Dynamical-generative downscaling of climate model ensembles
Ignacio Lopez-Gomez, Zhong Yi Wan, Leonardo Zepeda-N\'u\~nez, Tapio, Schneider, John Anderson, Fei Sha

TL;DR
This paper introduces a novel dynamical-generative downscaling method combining regional climate models with generative AI to efficiently produce high-resolution climate projections with improved uncertainty estimates.
Contribution
It presents a new framework that integrates dynamical downscaling with diffusion-based generative models, enabling large ensemble downscaling with lower computational costs and higher accuracy.
Findings
More accurate uncertainty bounds than traditional methods
Lower errors compared to bias correction and spatial disaggregation
Better spectral and multivariate correlation capture
Abstract
Regional high-resolution climate projections are crucial for many applications, such as agriculture, hydrology, and natural hazard risk assessment. Dynamical downscaling, the state-of-the-art method to produce localized future climate information, involves running a regional climate model (RCM) driven by an Earth System Model (ESM), but it is too computationally expensive to apply to large climate projection ensembles. We propose a novel approach combining dynamical downscaling with generative artificial intelligence to reduce the cost and improve the uncertainty estimates of downscaled climate projections. In our framework, an RCM dynamically downscales ESM output to an intermediate resolution, followed by a generative diffusion model that further refines the resolution to the target scale. This approach leverages the generalizability of physics-based models and the sampling efficiency…
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Taxonomy
TopicsEcosystem dynamics and resilience · Climate variability and models
MethodsDiffusion
