Can AI be enabled to dynamical downscaling? A Latent Diffusion Model to mimic km-scale COSMO5.0\_CLM9 simulations
Elena Tomasi, Gabriele Franch, Marco Cristoforetti

TL;DR
This paper demonstrates that a Latent Diffusion Model can effectively downscale coarse Earth system data to high-resolution fields, matching the realism of dynamical models and outperforming traditional deep learning approaches.
Contribution
The study introduces a novel application of Latent Diffusion Models for Earth system downscaling, showing improved performance over existing deep learning methods.
Findings
LDM achieves high-resolution downscaling comparable to dynamical models.
LDM outperforms quadratic interpolation, UNET, and GAN baselines.
The approach preserves realistic fine-scale features and flow characteristics.
Abstract
Downscaling techniques are one of the most prominent applications of Deep Learning (DL) in Earth System Modeling. A robust DL downscaling model can generate high-resolution fields from coarse-scale numerical model simulations, saving the timely and resourceful applications of regional/local models. Additionally, generative DL models have the potential to provide uncertainty information, by generating ensemble-like scenario pools, a task that is computationally prohibitive for traditional numerical simulations. In this study, we apply a Latent Diffusion Model (LDM) to downscale ERA5 data over Italy up to a resolution of 2 km. The high-resolution target data consists of 2-m temperature and 10-m horizontal wind components from a dynamical downscaling performed with COSMO_CLM. Our goal is to demonstrate that recent advancements in generative modeling enable DL to deliver results comparable…
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Taxonomy
TopicsClimate variability and models · Geophysics and Gravity Measurements · Ocean Acidification Effects and Responses
MethodsDiffusion · Latent Diffusion Model
