Deep Learning-based Extreme Heatwave Forecast
Val\'erian Jacques-Dumas, Francesco Ragone, Pierre Borgnat, Patrice, Abry, Freddy Bouchet

TL;DR
This paper explores a deep learning approach using CNNs trained on climate model outputs to forecast long-lasting extreme heatwaves up to 15 days in advance, addressing challenges like class imbalance and transfer learning.
Contribution
It introduces a novel deep learning framework for extreme heatwave prediction using climate model data, improving early forecasting capabilities.
Findings
CNN achieves significant prediction accuracy for heatwaves
Forecasts can be made up to 15 days before event onset
Transfer learning enhances model performance
Abstract
Because of the impact of extreme heat waves and heat domes on society and biodiversity, their study is a key challenge. We specifically study long-lasting extreme heat waves, which are among the most important for climate impacts. Physics driven weather forecast systems or climate models can be used to forecast their occurrence or predict their probability. The present work explores the use of deep learning architectures, trained using outputs of a climate model, as an alternative strategy to forecast the occurrence of extreme long-lasting heatwaves. This new approach will be useful for several key scientific goals which include the study of climate model statistics, building a quantitative proxy for resampling rare events in climate models, study the impact of climate change, and should eventually be useful for forecasting. Fulfilling these important goals implies addressing issues…
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