predicting sea-ice velocity on one-day time scales, particularly in the central Arctic. Regions where wind velocity has the largest LR parameter are regions where the CNN has higher predictive skill than the LR. Article in Journal/Newspaper Arctic Sea ice University of California: eScholarship Arctic
institution Open Polar
collection University of California: eScholarship
op_collection_id ftcdlib
language unknown
description Abstract: Physics-based simulations of Arctic sea ice are highly complex, involving transport between different phases, length scales, and time scales. Resultantly, numerical simulations of sea-ice dynamics have a high computational cost and model uncertainty. We employ data-driven machine learning (ML) to make predictions of sea-ice motion. The ML models are built to predict present-day sea-ice velocity given present-day wind velocity and previous-day sea-ice concentration and velocity. Models are trained using reanalysis winds and satellite-derived sea-ice properties. We compare the predictions of three different models: persistence (PS), linear regression (LR), and convolutional neural network (CNN). We quantify the spatio-temporal variability of the correlation between observations and the statistical model predictions. Additionally, we analyze model performance in comparison to variability in properties related to ice motion (wind velocity, ice velocity, ice concentration, distance from coast, bathymetric depth) to understand the processes related to decreases in model performance. Results indicate that a CNN makes skillful predictions of daily sea-ice velocity with a correlation up to 0.81 between predicted and observed sea-ice velocity, while the LR and PS implementations exhibit correlations of 0.78 and 0.69, respectively. The correlation varies spatially and seasonally; lower values occur in shallow coastal regions and during times of minimum sea-ice extent. LR parameter analysis indicates that wind velocity plays the largest role in predicting sea-ice velocity on one-day time scales, particularly in the central Arctic. Regions where wind velocity has the largest LR parameter are regions where the CNN has higher predictive skill than the LR.
format Article in Journal/Newspaper
author Hoffman, Lauren
Mazloff, Matthew R
Gille, Sarah T
Giglio, Donata
Bitz, Cecilia M
Heimbach, Patrick
Matsuyoshi, Kayli
spellingShingle Hoffman, Lauren
Mazloff, Matthew R
Gille, Sarah T
Giglio, Donata
Bitz, Cecilia M
Heimbach, Patrick
Matsuyoshi, Kayli
Machine learning for daily forecasts of Arctic sea-ice motion: an attribution assessment of model predictive skill
author_facet Hoffman, Lauren
Mazloff, Matthew R
Gille, Sarah T
Giglio, Donata
Bitz, Cecilia M
Heimbach, Patrick
Matsuyoshi, Kayli
author_sort Hoffman, Lauren
title Machine learning for daily forecasts of Arctic sea-ice motion: an attribution assessment of model predictive skill
title_short Machine learning for daily forecasts of Arctic sea-ice motion: an attribution assessment of model predictive skill
title_full Machine learning for daily forecasts of Arctic sea-ice motion: an attribution assessment of model predictive skill
title_fullStr Machine learning for daily forecasts of Arctic sea-ice motion: an attribution assessment of model predictive skill
title_full_unstemmed Machine learning for daily forecasts of Arctic sea-ice motion: an attribution assessment of model predictive skill
title_sort machine learning for daily forecasts of arctic sea-ice motion: an attribution assessment of model predictive skill
publisher eScholarship, University of California
publishDate 2023
url https://escholarship.org/uc/item/2t59n4jx
geographic Arctic
geographic_facet Arctic
genre Arctic
Sea ice
genre_facet Arctic
Sea ice
op_relation qt2t59n4jx
https://escholarship.org/uc/item/2t59n4jx
op_rights CC-BY
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