4.6 Article

Impacts of uncertainties in European gridded precipitation observations on regional climate analysis

Journal

INTERNATIONAL JOURNAL OF CLIMATOLOGY
Volume 37, Issue 1, Pages 305-327

Publisher

WILEY
DOI: 10.1002/joc.4706

Keywords

observation uncertainties; precipitation; undercatch correction; climate models; high resolution; EURO-CORDEX; extremes

Funding

  1. NHCM-2 project - Austrian Science Fund (FWF) [P24758-N29]
  2. High-End: Extremes project
  3. Austrian Climate Research Program (ACRP) [B368608]
  4. National Science Foundation
  5. Research Partnership to Secure Energy for America (RPSEA)
  6. NSF EaSM Grant [AGS-1048829]
  7. Directorate For Geosciences [1048829] Funding Source: National Science Foundation

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Gridded precipitation data sets are frequently used to evaluate climate models or to remove model output biases. Although precipitation data are error prone due to the high spatio-temporal variability of precipitation and due to considerable measurement errors, relatively few attempts have been made to account for observational uncertainty in model evaluation or in bias correction studies. In this study, we compare three types of European daily data sets featuring two Pan-European data sets and a set that combines eight very high-resolution station-based regional data sets. Furthermore, we investigate seven widely used, larger scale global data sets. Our results demonstrate that the differences between these data sets have the same magnitude as precipitation errors found in regional climate models. Therefore, including observational uncertainties is essential for climate studies, climate model evaluation, and statistical post-processing. Following our results, we suggest the following guidelines for regional precipitation assessments. (1) Include multiple observational data sets from different sources (e.g. station, satellite, reanalysis based) to estimate observational uncertainties. (2) Use data sets with high station densities to minimize the effect of precipitation undersampling (may induce about 60% error in data sparse regions). The information content of a gridded data set is mainly related to its underlying station density and not to its grid spacing. (3) Consider undercatch errors of up to 80% in high latitudes and mountainous regions. (4) Analyses of small-scale features and extremes are especially uncertain in gridded data sets. For higher confidence, use climate-mean and larger scale statistics. In conclusion, neglecting observational uncertainties potentially misguides climate model development and can severely affect the results of climate change impact assessments.

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