Uncertainty quantification of wind gust predictions in the northeast United States: An evidential neural network and explainable artificial intelligence approach

Jahan, I., Schreck, J. S., Gagne, D. J., Becker, C., Astitha, M.. (2025). Uncertainty quantification of wind gust predictions in the northeast United States: An evidential neural network and explainable artificial intelligence approach. Environmental Modelling & Software, doi:https://doi.org/10.1016/j.envsoft.2025.106595

Title Uncertainty quantification of wind gust predictions in the northeast United States: An evidential neural network and explainable artificial intelligence approach
Genre Article
Author(s) I. Jahan, John S. Schreck, David John Gagne, Charles Becker, Marina Astitha
Abstract Machine learning algorithms have shown promise in reducing bias in wind gust predictions, while still underpredicting high gusts. Uncertainty quantification (UQ) supports this issue by identifying when predictions are reliable or need cautious interpretation. Using data from 61 extratropical storms in the Northeastern USA, we introduce evidential neural network (ENN) as a novel approach for UQ in gust predictions, leveraging atmospheric variables from the Weather Research and Forecasting (WRF) model. Explainable AI techniques suggested that key predictive features contributed to higher uncertainty, which correlated strongly with storm intensity and spatial gust gradients. Compared to WRF, ENN demonstrated a 47 % reduction in RMSE and allowed the construction of gust prediction intervals without an ensemble, successfully capturing at least 95 % of observed gusts at 179 out of 266 stations. From an operational perspective, providing gust forecasts with quantified uncertainty enhances stakeholders’ confidence in risk assessment and response planning for extreme gust events.
Publication Title Environmental Modelling & Software
Publication Date Sep 1, 2025
Publisher's Version of Record https://doi.org/10.1016/j.envsoft.2025.106595
OpenSky Citable URL https://n2t.net/ark:/85065/d76114r7
OpenSky Listing View on OpenSky
CISL Affiliations MILES

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