Hierarchical Testing of a Hybrid Machine Learning-Physics Global Atmosphere Model
Ziming Chen, L. Ruby Leung, Wenyu Zhou, Jian Lu, Sandro W. Lubis, Ye Liu, Chuan-Chieh Chang, Bryce E. Harrop, Ya Wang, Mingshi Yang, Gan Zhang, Yun Qian

TL;DR
This paper evaluates a hybrid ML-physics global atmosphere model's ability to simulate various atmospheric phenomena across scales and under warming scenarios, highlighting its strengths and limitations compared to traditional models.
Contribution
It introduces the NeuralGCM, a hybrid model, and systematically assesses its performance across multiple scales and climate forcings, revealing its capabilities and shortcomings.
Findings
NeuralGCM captures extratropical cyclone evolution similar to ESMs.
Successfully reproduces teleconnection patterns during ENSO events.
Shows biases in cyclone tracks and tropical teleconnection responses.
Abstract
Machine learning (ML)-based models have demonstrated high skill and computational efficiency, often outperforming conventional physics-based models in weather and subseasonal predictions. While prior studies have assessed their fidelity in capturing synoptic-scale atmospheric dynamics, their performance across timescales and under out-of-distribution forcing, such as +3K or +4K uniform-warming forcings, and the sources of biases remain elusive, to establish the model reliability for Earth science. Here, we design three sets of experiments targeting synoptic-scale phenomena, interannual variability, and out-of-distribution uniform-warming forcings. We evaluate the Neural General Circulation Model (NeuralGCM), a hybrid model integrating a dynamical core with ML-based component, against observations and physics-based Earth system models (ESMs). At the synoptic scale, NeuralGCM captures the…
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Taxonomy
TopicsClimate variability and models · Tropical and Extratropical Cyclones Research · Meteorological Phenomena and Simulations
