MeTok: An Efficient Meteorological Tokenization with Hyper-Aligned Group Learning for Precipitation Nowcasting
arXiv cs.AI / 3/17/2026
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Key Points
- The paper introduces MeTok, a distribution-centric meteorological tokenization that groups similar weather features to better reflect interactions in meteorological systems rather than relying on a position-centric approach.
- It proposes the Hyper-Aligned Grouping Transformer (HyAGTransformer) with two innovations: Grouping Attention (GA) for self-aligned learning across precipitation patterns and Neighborhood FFN (N-FFN) to aggregate contextual information from adjacent groups.
- On ERA5 data for 6-hour precipitation nowcasting, the method achieves at least an 8.2% IoU improvement in extreme precipitation predictions and demonstrates scalability with more data and larger models.
- The approach offers robustness across diverse precipitation patterns and potential efficiency gains for weather forecasting, influencing future deployment in meteorological prediction systems.
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