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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.

Abstract

Deep learning has significantly improved the accuracy of precipitation nowcasting. However, most existing multimodal models typically use simple channel concatenation or interpolation methods for data fusion, which often overlook the feature differences between different modalities. This paper therefore proposes a novel precipitation nowcasting optimisation framework called FusionCast. This framework incorporates three types of data: historical precipitable water vapour (PWV) data derived from global navigation satellite system (GNSS) inversions, historical radar based quantitative precipitation estimation (QPE), and forecasted radar QPE serving as a future prior. The FusionCast model comprises two core modules: the future prior radar QPE processing Module, which forecasts future radar data; and the Radar PWV Fusion (RPF) module, which uses a gate mechanism to efficiently combine features from various sources. Experimental results show that FusionCast significantly improves nowcasting performance.