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    Reassessing statistical downscaling techniques for their robust application under climate change conditions

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    Identificadores
    URI: http://hdl.handle.net/10902/17405
    DOI: 10.1175/JCLI-D-11-00687.1
    ISSN: 0894-8755
    ISSN: 1520-0442
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    Autoría
    Gutiérrez Llorente, José Manuel; San Martín Segura, Daniel; Brands, Swen FranzAutoridad Unican; García Manzanas, RodrigoAutoridad Unican; Herrera García, SixtoAutoridad Unican
    Fecha
    2013-01-15
    Derechos
    © 2013 American Meteorological Society. AMS´s Full Copyright Notice: https://www.ametsoc.org/ams/index.cfm/publications/authors/journal-and-bams-authors/author-resources/copyright-information/copyright-policy/
    Publicado en
    Journal of Climate, 2013, 26(1), 171-188
    Editorial
    American Meteorological Society
    Enlace a la publicación
    https://doi.org/10.1175/JCLI-D-11-00687.1
    Resumen/Abstract
    The performance of statistical downscaling (SD) techniques is critically reassessed with respect to their robust applicability in climate change studies. To this end, in addition to standard accuracy measures and distributional similarity scores, the authors estimate the robustness of the methods under warming climate conditions working with anomalous warm historical periods. This validation framework is applied to intercompare the performances of 12 different SD methods (from the analog, weather typing, and regression families) for downscaling minimum and maximum temperatures in Spain. First, a calibration of these methods is performed in terms of both geographical domains and predictor sets; the results are highly dependent on the latter, with optimum predictor sets including near-surface temperature data (in particular 2-m temperature), which appropriately discriminate cold episodes related to temperature inversion in the lower troposphere. Although regression methods perform best in terms of correlation, analog and weather generator approaches are more appropriate for reproducing the observed distributions, especially in case of wintertime minimum temperature. However, the latter two families significantly underestimate the temperature anomalies of the warm periods considered in this work. This underestimation is found to be critical when considering the warming signal in the late twenty-first century as given by a global climate model [the ECHAM5-Max Planck Institute (MPI) model]. In this case, the different downscaling methods provide warming values with differences in the range of 1°C, in agreement with the robustness significance values. Therefore, the proposed test is a promising technique for detecting lack of robustness in statistical downscaling methods applied in climate change studies.
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    UNIVERSIDAD DE CANTABRIA

    Repositorio realizado por la Biblioteca Universitaria utilizando DSpace software
    Contacto | Sugerencias
    Metadatos sujetos a:licencia de Creative Commons Reconocimiento 4.0 España