DOAJ Open Access 2025

From winter storm thermodynamics to wind gust extremes: discovering interpretable equations from data

Frederick Iat-Hin Tam Fabien Augsburger Tom Beucler

Abstrak

Reliably identifying and understanding temporal precursors to extreme wind gusts is crucial for early warning and mitigation. This study proposes a simple data-driven approach to extract key predictors from a dataset of historical extreme European winter windstorms and derive simple equations linking these precursors to extreme gusts over land. A major challenge is the limited training data for extreme events, increasing the risk of model overfitting. Testing various mitigation strategies, we find that combining dimensionality reduction, careful cross-validation, feature selection, and a nonlinear transformation of maximum wind gusts informed by Generalized Extreme Value distributions successfully reduces overfitting. These measures yield interpretable equations that generalize across regions while maintaining satisfactory predictive skill. The discovered equations reveal the association between a steady drying low-troposphere before landfall and wind gust intensity in Northwestern Europe.

Penulis (3)

F

Frederick Iat-Hin Tam

F

Fabien Augsburger

T

Tom Beucler

Format Sitasi

Tam, F.I., Augsburger, F., Beucler, T. (2025). From winter storm thermodynamics to wind gust extremes: discovering interpretable equations from data. https://doi.org/10.1017/eds.2025.10008

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Informasi Jurnal
Tahun Terbit
2025
Sumber Database
DOAJ
DOI
10.1017/eds.2025.10008
Akses
Open Access ✓