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首页> 外文期刊>Journal of hydrometeorology >Impact of a Statistical Bias Correction on the Projected Hydrological Changes Obtained from Three GCMs and Two Hydrology Models
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Impact of a Statistical Bias Correction on the Projected Hydrological Changes Obtained from Three GCMs and Two Hydrology Models

机译:统计偏差校正对从三个GCM和两个水文模型获得的预计水文变化的影响

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Future climate model scenarios depend crucially on the models' adequate representation of the hydrological cycle. Within the EU integrated project Water and Global Change (WATCH), special care is taken to use state-of-the-art climate model output for impacts assessments with a suite of hydrological models. This coupling is expected to lead to a better assessment of changes in the hydrological cycle. However, given the systematic errors of climate models, their output is often not directly applicable as input for hydrological models. Thus, the methodology of a statistical bias correction has been developed for correcting climate model output to produce long-term time series with a statistical intensity distribution close to that of the observations. As observations, global reanalyzed daily data of precipitation and temperature were used that were obtained in the WATCH project. Daily time series from three GCMs (GCMs) ECHAM5/Max Planck Institute Ocean Model (MPI-OM), Centre National de Recherches Meteorologiques Coupled GCM, version 3 (CNRM-CM3), and the atmospheric component of the L'Institut Pierre-Simon Laplace Coupled Model, version 4 (IPSL CM4) coupled model (called LMDZ-4)-were bias corrected. After the validation of the bias-corrected data, the original and the bias-corrected GCM data were used to force two global hydrology models (GHMs): 1) the hydrological model of the Max Planck Institute for Meteorology (MPI-HM) consisting of the simplified land surface (SL) scheme and the hydrological discharge (HD) model, and 2) the dynamic global vegetation model called LPJmL. The impact of the bias correction on the projected simulated hydrological changes is analyzed, and the simulation results of the two GHMs are compared. Here, the projected changes in 2071-2100 are considered relative to 1961-90. It is shown for both GHMs that the usage of bias-corrected GCM data leads to an improved simulation of river runoff for most catchments. But it is also found that the bias correction has an impact on the climate change signal for specific locations and months, thereby identifying another level of uncertainty in the modeling chain from the GCM to the simulated changes calculated by the GHMs. This uncertainty may be of the same order of magnitude as uncertainty related to the choice of the GCM or GHM. Note that this uncertainty is primarily attached to the GCM and only becomes obvious by applying the statistical bias correction methodology.
机译:未来的气候模式方案主要取决于模型对水文循环的充分表示。在欧盟综合项目“水与全球变化”(WATCH)中,要特别注意使用最新的气候模型输出和一套水文模型进行影响评估。这种耦合有望导致对水文循环变化的更好评估。但是,由于气候模型存在系统误差,它们的输出通常不能直接用作水文模型的输入。因此,已经开发出一种统计偏差校正的方法,用于校正气候模型的输出,以产生具有与观测值接近的统计强度分布的长期时间序列。作为观察,使用了WATCH项目中获得的全球重新分析的每日降水和温度数据。来自三个GCM(GCM)ECHAM5 /马克斯·普朗克研究所海洋模型(MPI-OM),国家气象中心耦合GCM版本3(CNRM-CM3)的每日时间序列以及Pierre-Simon研究所的大气成分对拉普拉斯耦合模型版本4(IPSL CM4)耦合模型(称为LMDZ-4)进行了偏置校正。在对偏差校正后的数据进行验证之后,原始数据和偏差校正后的GCM数据将用于强制两个全球水文模型(GHM):1)由以下组成的马克斯·普朗克气象研究所(MPI-HM)的水文模型简化的地表(SL)方案和水文流量(HD)模型,以及2)动态全球植被模型LPJmL。分析了偏差校正对预计的模拟水文变化的影响,并比较了两个GHM的模拟结果。在此,考虑了2071-2100中相对于1961-90年的预计变化。对于两个GHM都表明,使用偏差校正的GCM数据可以改善大多数流域的河流径流模拟。但是还发现,偏差校正对特定位置和特定月份的气候变化信号有影响,从而在从GCM到GHM计算的模拟变化的建模链中确定了另一层次的不确定性。该不确定性可以与与GCM或GHM的选择有关的不确定性处于相同数量级。请注意,这种不确定性主要与GCM有关,只有通过应用统计偏差校正方法才能变得明显。

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