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Abstract. The impact of climate change on water resources is usually assessed at the local scale. However, regional climate models (RCMs) are known to exhibit systematic biases in precipitation. Hence, RCM simulations need to be post-processed in order to produce reliable estimates of local scale climate. Popular post-processing approaches are based on statistical transformations, which attempt to adjust the distribution of modelled data such that it closely resembles the observed climatology. However, the diversity of suggested methods renders the selection of optimal techniques difficult and therefore there is a need for clarification. In this paper, statistical transformations for post-processing RCM output are reviewed and classified into (1) distribution derived transformations, (2) parametric transformations and (3) nonparametric transformations, each differing with respect to their underlying assumptions. A real world application, using observations of 82 precipitation stations in Norway, showed that nonparametric transformations have the highest skill in systematically reducing biases in RCM precipitation.
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Lukas Gudmundsson
ETH Zurich
John Bjørnar Bremnes
Norwegian Meteorological Institute
Jan Erik Haugen
Norwegian Meteorological Institute
SHILAP Revista de lepidopterología
Hydrology and earth system sciences
ETH Zurich
Norwegian Meteorological Institute
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Gudmundsson et al. (Fri,) studied this question.
synapsesocial.com/papers/698cca3ad9f6b8e362333989 — DOI: https://doi.org/10.5194/hess-16-3383-2012