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DuoCast: Duo-Probabilistic Diffusion for Precipitation Nowcasting

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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.

Penghui Wen, Mengwei He, Patrick Filippi, Na Zhao, Feng Zhang, Thomas Francis Bishop, Zhiyong Wang, Kun Hu• 2024

Related benchmarks

TaskDatasetResultRank
Precipitation nowcastingMeteoNet
SSIM0.7981
29
Precipitation nowcastingSEVIR
CSI (M)33.75
20
Precipitation nowcastingShanghai Radar
CSI-M0.4252
13
Precipitation nowcastingCIKM
CSI-M31.79
13
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