Detection and attribution of trends of meteorological extremes in Central America

 

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Détails bibliographiques
Auteurs: Hidalgo León, Hugo G., Chou Chen, Shu Wei, McKinnon, Karen Aline, Pascale, Salvatore, Quesada Chacón, Dánnell, Alfaro Martínez, Eric J., Bautista Solís, Pável, Pérez Briceño, Paula Marcela, Diaz, Henry F., Maldonado Mora, Tito José, Rivera Fernández, Erick R., Nakaegawa, Tosiyuki
Format: artículo original
Date de publication:2025
Description:We present an analysis to determine whether historical trends in extreme precipitation and temperature indices, as well as in yearly averages of several climate variables. To achieve this, we use three methodologies: a) a climate model-based approach, b) a hybrid method that combines models and observations (1979–2019), and c) a climate observations-based method (1983–2016). For each methodology, we compare the climate change signal, represented by the historical trends, to the noise generated by simulated climate datasets (using models or statistical methods) that do not include human influence. Overall, the model-based method suggests possible detection of the human influence in most temperature extreme indices and in precipitation-related indices in the northern countries. The hybrid method detects human influence in significantly fewer variables, but in many cases, consistently with those of the model-based approach. Both the hybrid and observationbased methods exhibit similar noise variability to the model-based method. Notably, due to limitations in data availability, our analysis excludes the most recent five years, during which substantial warming and an increase of extreme events have been observed globally.
Pays:Kérwá
Institution:Universidad de Costa Rica
Repositorio:Kérwá
Langue:Inglés
OAI Identifier:oai:kerwa.ucr.ac.cr:10669/102040
Accès en ligne:https://hdl.handle.net/10669/102040
https://doi.org/10.1007/s10584-025-03940-5
Mots-clés:extreme events
detection and attribution
anthropogenic climate change
Central America