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Machine Learning for Online Sea Ice Bias Correction Within Global Ice‐Ocean Simulations

William K. Gregory, Mitchell Bushuk, Yongfei Zhang, Alistair Adcroft, Laure Zanna

2024Geophysical Research Letters21 citationsDOIOpen Access PDF

Abstract

Abstract In this study, we perform online sea ice bias correction within a Geophysical Fluid Dynamics Laboratory global ice‐ocean model. For this, we use a convolutional neural network (CNN) which was developed in a previous study (Gregory et al., 2023, https://doi.org/10.1029/2023ms003757 ) for the purpose of predicting sea ice concentration (SIC) data assimilation (DA) increments. An initial implementation of the CNN shows systematic improvements in SIC biases relative to the free‐running model, however large summertime errors remain. We show that these residual errors can be significantly improved with a novel sea ice data augmentation approach. This approach applies sequential CNN and DA corrections to a new simulation over the training period, which then provides a new training data set to refine the weights of the initial network. We propose that this machine‐learned correction scheme could be utilized for generating improved initial conditions, and also for real‐time sea ice bias correction within seasonal‐to‐subseasonal sea ice forecasts.

Topics & Concepts

Sea iceData assimilationResidualConvolutional neural networkSea ice concentrationClimatologyArtificial neural networkGeologyComputer scienceData setMeteorologySea ice thicknessArtificial intelligenceArctic ice packAlgorithmPhysicsArctic and Antarctic ice dynamicsClimate variability and modelsMeteorological Phenomena and Simulations
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