3DTCR: A Physics-Based Generative Framework for Vortex-Following 3D Reconstruction to Improve Tropical Cyclone Intensity Forecasting
arXiv cs.LG / 3/16/2026
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Key Points
- 3DTCR is a physics-based generative framework that combines physical constraints with generative AI to reconstruct three-dimensional tropical cyclone inner-core structures.
- It employs conditional Flow Matching (CFM), latent domain adaptation, and two-stage transfer learning, trained on six years of 3-km-resolution moving-domain WRF data for region-adaptive vortex-following reconstruction.
- The framework improves representation of TC inner-core structure and intensity while preserving track stability, and it outperforms ECMWF-HRES in intensity prediction for lead times up to five days, with a 36.5% RMSE reduction in maximum WS10M relative to FuXi inputs.
- By delivering high-resolution structure insights at lower computational cost, 3DTCR offers a promising avenue to enhance operational tropical cyclone forecasting.
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