DuoCast: Duo-Probabilistic Diffusion for Precipitation Nowcasting
About
Accurate short-term precipitation forecasting is critical for weather-sensitive decision-making in agriculture, transportation, and disaster response. Existing deep learning approaches often struggle to balance global structural consistency with local detail preservation, especially under complex meteorological conditions. We propose DuoCast, a dual-diffusion framework that decomposes precipitation forecasting into low- and high-frequency components modeled in orthogonal latent subspaces. We theoretically prove that this frequency decomposition reduces prediction error compared to conventional single branch U-Net diffusion models. In DuoCast, the low-frequency model captures large-scale trends via convolutional encoders conditioned on weather front dynamics, while the high-frequency model refines fine-scale variability using a self-attention-based architecture. Experiments on four benchmark radar datasets show that DuoCast consistently outperforms state-of-the-art baselines, achieving superior accuracy in both spatial detail and temporal evolution.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Precipitation nowcasting | MeteoNet | SSIM0.7981 | 29 | |
| Precipitation nowcasting | SEVIR | CSI (M)33.75 | 20 | |
| Precipitation nowcasting | Shanghai Radar | CSI-M0.4252 | 13 | |
| Precipitation nowcasting | CIKM | CSI-M31.79 | 13 |