Statistical Downscaling via Optimal Transport and Conditional Diffusion Models
Statistical Downscaling via Optimal Transport and Conditional Diffusion Models
"Statistical Downscaling via Optimal Transport and Conditional Diffusion Models", organizado por CITMAga. Será impartido por Leonardo Zepeda Núñez (Google Research [USA])
Data: xoves, 15 de febreiro
Hora: 17:00 h.
Duración: 45 min
Lugar: En liña (MS Teams)
Abstract:
Statistical downscaling has been one of the main tools to study the effect of climate change at a regional scale under different climate models. In a nutshell, statistical downscaling seeks a map to transform low-resolution data from a (possibly biased) coarse-grained numerical scheme (which is cheap to compute) to high-resolution data that is consistent with a high-fidelity one.
In this talk we will introduce a two-stage probabilistic framework for statistical downscaling between unpaired data. The framework tackles the problem by composing two transformations: a debiasing step that is performed by an optimal transport map, and an upsampling step that is achieved by a probabilistic diffusion model with a posteriori conditional sampling. This approach characterizes a
conditional distribution without the need for paired data, and faithfully recovers relevant physical statistics from biased samples.
We will demonstrate the utility of the proposed approach on one- and two-dimensional fluid flow problems, which are representative of the core difficulties present in numerical simulations of weather and climate. We will show that our method produces statistically correct high-resolution outputs from low-resolution inputs, by upsampling resolutions of 8x and 16x, while correctly matching the statistics of physical quantities, even when the low-frequency content of the inputs and outputs do not match, a crucial but difficult-to-satisfy assumption needed by current state-of-the-art alternatives.