A Hybrid Downscaling Approach for Future Temperature and Precipitation Change

Author:

Erlandsen Helene Birkelund1,Parding Kajsa M.1,Benestad Rasmus1,Mezghani Abdelkader1,Pontoppidan Marie2

Affiliation:

1. a Norwegian Meteorological Institute, Oslo, Norway

2. b Bjerknes Centre for Climate Research, NORCE Norwegian Research Centre, Bergen, Norway

Abstract

AbstractWe used empirical–statistical downscaling in a pseudoreality context, in which both large-scale predictors and small-scale predictands were based on climate model results. The large-scale conditions were taken from a global climate model, and the small-scale conditions were taken from dynamical downscaling of the same global model with a convection-permitting regional climate model covering southern Norway. This hybrid downscaling approach, a “perfect model”–type experiment, provided 120 years of data under the CMIP5 high-emission scenario. Ample calibration samples made rigorous testing possible, enabling us to evaluate the effect of empirical–statistical model configurations and predictor choices and to assess the stationarity of the statistical models by investigating their sensitivity to different calibration intervals. The skill of the statistical models was evaluated in terms of their ability to reproduce the interannual correlation and long-term trends in seasonal 2-m temperature T2m, wet-day frequency fw, and wet-day mean precipitation μ. We found that different 30-yr calibration intervals often resulted in differing statistical models, depending on the specific choice of years. The hybrid downscaling approach allowed us to emulate seasonal mean regional climate model output with a high spatial resolution (0.05° latitude and 0.1° longitude grid) for up to 100 GCM runs while circumventing the issue of short calibration time, and it provides a robust set of empirically downscaled GCM runs.

Funder

Research Council of Norway

Publisher

American Meteorological Society

Subject

Atmospheric Science

Reference42 articles.

1. A new look at the statistical model identification;Akaike;IEEE Trans. Autom. Control,1974

2. Projected changes in surface solar radiation in CMIP5 global climate models and in EURO-CORDEX regional climate models for Europe;Bartók;Climate Dyn.,2017

3. Objective calibration of regional climate models;Bellprat;J. Geophys. Res.,2012

4. A comparison between two empirical downscaling strategies;Benestad;Int. J. Climatol.,2001

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