Cross-Resolution Attention Network for High-Resolution PM2.5 Prediction
arXiv cs.CV / 3/13/2026
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Key Points
- CRAN-PM is introduced as a dual-branch Vision Transformer that fuses global 25 km meteorological data with local 1 km PM2.5 for continental-scale, high-resolution air quality prediction.
- It uses elevation-aware self-attention and wind-guided cross-attention to encourage physically consistent feature representations, while being memory-efficient and fully trainable.
- The model can generate a complete 29-million-pixel European PM2.5 map in 1.8 seconds on a single GPU and achieves RMSE reductions of 4.7% at T+1 and 10.7% at T+3, with a 36% reduction in bias in complex terrain.
- Evaluated on daily PM2.5 forecasting across Europe in 2022 (2,971 EEA stations), demonstrating strong performance and potential for scaling cross-resolution forecasting in environmental monitoring.
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