Advancing Seasonal Prediction of Tropical Cyclone Activity with a Hybrid AI-Physics Climate Model
Gan Zhang, Megha Rao, Janni Yuval, Ming Zhao

TL;DR
This paper demonstrates that a hybrid AI-physics climate model, NeuralGCM, can produce realistic seasonal predictions of tropical cyclone activity and atmospheric variability with high efficiency, showing promise for climate risk assessment.
Contribution
The study introduces NeuralGCM, a novel hybrid ML-physics model capable of realistic seasonal climate and tropical cyclone predictions with significantly reduced computation time.
Findings
NeuralGCM generates 100 simulation days in ~8 minutes on a GPU.
Predicted and observed TC frequencies in key basins are significantly correlated (r~0.7).
Model captures interannual variations and basin-wide cyclone energy with significant correlations.
Abstract
Machine learning (ML) models are successful with weather forecasting and have shown progress in climate simulations, yet leveraging them for useful climate predictions needs exploration. Here we show this feasibility using Neural General Circulation Model (NeuralGCM), a hybrid ML-physics atmospheric model developed by Google, for seasonal predictions of large-scale atmospheric variability and Northern Hemisphere tropical cyclone (TC) activity. Inspired by physical model studies, we simplify boundary conditions, assuming sea surface temperature (SST) and sea ice follow their climatological cycle but persist anomalies present at the initialization time. With such forcings, NeuralGCM can generate 100 simulation days in ~8 minutes with a single Graphics Processing Unit (GPU), while simulating realistic atmospheric circulation and TC climatology patterns. This configuration yields useful…
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Taxonomy
TopicsTropical and Extratropical Cyclones Research
