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Enhancing machine learning-based seasonal precipitation forecasting using CMIP6 simulations.

Pinheiro, Enzo et Ouarda, Taha B.M.J. ORCID logoORCID: https://orcid.org/0000-0002-0969-063X (2026). Enhancing machine learning-based seasonal precipitation forecasting using CMIP6 simulations. Atmospheric Research , vol. 329 . p. 108463. DOI: 10.1016/j.atmosres.2025.108463.

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Résumé

The limited availability of observational and reanalysis data presents a significant challenge in training machine learning (ML) models for seasonal climate forecasting. Here, we show that training ML-based seasonal forecasting models with a larger number of individual simulations from CMIP6 models enhances their generalization ability and improves precipitation forecasts over South America. Using TelNet, a sequence-to-sequence machine learning model, we assess the performance of models trained with different numbers of CMIP6 simulations compared to those trained with ERA5 reanalysis and the CMIP6 ensemble mean. The results reveal that models trained with only a few CMIP6 simulations perform worse than those trained with ERA5, primarily due to instability during ML model tuning and reduced generalization ability. However, as the number of CMIP6 models increases, performance improves and surpasses both ERA5- and ensemble-mean-based ML models. Reliability and sharpness diagrams analysis further demonstrate that ML models trained with more CMIP6 simulations yield more confident and calibrated forecasts. Moreover, CMIP6-based TelNet constantly outperformed state-of-the-art dynamical models across different initialization months and lead times. This study underscores the potential of leveraging large multi-model dynamical simulations for robust ML-based seasonal climate forecasting.

Type de document: Article
Mots-clés libres: teleconnections; climate forecasting; climate oscillation; sequence-to-sequence
Centre: Centre Eau Terre Environnement
Date de dépôt: 25 févr. 2026 20:53
Dernière modification: 25 févr. 2026 20:53
URI: https://espace.inrs.ca/id/eprint/16664

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