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                    Section 1: Publication
                                
                Publication Type
                Journal Article
                                
                Authorship
                Abdelmoaty, Hebatallah M.; Rajulapati, Chandra Rupa; Nerantzaki, Sofia D.; Papalexiou, Simon Michael
                                
                Title
                Bias-corrected high-resolution temperature and precipitation projections for Canada
                                
                Year
                2025
                                
                Publication Outlet
                Nature, Scientific Data , Data Descriptors, Vol. 12, Iss. 1, Article number: 191
                                
                DOI
                
                                
                ISBN
                
                                
                ISSN
                2052-4463
                                
                Citation
                
                    Abdelmoaty, Hebatallah M.; Rajulapati, Chandra Rupa; Nerantzaki, Sofia D.; Papalexiou, Simon Michael (2025) Bias-corrected high-resolution temperature and precipitation projections for Canada, Nature, Scientific Data , Data Descriptors, Vol. 12, Iss. 1, Article number: 191, 
https://doi.org/10.1038/s41597-025-04396-z
                Abstract
                
                    High-resolution precipitation and temperature projections are indispensable for informed decision-making, risk assessment, and planning. Here, we have developed an extensive database (SPQM-CMIP6-CAN) of high-resolution (0.1°) precipitation and temperature projections extending till 2100 at a daily scale for Canada. We employed a novel Semi-Parametric Quantile Mapping (SPQM) methodology to bias-correct the Coupled Model Intercomparison Project, Phase-6 (CMIP6) projections for four Shared Socio-economic Pathways. SPQM is simple, yet robust, in reproducing the observed marginal properties, trends, and variability according to future scenarios, while maintaining a smooth transition from observations to projected simulations. The SPQM-CMIP6-CAN database encompasses 693 simulations derived from 34 diverse climate models for precipitation. Similarly, for temperature projections, our database comprises 581 simulations from 27 climate models. These projections are valuable for hydrological, environmental, and ecological studies, offering a comprehensive resource for analyses within these domains. Furthermore, these projections serve as a vital tool for the quantification of uncertainties arising from climate models, their variant configurations, and future scenarios.
                
                                
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