Atmospheric and Oceanic Physics · Physics
Fast, Scale-Adaptive, and Uncertainty-Aware Downscaling of Earth System Model Fields with Generative Machine Learning
Philipp Hess, Michael Aich, Baoxiang Pan, Niklas Boers
2025-02-27
Machine Learning · Computer Science
Generating realistic global precipitation fields from modelled atmospheric circulation
Michael Aich, Sebastian Bathiany, Philipp Hess, Yu Huang +1
2026-05-27
Atmospheric and Oceanic Physics · Physics
Physically Constrained Generative Adversarial Networks for Improving Precipitation Fields from Earth System Models
Philipp Hess, Markus Drüke, Stefan Petri, Felix M. Strnad +1
2025-01-03
Atmospheric and Oceanic Physics · Physics
Deep learning for bias-correcting CMIP6-class Earth system models
Philipp Hess, Stefan Lange, Christof Schötz, Niklas Boers
2023-09-29
Atmospheric and Oceanic Physics · Physics
Understanding Extreme Precipitation Changes through Unsupervised Machine Learning
Griffin Mooers, Tom Beucler, Mike Pritchard, Stephan Mandt
2023-12-04
Atmospheric and Oceanic Physics · Physics
Self Supervised Vision for Climate Downscaling
Karandeep Singh, Chaeyoon Jeong, Naufal Shidqi, Sungwon Park +3
2024-01-19
Machine Learning · Statistics
Earth System Modeling 2.0: A Blueprint for Models That Learn From Observations and Targeted High-Resolution Simulations
Tapio Schneider, Shiwei Lan, Andrew Stuart, João Teixeira
2018-02-14
Computer Vision and Pattern Recognition · Computer Science
RainShift: A Benchmark for Precipitation Downscaling Across Geographies
Paula Harder, Luca Schmidt, Francis Pelletier, Nicole Ludwig +4
2025-07-08
Atmospheric and Oceanic Physics · Physics
Dynamical-generative downscaling of climate model ensembles
Ignacio Lopez-Gomez, Zhong Yi Wan, Leonardo Zepeda-Núñez, Tapio Schneider +2
2024-10-03
Applications · Statistics
Physics-guided probabilistic modeling of extreme precipitation under climate change
Evan Kodra, Singdhansu Chatterjee, Stone Chen, Auroop R. Ganguly
2017-07-20
Atmospheric and Oceanic Physics · Physics
Machine-learned climate model corrections from a global storm-resolving model
Anna Kwa, Spencer K. Clark, Brian Henn, Noah D. Brenowitz +5
2022-11-23
Atmospheric and Oceanic Physics · Physics
Transferring climate change physical knowledge
Francesco Immorlano, Veronika Eyring, Thomas le Monnier de Gouville, Gabriele Accarino +4
2025-08-22
Applications · Statistics
Generative Unsupervised Downscaling of Climate Models via Domain Alignment: Application to Wind Fields
Julie Keisler, Boutheina Oueslati, Anastase Charantonis, Yannig Goude +1
2026-04-07
Atmospheric and Oceanic Physics · Physics
Deep generative model super-resolves spatially correlated multiregional climate data
Norihiro Oyama, Noriko N. Ishizaki, Satoshi Koide, Hiroaki Yoshida
2023-04-18
Atmospheric and Oceanic Physics · Physics
Diffusion-Based Joint Temperature and Precipitation Emulation of Earth System Models
Katie Christensen, Lyric Otto, Seth Bassetti, Claudia Tebaldi +1
2024-04-16
Machine Learning · Computer Science
On Global Applicability and Location Transferability of Generative Deep Learning Models for Precipitation Downscaling
Paula Harder, Christian Lessig, Matthew Chantry, Francis Pelletier +1
2025-12-02
Atmospheric and Oceanic Physics · Physics
Comparing Storm Resolving Models and Climates via Unsupervised Machine Learning
Griffin Mooers, Mike Pritchard, Tom Beucler, Prakhar Srivastava +4
2023-12-05
Machine Learning · Computer Science
Downscaling Precipitation with Bias-informed Conditional Diffusion Model
Ran Lyu, Linhan Wang, Yanshen Sun, Hedanqiu Bai +1
2024-12-20
Atmospheric and Oceanic Physics · Physics
A Generative Deep Learning Approach to Stochastic Downscaling of Precipitation Forecasts
Lucy Harris, Andrew T. T. McRae, Matthew Chantry, Peter D. Dueben +1
2022-11-09
Atmospheric and Oceanic Physics · Physics
Generative machine learning methods for multivariate ensemble post-processing
Jieyu Chen, Tim Janke, Florian Steinke, Sebastian Lerch
2024-02-02