Validating Deep Learning Weather Forecast Models on Recent High-Impact Extreme Events
Olivier C. Pasche, Jonathan Wider, Zhongwei Zhang, Jakob Zscheischler,, Sebastian Engelke

TL;DR
This study evaluates recent machine learning weather prediction models against traditional systems during extreme events, revealing their strengths and limitations in accuracy, variable representation, and impact assessment.
Contribution
It provides a comprehensive, case-study-based evaluation of ML weather models on extreme events, highlighting their performance and structural differences from traditional models.
Findings
ML models perform comparably to traditional models on some extreme events.
ML models underperform in aggregated accuracy but excel in certain specific forecasts.
Structural differences influence error accumulation and variable representation in models.
Abstract
The forecast accuracy of machine learning (ML) weather prediction models is improving rapidly, leading many to speak of a "second revolution in weather forecasting". With numerous methods being developed and limited physical guarantees offered by ML models, there is a critical need for a comprehensive evaluation of these emerging techniques. While this need has been partly fulfilled by benchmark datasets, they provide little information on rare and impactful extreme events or on compound impact metrics, for which model accuracy might degrade due to misrepresented dependencies between variables. To address these issues, we compare ML weather prediction models (GraphCast, PanguWeather, and FourCastNet) and ECMWF's high-resolution forecast system (HRES) in three case studies: the 2021 Pacific Northwest heatwave, the 2023 South Asian humid heatwave, and the North American winter storm in…
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Taxonomy
TopicsSeismology and Earthquake Studies · Meteorological Phenomena and Simulations
Methods7 Fastest Ways to Call American Airlines Reservations Number (USA Guide)
