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An intercomparison of a large ensemble of statistical downscaling methods over Europe: Results from the VALUE perfect predictor cross-validation experiment
Título : An intercomparison of a large ensemble of statistical downscaling methods over Europe: Results from the VALUE perfect predictor cross-validation experiment
Autor : Gutiérrez Llorente, José ManuelMaraun, DouglasWidmann, MartinHuth, RadanHertig, ElkeBenestad, RasmusRössler, OleWibig, JoannaWilcke, Renate Anna IrmaKotlarski, SvenSan-Martín, DanielHerrera García, SixtoBedia, JoaquínCasanueva, AnaManzanas, RodrigoIturbide, MaialenVrac, MathieuDubrovsky, MartinRibalaygua Batalla, JaimePórtoles, JavierRäty, O.Räisänen, Jouni AnteroHingray, BenoîtRaynaud, DominiqueCasado Calle, María JesúsRamos Calzado, PetraZerenner, TanjaTurco, MarcoBosshard, ThomasStepanek, PetrBartholy, JuditPongracz, RitaKeller, Daphne E.Fischer, Andreas M.Cardoso, Rita M.Soares, Pedro M. M.Czernecki, BartoszPagé, Christian
Palabras clave : Downscaling; Bias adjustment; Perfect prognosis; Weather gen33 erators; Model output statistics; CORDEX; Reproducibility
Fecha de publicación : 2019
Editor: Wiley; Royal Meteorological Society
Citación : International Journal of Climatology. 2019, 39(9), p. 3750-3785
Versión del editor: https://doi.org/10.1002/joc.5462
Resumen : VALUE is an open European collaboration to intercompare downscaling approaches for climate change research, focusing on different validation aspects (marginal, temporal, extremes, spatial, process-based, etc.). Here we describe the participating methods and first results from the first experiment, using “perfect” reanalysis (and reanalysis-driven regional climate model (RCM)) predictors to assess the intrinsic performance of the methods for downscaling precipitation and temperatures over a set of 86 stations representative of the main climatic regions in Europe. This study constitutes the largest and most comprehensive to date intercomparison of statistical downscaling methods, covering the three common downscaling approaches (perfect prognosis, model output statistics—including bias correction—and weather generators) with a total of over 50 downscaling methods representative of the most common techniques.
Patrocinador: J.M.G. and S.H. acknowledge partial funding from MULTI-SDM project (MINECO/FEDER, CGL2015-66583-R). B.H. and D.R. acknowledge COMPLEX project (FP7-ENV-2012, No: 308601). M.T. was supported by HOPE project (MINECO, CGL2014-52571-R).
URI : http://hdl.handle.net/20.500.11765/13771
ISSN : 0899-8418
1097-0088
Colecciones: Artículos científicos 2019-2022


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