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On Global Applicability and Location Transferability of Generative Deep Learning Models for Precipitation Downscaling

Paula Harder
Christian Lessig
Matthew Chantry
Francis Pelletier
David Rolnick
Main:7 Pages
7 Figures
Bibliography:3 Pages
1 Tables
Abstract

Deep learning offers promising capabilities for the statistical downscaling of climate and weather forecasts, with generative approaches showing particular success in capturing fine-scale precipitation patterns. However, most existing models are region-specific, and their ability to generalize to unseen geographic areas remains largely unexplored. In this study, we evaluate the generalization performance of generative downscaling models across diverse regions. Using a global framework, we employ ERA5 reanalysis data as predictors and IMERG precipitation estimates at 0.10.1^\circ resolution as targets. A hierarchical location-based data split enables a systematic assessment of model performance across 15 regions around the world.

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