How evaluation of global hydrological models can help to improve credibility of river discharge projections under climate change

被引:0
|
作者
Valentina Krysanova
Jamal Zaherpour
Iulii Didovets
Simon N. Gosling
Dieter Gerten
Naota Hanasaki
Hannes Müller Schmied
Yadu Pokhrel
Yusuke Satoh
Qiuhong Tang
Yoshihide Wada
机构
[1] Potsdam Institute for Climate Impact Research,School of Geography
[2] University of Nottingham,Geography Dept.
[3] Humboldt-Universität zu Berlin,Center for Climate Change Adaptation
[4] National Institute for Environmental Studies,Institute of Physical Geography
[5] Goethe-University Frankfurt,Department of Civil and Environmental Engineering
[6] Senckenberg Leibniz Biodiversity and Climate Research Centre (SBiK-F),Key Laboratory of Water Cycle and Related Land Surface Processes, Institute of Geographic Sciences and Natural Resources Research
[7] Michigan State University,undefined
[8] National Institute for Environmental Studies,undefined
[9] International Institute for Applied Systems Analysis (IIASA),undefined
[10] Chinese Academy of Sciences,undefined
来源
Climatic Change | 2020年 / 163卷
关键词
Climate change ; Global hydrological models; River discharge projections; Model evaluation; Model performance; Model weighting; Credibility of projections;
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学科分类号
摘要
Importance of evaluation of global hydrological models (gHMs) before doing climate impact assessment was underlined in several studies. The main objective of this study is to evaluate the performance of six gHMs in simulating observed discharge for a set of 57 large catchments applying common metrics with thresholds for the monthly and seasonal dynamics and summarize them estimating an aggregated index of model performance for each model in each basin. One model showed a good performance, and other five showed a weak or poor performance in most of the basins. In 15 catchments, evaluation results of all models were poor. The model evaluation was supplemented by climate impact assessment for a subset of 12 representative catchments using (1) usual ensemble mean approach and (2) weighted mean approach based on model performance, and the outcomes were compared. The comparison of impacts in terms of mean monthly and mean annual discharges using two approaches has shown that in four basins, differences were negligible or small, and in eight catchments, differences in mean monthly, mean annual discharge or both were moderate to large. The spreads were notably decreased in most cases when the second method was applied. It can be concluded that for improving credibility of projections, the model evaluation and application of the weighted mean approach could be recommended, especially if the mean monthly (seasonal) impacts are of interest, whereas the ensemble mean approach could be applied for projecting the mean annual changes. The calibration of gHMs could improve their performance and, consequently, the credibility of projections.
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页码:1353 / 1377
页数:24
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