A Weather Foundation Model for the Power Grid
Bodnar, Cristian, Rousseau-Rizzi, Raphaël, Shankar, Nikhil, Merleau, James, Flampouris, Stylianos, Candille, Guillem, Antic, Slavica, Miralles, François, Gupta, Jayesh K.
–arXiv.org Artificial Intelligence
Weather foundation models (WFMs) have recently set new benchmarks in global forecast skill, yet their concrete value for the weather-sensitive infrastructure that powers modern society remains largely unexplored. In this study, we fine-tune Silurian AI's 1.5B-parameter WFM, Generative Forecasting Transformer (GFT), on a rich archive of Hydro-Québec asset observations--including transmission-line weather stations, wind-farm met-mast streams, and icing sensors--to deliver hyper-local, asset-level forecasts for five grid-critical variables: surface temperature, precipitation, hub-height wind speed, wind-turbine icing risk, and rime-ice accretion on overhead conductors. Across 6-72 h lead times, the tailored model surpasses state-of-the-art NWP benchmarks, trimming temperature mean absolute error (MAE) by 15%, total-precipitation MAE by 35%, and lowering wind speed MAE by 15%. Most importantly, it attains an average precision score of 0.72 for day-ahead rime-ice detection, a capability absent from existing operational systems, which affords several hours of actionable warning for potentially catastrophic outage events. These results show that WFMs, when post-trained with small amounts of high-fidelity, can serve as a practical foundation for next-generation grid-resilience intelligence.
arXiv.org Artificial Intelligence
Oct-1-2025
- Country:
- Europe
- Slovenia > Drava
- Municipality of Benedikt > Benedikt (0.04)
- Switzerland > Geneva
- Geneva (0.04)
- Slovenia > Drava
- North America
- Canada > Quebec (0.27)
- United States > Oklahoma (0.04)
- Europe
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- Research Report > New Finding (0.68)
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- Power Industry (1.00)
- Renewable > Wind (1.00)
- Energy
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