Abstract

The Weather Research and Forecast (WRF) model with its land surface model NOAH was set up and applied as regional climate model over Europe. It was forced with the latest ERA-interim reanalysis data from 1989 to 2008 and operated with 0.33° and 0.11° resolution. This study focuses on the verification of monthly and seasonal mean precipitation over Germany, where a high quality precipitation dataset of the German Weather Service is available. In particular, the precipitation is studied in the orographic terrain of southwestern Germany and the dry lowlands of northeastern Germany. In both regions precipitation data is very important for end users such as hydrologists and farmers. Both WRF simulations show a systematic positive precipitation bias not apparent in ERA-interim and an overestimation of wet day frequency. The downscaling experiment improved the annual cycle of the precipitation intensity, which is underestimated by ERA-interim. Normalized Taylor diagrams, i.e., those discarding the systematic bias by normalizing the quantities, demonstrate that downscaling with WRF provides a better spatial distribution than the ERA interim precipitation analyses in southwestern Germany and most of the whole of Germany but degrades the results for northeastern Germany. At the applied model resolution of 0.11°, WRF shows typical systematic errors of RCMs in orographic terrain such as the windward–lee effect. A convection permitting case study set up for summer 2007 improved the precipitation simulations with respect to the location of precipitation maxima in the mountainous regions and the spatial correlation of precipitation. This result indicates the high value of regional climate simulations on the convection-permitting scale.

Highlights

  • Climate change will induce modifications of temperature statistics and trends and of the water cycle

  • The downscaling experiment improved the annual cycle of the precipitation intensity, which is underestimated by ERAinterim

  • We evaluated the temporal and spatial distribution of the annual, seasonal and monthly precipitation calculated in a climate simulation from 1990 to 2008

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Summary

Introduction

Climate change will induce modifications of temperature statistics and trends and of the water cycle. This will result in spatial and temporal changes of soil, cloud, and precipitation patterns. Changes in the statistics of synoptic conditions due to climate change are simulated in the GCMs driving the RCMs. The interaction and feedbacks between large-scale and small-scale conditions are simulated in detail on a physical basis in the RCMs. The interaction and feedbacks between large-scale and small-scale conditions are simulated in detail on a physical basis in the RCMs This approach requires the verification and continuous improvements of model physics prior to their application for climate projections

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