ClimAlign: Unsupervised statistical downscaling of climate variables via normalizing flows

08/11/2020
by   Brian Groenke, et al.
0

Downscaling is a landmark task in climate science and meteorology in which the goal is to use coarse scale, spatio-temporal data to infer values at finer scales. Statistical downscaling aims to approximate this task using statistical patterns gleaned from an existing dataset of downscaled values, often obtained from observations or physical models. In this work, we investigate the application of deep latent variable learning to the task of statistical downscaling. We present ClimAlign, a novel method for unsupervised, generative downscaling using adaptations of recent work in normalizing flows for variational inference. We evaluate the viability of our method using several different metrics on two datasets consisting of daily temperature and precipitation values gridded at low (1 degree latitude/longitude) and high (1/4 and 1/8 degree) resolutions. We show that our method achieves comparable predictive performance to existing supervised statistical downscaling methods while simultaneously allowing for both conditional and unconditional sampling from the joint distribution over high and low resolution spatial fields. We provide publicly accessible implementations of our method, as well as the baselines used for comparison, on GitHub.

READ FULL TEXT

page 1

page 6

research
03/09/2017

DeepSD: Generating High Resolution Climate Change Projections through Single Image Super-Resolution

The impacts of climate change are felt by most critical systems, such as...
research
08/02/2023

Multi-variable Hard Physical Constraints for Climate Model Downscaling

Global Climate Models (GCMs) are the primary tool to simulate climate ev...
research
06/22/2020

Spatio-temporal evolution of global surfacetemperature distributions

Climate is known for being characterised by strong non-linearity and cha...
research
06/22/2020

Spatio-temporal evolution of global surface temperature distributions

Climate is known for being characterised by strong non-linearity and cha...
research
04/24/2023

Reconstructing Turbulent Flows Using Physics-Aware Spatio-Temporal Dynamics and Test-Time Refinement

Simulating turbulence is critical for many societally important applicat...
research
05/18/2018

Modeling trend in temperature volatility using generalized LASSO

In this paper, we present methodology for estimating trends in spatio-te...

Please sign up or login with your details

Forgot password? Click here to reset