Deep generative model super-resolves spatially correlated multiregional climate data

09/26/2022
by   Norihiro Oyama, et al.
0

Super-resolving the coarse outputs of global climate simulations, termed downscaling, is crucial in making political and social decisions on systems requiring long-term climate change projections. Existing fast super-resolution techniques, however, have yet to preserve the spatially correlated nature of climatological data, which is particularly important when we address systems with spatial expanse, such as the development of transportation infrastructure. Herein, we show an adversarial network-based machine learning enables us to correctly reconstruct the inter-regional spatial correlations in downscaling with high magnification up to fifty, while maintaining the pixel-wise statistical consistency. Direct comparison with the measured meteorological data of temperature and precipitation distributions reveals that integrating climatologically important physical information is essential for the accurate downscaling, which prompts us to call our approach πSRGAN (Physics Informed Super-Resolution Generative Adversarial Network). The present method has a potential application to the inter-regionally consistent assessment of the climate change impact.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset