4.7 Article

Probabilistic downscaling approaches: Application to wind cumulative distribution functions

Journal

GEOPHYSICAL RESEARCH LETTERS
Volume 36, Issue -, Pages -

Publisher

AMER GEOPHYSICAL UNION
DOI: 10.1029/2009GL038401

Keywords

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Funding

  1. French Agency for the Environment and Energy Management (ADEME) [06 05 C 0050]
  2. ANR-Assimilex and GIS-REGYNA projects
  3. Eric Periano

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A statistical method is developed to generate local cumulative distribution functions (CDFs) of surface climate variables from large-scale fields. Contrary to most downscaling methods producing continuous time series, our probabilistic downscaling methods'' (PDMs), named CDF-transform'', is designed to deal with and provide local-scale CDFs through a transformation applied to large-scale CDFs. First, our PDM is compared to a reference method (Quantile-matching), and validated on a historical time period by downscaling CDFs of wind intensity anomalies over France, for reanalyses and simulations from a general circulation model (GCM). Then, CDF-transform is applied to GCM output fields to project changes in wind intensity anomalies for the 21st century under A2 scenario. Results show a decrease in wind anomalies for most weather stations, ranging from less than 1% (in the South) to nearly 9% (in the North), with a maximum in the Brittany region. Citation: Michelangeli, P.-A., M. Vrac, and H. Loukos (2009), Probabilistic downscaling approaches: Application to wind cumulative distribution functions, Geophys. Res. Lett., 36, L11708, doi:10.1029/2009GL038401.

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