Precipitation Nowcasting Using Diffusion Transformer with Causal Attention
Short-term precipitation forecasting remains challenging due to the difficulty in capturing long-term spatiotemporal dependencies. Current deep learning methods fall short in establishing effective dependencies between conditions and forecast results, while also lacking interpretability. To address...
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Zusammenfassung: | Short-term precipitation forecasting remains challenging due to the
difficulty in capturing long-term spatiotemporal dependencies. Current deep
learning methods fall short in establishing effective dependencies between
conditions and forecast results, while also lacking interpretability. To
address this issue, we propose a Precipitation Nowcasting Using Diffusion
Transformer with Causal Attention model. Our model leverages Transformer and
combines causal attention mechanisms to establish spatiotemporal queries
between conditional information (causes) and forecast results (results). This
design enables the model to effectively capture long-term dependencies,
allowing forecast results to maintain strong causal relationships with input
conditions over a wide range of time and space. We explore four variants of
spatiotemporal information interactions for DTCA, demonstrating that global
spatiotemporal labeling interactions yield the best performance. In addition,
we introduce a Channel-To-Batch shift operation to further enhance the model's
ability to represent complex rainfall dynamics. We conducted experiments on two
datasets. Compared to state-of-the-art U-Net-based methods, our approach
improved the CSI (Critical Success Index) for predicting heavy precipitation by
approximately 15% and 8% respectively, achieving state-of-the-art performance. |
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DOI: | 10.48550/arxiv.2410.13314 |