LGAIAO-PHSep 28, 2025

A Weather Foundation Model for the Power Grid

arXiv:2509.25268v11 citationsh-index: 6
Originality Synthesis-oriented
AI Analysis

This addresses the problem of improving grid resilience for power infrastructure operators by enabling actionable warnings for outage events, though it is incremental as it applies an existing method to new data.

The study fine-tuned a weather foundation model on Hydro-Québec asset data to provide hyper-local forecasts for power grid variables, achieving reductions in temperature MAE by 15%, precipitation MAE by 35%, wind speed MAE by 15%, and an average precision of 0.72 for rime-ice detection.

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.

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