Downscaling Extreme Rainfall Using Physical-Statistical Generative Adversarial Learning (2212.01446v1)
Abstract: Modeling the risk of extreme weather events in a changing climate is essential for developing effective adaptation and mitigation strategies. Although the available low-resolution climate models capture different scenarios, accurate risk assessment for mitigation and adaption often demands detail that they typically cannot resolve. Here, we develop a dynamic data-driven downscaling (super-resolution) method that incorporates physics and statistics in a generative framework to learn the fine-scale spatial details of rainfall. Our method transforms coarse-resolution ($0.25{\circ} \times 0.25{\circ}$) climate model outputs into high-resolution ($0.01{\circ} \times 0.01{\circ}$) rainfall fields while efficaciously quantifying uncertainty. Results indicate that the downscaled rainfall fields closely match observed spatial fields and their risk distributions.
- Anamitra Saha (4 papers)
- Sai Ravela (20 papers)