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Machine learning-based ensemble of Global climate models and trend analysis for projecting extreme precipitation indices under future climate scenarios

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Type de ressource
Article de revue
Auteurs/contributeurs
  • Kumar, G. Praveen (Auteur)
  • Dwarakish, G.S. (Auteur)
Titre
Machine learning-based ensemble of Global climate models and trend analysis for projecting extreme precipitation indices under future climate scenarios
Résumé
Monitoring changes in climatic extremes is vital, as they influence current and future climate while significantly impacting ecosystems and society. This study examines trends in extreme precipitation indices over an Indian tropical river basin, analyzing and ranking 28 Coupled Model Intercomparison Project Phase 6 (CMIP6) Global Climate Models (GCMs) based on their performance against India Meteorological Department (IMD) data. The top five performing GCMs were selected to construct multi-model ensembles (MMEs) using Machine Learning (ML) algorithms, Random Forest (RF), Support Vector Machine (SVM), Multiple Linear Regression (MLR), and the Arithmetic Mean. Statistical metrics reveal that the application of an RF model for ensembling performs better than other models. The analysis focused on six IMD-convention indices and eight indices recommended by the Expert Team on Climate Change Detection and Indices (ETCCDI). Future projections were examined for three timeframes: near future (2025–2050), mid-future (2051–2075), and far future (2076–2100) for SSP245 and SSP585 scenarios. Statistical trend analysis, the Mann-Kendall test, Sen’s Slope estimator, and Innovative Trend Analysis (ITA), were applied to the MME to assess variability and detect changes in extreme precipitation trends. Compared to SSP245, in the SSP585 scenario, Total Precipitation (PRCPTOT) shows a significant decreasing trend in the near future, mid-future, and far future and Moderate Rain (MR) shows a decreasing trend in the near future and far future of monsoon season. The findings reveal significant future trends in extreme precipitation, impacting Sustainable Development Goals (SDGs) achievement and providing crucial insights for sustainable water resource management and policy planning in the Kali River basin. © The Author(s), under exclusive licence to Springer Nature Switzerland AG 2025.
Publication
Environmental Monitoring and Assessment
Volume
197
Numéro
9
Date
2025
Abrév. de revue
Environ. Monit. Assess.
Langue
English
DOI
10.1007/s10661-025-14469-6
ISSN
0167-6369
Catalogue de bibl.
Scopus
Extra
Publisher: Springer Science and Business Media Deutschland GmbH
Référence
Kumar, G. P., & Dwarakish, G. S. (2025). Machine learning-based ensemble of Global climate models and trend analysis for projecting extreme precipitation indices under future climate scenarios. Environmental Monitoring and Assessment, 197(9). https://doi.org/10.1007/s10661-025-14469-6
Axes du RIISQ
  • 2 - enjeux de gestion et de gouvernance
Enjeux majeurs
  • Inégalités et événements extrêmes
  • Prévision, projection et modélisation
Secteurs et disciplines
  • Nature et Technologie
  • Société et Culture
Types d'événements extrêmes
  • Évènements liés au froid (neige, glace)
Lien vers cette notice
https://bibliographies.uqam.ca/riisq/bibliographie/XR255IWQ

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