An intercomparison of generative machine learning methods for downscaling precipitation at fine spatial scales
Bryn Ward-Leikis, Neelesh Rampal, Yun Sing Koh, Peter B. Gibson, Hong-Yang Liu, Vassili Kitsios, Tristan Meyers, Jeff Adie, Yang Juntao, Steven C. Sherwood

TL;DR
This study compares generative adversarial networks and diffusion models for high-resolution precipitation downscaling, finding that cGANs are computationally efficient and effective in predicting climate change impacts on extremes, despite diffusion models producing more realistic spatial patterns.
Contribution
It provides a comprehensive comparison of cGAN and diffusion models for precipitation downscaling, highlighting their strengths and limitations in climate change prediction tasks.
Findings
Both models outperform deterministic baselines.
Diffusion models better capture spatial structure and dry spells.
cGANs better predict distribution and climate change signals.
Abstract
Machine learning (ML) offers a computationally efficient approach for generating large ensembles of high-resolution climate projections, but deterministic ML methods often smooth fine-scale structures and underestimate extremes. While stochastic generative models show promise for predicting fine-scale weather and extremes, few studies have compared their performance under present-day and future climates. This study compares a previously developed conditional Generative Adversarial Network (cGAN) with an intensity constraint against different configurations of diffusion models for downscaling daily precipitation from a regional climate model (RCM) over Aotearoa New Zealand. Model skill is comprehensively assessed across spatial structure, distributional metrics, means, extremes, and their respective climate change signals. Both generative approaches outperform the deterministic baseline…
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Taxonomy
TopicsClimate variability and models · Meteorological Phenomena and Simulations · Hydrological Forecasting Using AI
