Volume 39, Issue 9 p. 3868-3893
VALUE SPECIAL ISSUE ARTICLE

Process‐based evaluation of the VALUE perfect predictor experiment of statistical downscaling methods

P. M. M. Soares

Corresponding Author

Instituto Dom Luiz (IDL), Faculdade de Ciências, Universidade de Lisboa, 1749‐016 Lisboa, Portugal

Correspondence

P. M. M. Soares, Faculdade de Ciências da Universidade de Lisboa, Campo Grande, Ed. C8 (3.26), 1749‐016 Lisbon, Portugal.

Email: pmsoares@fc.ul.pt

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D. Maraun

Wegener Center for Climate and Global Change, University of Graz, Graz, Austria

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S. Brands

MeteoGalicia‐Consellería de Medio Ambiente e Ordenación do Territorio, Xunta de Galicia, Santiago de Compostela, Spain

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M. W. Jury

Wegener Center for Climate and Global Change, University of Graz, Graz, Austria

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J. M. Gutiérrez

Meteorology Group, Instituto de Física de Cantabria, CSIC‐University of Cantabria, Cantabria, Spain

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D. San‐Martín

Predictia Intelligent Data Solutions, Santander, Spain

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E. Hertig

Institute of Geography, University of Augsburg, Augsburg, Germany

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R. Huth

Department of Physical Geography and Geoecology, Faculty of Science, Charles University, Prague, Czechia

Institute of Atmospheric Physics, Czech Academy of Sciences, Prague, Czechia

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A. Belušić Vozila

Andrija Mohorovičić Geophysical Institute, Department of Geophysics, Faculty of Science, University of Zagreb, Zagreb, Croatia

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Rita M. Cardoso

Instituto Dom Luiz (IDL), Faculdade de Ciências, Universidade de Lisboa, 1749‐016 Lisboa, Portugal

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S. Kotlarski

Federal Office of Meteorology and Climatology MeteoSwiss, Zurich, Switzerland

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P. Drobinski

LMD/IPSL, CNRS and Ecole Polytechnique, Université Paris‐Saclay, Palaiseau, France

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A. Obermann‐Hellhund

Institut für Atmosphäre und Umwelt, Goethe Universität Frankfurt, Frankfurt am Main, Germany

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First published: 27 October 2018
Citations: 6

Abstract

Statistical downscaling methods (SDMs) are techniques used to downscale and/or bias‐correct climate model results to regional or local scales. The European network VALUE developed a framework to evaluate and inter‐compare SDMs. One of VALUE's experiments is the perfect predictor experiment that uses reanalysis predictors to isolate downscaling skill. Most evaluation papers for SDMs employ simple statistical diagnostics and do not follow a process‐based rationale. Thus, in this paper, a process‐based evaluation has been conducted for the more than 40 participating model output statistics (MOS, mostly bias correction) and perfect prognosis (PP) methods, for temperature and precipitation at 86 weather stations across Europe.

The SDMs are analysed following the so‐called “regime‐oriented” technique, focussing on relevant features of the atmospheric circulation at large to local scales. These features comprise the North Atlantic Oscillation, blocking and selected Lamb weather types and at local scales the bora wind and the western Iberian coastal‐low level jet.

The representation of the local weather response to the selected features depends strongly on the method class. As expected, MOS is unable to generate process sensitivity when it is not simulated by the predictors (ERA‐Interim). Moreover, MOS often suffers from an inflation effect when a predictor is used for more than one station. The PP performance is very diverse and depends strongly on the implementation. Although conditioned on predictors that typically describe the large‐scale circulation, PP often fails in capturing the process sensitivity correctly. Stochastic generalized linear models supported by well‐chosen predictors show improved skill to represent the sensitivities.