Deep learning subgrid-scale parametrisations for short-term forecasting of sea-ice dynamics with a Maxwell elasto-brittle rheology
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Published:2023-07-21
Issue:7
Volume:17
Page:2965-2991
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ISSN:1994-0424
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Container-title:The Cryosphere
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language:en
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Short-container-title:The Cryosphere
Author:
Finn Tobias SebastianORCID, Durand CharlotteORCID, Farchi AlbanORCID, Bocquet MarcORCID, Chen YumengORCID, Carrassi AlbertoORCID, Dansereau Véronique
Abstract
Abstract. We introduce a proof of concept to parametrise the unresolved subgrid scale of sea-ice dynamics with deep learning techniques.
Instead of parametrising single processes, a single neural network is trained to correct all model variables at the same time.
This data-driven approach is applied to a regional sea-ice model that accounts exclusively for dynamical processes with a Maxwell elasto-brittle rheology.
Driven by an external wind forcing in a 40 km×200 km domain, the model generates examples of sharp transitions between unfractured and fully fractured sea ice.
To correct such examples, we propose a convolutional U-Net architecture which extracts features at multiple scales.
We test this approach in twin experiments: the neural network learns to correct forecasts from low-resolution simulations towards high-resolution simulations for a lead time of about 10 min.
At this lead time, our approach reduces the forecast errors by more than 75 %, averaged over all model variables.
As the most important predictors, we identify the dynamics of the model variables.
Furthermore, the neural network extracts localised and directional-dependent features, which point towards the shortcomings of the low-resolution simulations.
Applied to correct the forecasts every 10 min, the neural network is run together with the sea-ice model.
This improves the short-term forecasts up to an hour.
These results consequently show that neural networks can correct model errors from the subgrid scale for sea-ice dynamics.
We therefore see this study as an important first step towards hybrid modelling to forecast sea-ice dynamics on an hourly to daily timescale.
Funder
Schmidt Family Foundation Grand Équipement National De Calcul Intensif
Publisher
Copernicus GmbH
Subject
Earth-Surface Processes,Water Science and Technology
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