Litcius/Paper detail

Unpaired Downscaling of Fluid Flows with Diffusion Bridges

Tobias Bischoff, Katherine M. Deck

2024Artificial Intelligence for the Earth Systems11 citationsDOIOpen Access PDF

Abstract

Abstract We present a method to downscale idealized geophysical fluid simulations using generative models based on diffusion maps. By analyzing the Fourier spectra of fields drawn from different data distributions, we show how a diffusion bridge can be used as a transformation between a low resolution and a high resolution dataset, allowing for new sample generation of high-resolution fields given specific low resolution features. The ability to generate new samples allows for the computation of any statistic of interest, without any additional calibration or training. Our unsupervised setup is also designed to downscale fields without access to paired training data; this flexibility allows for the combination of multiple source and target domains without additional training. We demonstrate that the method enhances resolution and corrects context-dependent biases in geophysical fluid simulations, including in extreme events. We anticipate that the same method can be used to downscale the output of climate simulations, including temperature and precipitation fields, without needing to train a new model for each application and providing a significant computational cost savings.

Topics & Concepts

DownscalingDiffusionMechanicsGeologyPhysicsClimate changeThermodynamicsOceanographyFluid Dynamics and Turbulent FlowsLattice Boltzmann Simulation StudiesHeat and Mass Transfer in Porous Media