Generative Unsupervised Downscaling of Climate Models via Domain Alignment: Application to Wind Fields
Julie Keisler (ARCHES), Boutheina Oueslati (EDF R\&D OSIRIS), Anastase Charantonis (ARCHES), Yannig Goude (EDF R\&D OSIRIS, LMO), Claire Monteleoni (ARCHES)

TL;DR
This paper introduces SerpentFlow, an interpretable generative domain alignment method for multivariate wind downscaling from climate models, improving spatial coherence and robustness over traditional bias correction techniques.
Contribution
It applies a novel generative domain alignment framework to wind downscaling, enhancing spatial and inter-variable consistency in climate impact studies.
Findings
Improved spatial coherence in wind fields.
Enhanced inter-variable consistency.
Greater robustness under future climate scenarios.
Abstract
General Circulation Models (GCMs) are widely used for future climate projections, but their coarse spatial resolution and systematic biases limit their direct use for impact studies. This limitation is particularly critical for wind-related applications, such as wind energy, which require spatially coherent, multivariate, and physically plausible near-surface wind fields. Classical statistical downscaling and bias correction methods partly address this issue. Still, they struggle to preserve spatial structure, inter-variable consistency, and robustness under climate change, especially in high-dimensional settings. Recent advances in generative machine learning offer new opportunities for downscaling and bias correction, eliminating the need for explicitly paired low- and high-resolution datasets. However, many existing approaches remain difficult to interpret and challenging to deploy…
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