MR-GNF: Multi-Resolution Graph Neural Forecasting on Ellipsoidal Meshes for Efficient Regional Weather Prediction
arXiv cs.LG / 3/17/2026
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Key Points
- Introduces MR-GNF, a lightweight, physics-aware multi-resolution graph neural forecasting model that operates directly on an ellipsoidal, multi-scale Earth's graph for regional weather prediction.
- The model uses an axial graph-attention network with vertical self-attention across pressure levels and horizontal graph attention across surface nodes to capture implicit 3-D structure with only 1.6 million parameters.
- Trained on 40 years of ERA5 reanalysis, MR-GNF delivers stable +6 h to +24 h forecasts for near-surface temperature, wind, and precipitation over the UK–Ireland region, at low computational cost (under 80 GPU-hours on a single RTX 6000 Ada).
- Results show graph-based neural operators can achieve trustworthy, high-resolution weather prediction with substantially lower cost than traditional NWP, enabling AI-driven early warning and renewable-energy forecasting systems.