Loosely Conditioned Emulation of Global Climate Models With Generative Adversarial Networks
Alexis Ayala, Christopher Drazic, Brian Hutchinson, Ben Kravitz,, Claudia Tebaldi

TL;DR
This paper demonstrates that generative adversarial networks can efficiently emulate global climate model outputs for different seasonal scenarios, providing rapid and accurate samples for climate change impact analysis.
Contribution
The authors introduce a novel application of loosely conditioned GANs to emulate daily precipitation patterns from climate models, enabling faster scenario exploration.
Findings
GANs produce samples nearly as accurate as validation data
Generated samples accurately estimate dry spell statistics
GANs significantly reduce computational costs for climate simulations
Abstract
Climate models encapsulate our best understanding of the Earth system, allowing research to be conducted on its future under alternative assumptions of how human-driven climate forces are going to evolve. An important application of climate models is to provide metrics of mean and extreme climate changes, particularly under these alternative future scenarios, as these quantities drive the impacts of climate on society and natural systems. Because of the need to explore a wide range of alternative scenarios and other sources of uncertainties in a computationally efficient manner, climate models can only take us so far, as they require significant computational resources, especially when attempting to characterize extreme events, which are rare and thus demand long and numerous simulations in order to accurately represent their changing statistics. Here we use deep learning in a proof of…
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Taxonomy
TopicsClimate variability and models · Meteorological Phenomena and Simulations · Hydrological Forecasting Using AI
