RainScaleGAN: a Conditional Generative Adversarial Network for Rainfall Downscaling
Journal:
arXiv
Published Date:
Mar 17, 2025
Abstract
To this day, accurately simulating local-scale precipitation and reliably
reproducing its distribution remains a challenging task. The limited horizontal
resolution of Global Climate Models is among the primary factors undermining
their skill in this context. The physical mechanisms driving the onset and
development of precipitation, especially in extreme events, operate at
spatio-temporal scales smaller than those numerically resolved, thus struggling
to be captured accurately. In order to circumvent this limitation, several
downscaling approaches have been developed over the last decades to address the
discrepancy between the spatial resolution of models output and the resolution
required by local-scale applications. In this paper, we introduce RainScaleGAN,
a conditional deep convolutional Generative Adversarial Network (GAN) for
precipitation downscaling. GANs have been effectively used in image
super-resolution, an approach highly relevant for downscaling tasks.
RainScaleGAN's capabilities are tested in a perfect-model setup, where the
spatial resolution of a precipitation dataset is artificially degraded from
0.25$^{\circ}\times$0.25$^{\circ}$ to 2$^{\circ}\times$2$^\circ$, and
RainScaleGAN is used to restore it. The developed model outperforms one of the
leading precipitation downscaling method found in the literature. RainScaleGAN
not only generates a synthetic dataset featuring plausible high-resolution
spatial patterns and intensities, but also produces a precipitation
distribution with statistics closely mirroring those of the ground-truth
dataset. Given that RainScaleGAN's approach is agnostic with respect to the
underlying physics, the method has the potential to be applied to other
physical variables such as surface winds or temperature.