Geoscientific Model Development (Nov 2024)

Do data-driven models beat numerical models in forecasting weather extremes? A comparison of IFS HRES, Pangu-Weather, and GraphCast

  • L. Olivetti,
  • L. Olivetti,
  • L. Olivetti,
  • G. Messori,
  • G. Messori,
  • G. Messori

DOI
https://doi.org/10.5194/gmd-17-7915-2024
Journal volume & issue
Vol. 17
pp. 7915 – 7962

Abstract

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The last few years have witnessed the emergence of data-driven weather forecast models capable of competing with – and, in some respects, outperforming – physics-based numerical models. However, recent studies have questioned the capability of data-driven models to provide reliable forecasts of extreme events. Here, we aim to evaluate this claim by comparing the performance of leading data-driven models in a semi-operational setting, focusing on the prediction of near-surface temperature and wind speed extremes globally. We find that data-driven models mostly outperform ECMWF’s physics-based deterministic model in terms of global RMSE for forecasts made 1–10 d ahead and that they can also compete in terms of extreme weather predictions in most regions. However, the performance of data-driven models varies by region, type of extreme event, and forecast lead time. Notably, data-driven models appear to perform best for temperature extremes in regions closer to the tropics and at shorter lead times. We conclude that data-driven models may already be a useful complement to physics-based forecasts in regions where they display superior tail performance but note that some challenges still need to be overcome prior to operational implementation.