FusionCast: Enhancing Precipitation Nowcasting with Asymmetric Cross-Modal Fusion and Future Radar Priors
arXiv cs.LG / 3/17/2026
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Key Points
- FusionCast introduces an asymmetric cross-modal fusion framework for precipitation nowcasting that uses three data sources: historical PWV from GNSS inversions, historical radar QPE, and forecasted radar QPE as a future prior.
- The model comprises two core components: a future prior radar QPE processing module that forecasts future radar data and a Radar PWV Fusion (RPF) module that employs a gate mechanism to fuse features from multiple modalities.
- The approach addresses limitations of simple channel fusion by differentiating feature representations across modalities to improve nowcasting accuracy.
- Experimental results indicate that FusionCast significantly improves nowcasting performance on benchmark tasks, highlighting its potential for meteorological forecasting applications.
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