Scale‐aware space‐time stochastic parameterization of subgrid‐scale velocity enhancement of sea surface fluxes
Stochastic representation of the influence of the subgrid‐scales on the resolved scales in weather and climate models has been shown to improve ensemble spread and resolved variability. We propose a statistical scale‐aware space‐time model to characterize the contribution of mesoscale wind variabili...
Main Authors: | Bessac, J, Christensen, HM, Endo, K, Monahan, AH, Weitzel, N |
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Format: | Journal article |
Language: | English |
Published: |
Wiley
2021
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