Representing the Surface Ocean in ECMWF's data-driven forecasting system AIFS
Sara Hahner, Lorenzo Zampieri, Jean-Raymond Bidlot, Philip Browne, Matthew Chantry, Mariana C. A. Clare, Harrison Cook, Peter Dueben, Rachel Furner, Sarah Keeley, Josh Kousal, Simon Lang, Christian Lessig, Gert Mertes, Kristian Mogensen, Gabriel Moldovan, Charles Pelletier

TL;DR
This paper introduces an extension of ECMWF's AIFS that jointly models the atmosphere and surface ocean using machine learning, improving medium-range weather forecasts and ocean variable predictions.
Contribution
The paper presents a novel joint ML model for atmosphere and surface ocean, capturing cross-component relationships without separate models, enhancing forecast skill.
Findings
Approximately one day improvement in forecast skill for marine variables.
Model is robust to idealised initial conditions outside training data.
Effective representation of surface ocean variables improves medium-range weather forecasts.
Abstract
Machine-learning (ML) models, such as the AIFS at the ECMWF, have revolutionised weather forecasting in recent years. We present an extension of the AIFS that jointly models the atmosphere and surface ocean, including ocean waves and sea ice. The primary objective of this extension is to enhance machine-learning medium-range forecasting and enable new use cases by expanding the weather state to better capture coupled surface processes. Our approach departs from traditional numerical models by not having two separate models for the atmosphere and marine components. The joint model instead learns correlations across the entire atmosphere-ocean interface in a component-agnostic way, and can exploit the expressive capacity of ML architectures to learn cross-component relationships directly from the data. We leverage tailored and targeted datasets and solve model design challenges such as…
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