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Fast, scale-adaptive and uncertainty-aware downscaling of Earth system model fields with generative machine learning

Urheber*innen
/persons/resource/philipp.hess

Hess,  Philipp
Potsdam Institute for Climate Impact Research;

/persons/resource/michael.eich

Aich,  Michael
Potsdam Institute for Climate Impact Research;

Pan,  Baoxiang
External Organizations;

/persons/resource/Niklas.Boers

Boers,  Niklas
Potsdam Institute for Climate Impact Research;

Externe Ressourcen
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Hess_2025_s42256-025-00980-5.pdf
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Zitation

Hess, P., Aich, M., Pan, B., Boers, N. (2025 online): Fast, scale-adaptive and uncertainty-aware downscaling of Earth system model fields with generative machine learning. - Nature Machine Intelligence.
https://doi.org/10.1038/s42256-025-00980-5


Zitierlink: https://publications.pik-potsdam.de/pubman/item/item_32011
Zusammenfassung
Accurate and high-resolution Earth system model (ESM) simulations are essential to assess the ecological and socioeconomic impacts of anthropogenic climate change, but are computationally too expensive to be run at sufficiently high spatial resolution. Recent machine learning approaches have shown promising results in downscaling ESM simulations, outperforming state-of-the-art statistical approaches. However, existing methods require computationally costly retraining for each ESM and extrapolate poorly to climates unseen during training. We address these shortcomings by learning a consistency model that efficiently and accurately downscales arbitrary ESM simulations without retraining in a zero-shot manner. Our approach yields probabilistic downscaled fields at a resolution only limited by the observational reference data. We show that the consistency model outperforms state-of-the-art diffusion models at a fraction of the computational cost and maintains high controllability on the downscaling task. Further, our method generalizes to climate states unseen during training without explicitly formulated physical constraints.