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Conditional diffusion models for downscaling and biascorrection of Earth system model precipitation

Urheber*innen
/persons/resource/michael.eich

Aich,  Michael
Potsdam Institute for Climate Impact Research;

/persons/resource/philipp.hess

Hess,  Philipp       
Potsdam Institute for Climate Impact Research;

Pan,  Baoxiang
External Organizations;

/persons/resource/sebastian.bathiany

Bathiany,  Sebastian       
Potsdam Institute for Climate Impact Research;

/persons/resource/yu.huang

Huang,  Yu       
Potsdam Institute for Climate Impact Research;

/persons/resource/Niklas.Boers

Boers,  Niklas       
Potsdam Institute for Climate Impact Research;

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Aich_2026_gmd-19-1791-2026.pdf
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Zitation

Aich, M., Hess, P., Pan, B., Bathiany, S., Huang, Y., Boers, N. (2026): Conditional diffusion models for downscaling and biascorrection of Earth system model precipitation. - Geoscientific Model Development, 19, 4, 1791-1808.
https://doi.org/10.5194/gmd-19-1791-2026


Zitierlink: https://publications.pik-potsdam.de/pubman/item/item_34201
Zusammenfassung
Climate change exacerbates extreme weather events like heavy rainfall and flooding. As these events cause severe socioeconomic damage, accurate high-resolution simulation of precipitation is imperative. However, existing Earth System Models (ESMs) struggle to resolve small-scale dynamics and suffer from biases. Traditional statistical bias correction and downscaling methods fall short in improving spatial structure, while recent deep learning methods lack controllability and suffer from unstable training. Here, we propose a machine learning framework for simultaneous bias correction and downscaling. We first map observational and ESM data to a shared embedding space, where both are unbiased towards each other, and then train a conditional diffusion model to reverse the mapping. Only observational data is used for the training, so that the diffusion model can be employed to correct and downscale any ESM field without need for retraining. Our approach ensures statistical fidelity and preserves spatial patterns larger than a chosen spatial correction scale. We demonstrate that our approach outperforms existing statistical and deep learning methods especially regarding extreme events.