The impact of bias correcting regional climate model results on hydrological indicators for Bavarian catchments
Citations Over TimeTop 11% of 2018 papers
Abstract
The Mindel river catchment, gauge Offingen, Bavaria, Germany. The study investigates the potential interference of climate change signals (CCS) in hydrological indicators due to the application of bias correction (BC) of regional climate models (RCM). A validated setup of the hydrological model WaSiM was used for runoff modeling. The CCS, gained by the application of three RCMs (CCLM, REMO-UBA, RACMO2) for a reference period (1971–2000) and a scenario period (2021–2050), are evaluated according to eight hydrological indicators derived from modeled runoff. Three different BC techniques (linear scaling, quantile mapping, local intensity scaling) are applied. New hydrological insights for the region: Runoff indicators are calculated for the investigated catchment using bias corrected RCM data. The quantile mapping approach proves superior to linear scaling and local intensity scaling and is recommended as the bias correction method of choice when assessing climate change impacts on catchment hydrology. Extreme flow indicators (high flows), however, are poorly represented by any bias corrected model results, as current approaches fail to properly capture extreme value statistics. The CCS of mean hydrological indicator values (e.g. mean flow) is well preserved by almost every BC technique. For extreme indicator values (e.g. high flows), the CCS shows distinct differences between the original RCM and BC data.
Related Papers
- → Expectiles and M-quantiles are quantiles(1994)199 cited
- → The Asymptotic Accuracy of the Bootstrap of $U$-Quantiles(1995)10 cited
- → Divergence of sample quantiles(2010)2 cited
- → Multivariate Quantiles: Geometric and Measure-Transportation-Based Contours(2024)1 cited
- QUANTILES: Stata module to categorize by quantiles(2007)