AI RESEARCH
Calibration of a neural network ocean closure for improved mean state and variability
arXiv CS.LG
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ArXi:2604.06398v1 Announce Type: cross Global ocean models exhibit biases in the mean state and variability, particularly at coarse resolution, where mesoscale eddies are unresolved. To address these biases, parameterization coefficients are typically tuned ad hoc. Here, we formulate parameter tuning as a calibration problem using Ensemble Kalman Inversion (EKI). We optimize parameters of a neural network parameterization of mesoscale eddies in two idealized ocean models at coarse resolution.