Robustness of AI-based weather forecasts in a changing climate
Thomas Rackow, Nikolay Koldunov, Christian Lessig, Irina Sandu, Mihai, Alexe, Matthew Chantry, Mariana Clare, Jesper Dramsch, Florian Pappenberger,, Xabier Pedruzo-Bagazgoitia, Steffen Tietsche, and Thomas Jung

TL;DR
This study demonstrates that current machine learning weather forecasting models maintain skill across different climate states, indicating potential for climate applications, despite some biases and limitations in out-of-distribution scenarios.
Contribution
It shows that state-of-the-art ML models trained on present-day weather data generalize well to past and future climates, highlighting their potential for climate science.
Findings
Models produce skillful forecasts in various climate states.
Some models exhibit biases towards colder or warmer predictions.
Spatial analysis reveals complex warming and cooling patterns.
Abstract
Data-driven machine learning models for weather forecasting have made transformational progress in the last 1-2 years, with state-of-the-art ones now outperforming the best physics-based models for a wide range of skill scores. Given the strong links between weather and climate modelling, this raises the question whether machine learning models could also revolutionize climate science, for example by informing mitigation and adaptation to climate change or to generate larger ensembles for more robust uncertainty estimates. Here, we show that current state-of-the-art machine learning models trained for weather forecasting in present-day climate produce skillful forecasts across different climate states corresponding to pre-industrial, present-day, and future 2.9K warmer climates. This indicates that the dynamics shaping the weather on short timescales may not differ fundamentally in a…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Hydrological Forecasting Using AI
