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Short-lead seasonal precipitation forecast in northeastern Brazil using an ensemble of artificial neural networks.

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Pinheiro, Enzo et Ouarda, Taha B. M. J. ORCID logoORCID: https://orcid.org/0000-0002-0969-063X (2023). Short-lead seasonal precipitation forecast in northeastern Brazil using an ensemble of artificial neural networks. Scientific Reports , vol. 13 , nº 1. p. 20429. DOI: 10.1038/s41598-023-47841-y.

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Résumé

This study assesses the deterministic and probabilistic forecasting skill of a 1-month-lead ensemble of Artificial Neural Networks (EANN) based on low-frequency climate oscillation indices. The predictand is the February-April (FMA) rainfall in the Brazilian state of Ceará, which is a prominent subject in climate forecasting studies due to its high seasonal predictability. Additionally, the study proposes combining the EANN with dynamical models into a hybrid multi-model ensemble (MME). The forecast verification is carried out through a leave-one-out cross-validation based on 40 years of data. The EANN forecasting skill is compared with traditional statistical models and the dynamical models that compose Ceará’s operational seasonal forecasting system. A spatial comparison showed that the EANN was among the models with the smallest Root Mean Squared Error (RMSE) and Ranked Probability Score (RPS) in most regions. Moreover, the analysis of the area-aggregated reliability showed that the EANN is better calibrated than the individual dynamical models and has better resolution than Multinomial Logistic Regression for above-normal (AN) and below-normal (BN) categories. It is also shown that combining the EANN and dynamical models into a hybrid MME reduces the overconfidence of the extreme categories observed in a dynamically-based MME, improving the reliability of the forecasting system.

Type de document: Article
Mots-clés libres: atmospheric dynamics; ocean sciences
Centre: Centre Eau Terre Environnement
Date de dépôt: 06 févr. 2024 21:11
Dernière modification: 06 févr. 2024 21:11
URI: https://espace.inrs.ca/id/eprint/14184

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