Abstract
Accurately quantifying air-sea fluxes is important for understanding air-sea interactions and improving coupled weather and climate models. This study introduces a probabilistic framework to represent the highly variable nature of air-sea fluxes, which is missing in deterministic bulk algorithms. Assuming Gaussian distributions conditioned on the input variables, we use artificial neural networks and eddy-covariance measurement data to estimate the mean and variance by minimizing negative log-likelihood loss. The trained neural networks provide alternative mean flux estimates to existing bulk algorithms, and quantify the uncertainty around the mean estimates. A stochastic parameterization of air-sea turbulent fluxes can be constructed by sampling from the predicted distributions. Tests in a single-column forced upper-ocean model suggest that changes in flux algorithms influence sea surface temperature and mixed layer depth seasonally. The ensemble spread in stochastic runs is most pronounced during spring restratification.
| Original language | English |
|---|---|
| Article number | e2025GL120472 |
| Journal | Geophysical Research Letters |
| Volume | 53 |
| Issue number | 6 |
| DOIs | |
| State | Published - Mar 28 2026 |
| Externally published | Yes |
Keywords
- air-sea turbulent fluxes
- bulk algorithm
- machine learning
- single-column model
- stochastic parameterization
- uncertainty quantification
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