Learning Coupled Earth System Dynamics with GraphDOP
Eulalie Boucher, Mihai Alexe, Peter Lean, Ewan Pinnington, Simon Lang, Patrick Laloyaux, Lorenzo Zampieri, Patricia de Rosnay, Niels Bormann, Anthony McNally

TL;DR
GraphDOP is a graph-based machine learning model that forecasts Earth System weather by learning from raw observations, capturing cross-component interactions without relying on traditional physics-based models.
Contribution
This paper introduces GraphDOP, a novel graph-based ML model that directly learns coupled Earth System dynamics from observations, bypassing traditional explicit coupling in models.
Findings
Successfully forecasted Arctic sea-ice freezing events.
Predicted ocean cooling during Hurricane Ian.
Captured European heat wave dynamics.
Abstract
Interactions between different components of the Earth System (e.g. ocean, atmosphere, land and cryosphere) are a crucial driver of global weather patterns. Modern Numerical Weather Prediction (NWP) systems typically run separate models of the different components, explicitly coupled across their interfaces to additionally model exchanges between the different components. Accurately representing these coupled interactions remains a major scientific and technical challenge of weather forecasting. GraphDOP is a graph-based machine learning model that learns to forecast weather directly from raw satellite and in-situ observations, without reliance on reanalysis products or traditional physics-based NWP models. GraphDOP simultaneously embeds information from diverse observation sources spanning the full Earth system into a shared latent space. This enables predictions that implicitly…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Meteorological Phenomena and Simulations · Climate variability and models
