Zajac Zuzanna, Revilla-Romero Beatriz, Salamon Peter, Burek Peter, Hirpa Feyera A, Beck Hylke
European Commission, Joint Research Centre, Directorate E - Space, Security and Migration, Via E. Fermi 2749, I-21027 Ispra (VA), Italy.
JBA Consulting, Skipton, Broughton Hall, Skipton BD23 3AE, UK.
J Hydrol (Amst). 2017 May;548:552-568. doi: 10.1016/j.jhydrol.2017.03.022.
Lakes and reservoirs affect the timing and magnitude of streamflow, and are therefore essential hydrological model components, especially in the context of global flood forecasting. However, the parameterization of lake and reservoir routines on a global scale is subject to considerable uncertainty due to lack of information on lake hydrographic characteristics and reservoir operating rules. In this study we estimated the effect of lakes and reservoirs on global daily streamflow simulations of a spatially-distributed LISFLOOD hydrological model. We applied state-of-the-art global sensitivity and uncertainty analyses for selected catchments to examine the effect of uncertain lake and reservoir parameterization on model performance. Streamflow observations from 390 catchments around the globe and multiple performance measures were used to assess model performance. Results indicate a considerable geographical variability in the lake and reservoir effects on the streamflow simulation. Nash-Sutcliffe Efficiency (NSE) and Kling-Gupta Efficiency (KGE) metrics improved for 65% and 38% of catchments respectively, with median skill score values of 0.16 and 0.2 while scores deteriorated for 28% and 52% of the catchments, with median values -0.09 and -0.16, respectively. The effect of reservoirs on extreme high flows was substantial and widespread in the global domain, while the effect of lakes was spatially limited to a few catchments. As indicated by global sensitivity analysis, parameter uncertainty substantially affected uncertainty of model performance. Reservoir parameters often contributed to this uncertainty, although the effect varied widely among catchments. The effect of reservoir parameters on model performance diminished with distance downstream of reservoirs in favor of other parameters, notably groundwater-related parameters and channel Manning's roughness coefficient. This study underscores the importance of accounting for lakes and, especially, reservoirs and using appropriate parameterization in large-scale hydrological simulations.
湖泊和水库会影响河川径流的时间和规模,因此是水文模型的重要组成部分,尤其是在全球洪水预报的背景下。然而,由于缺乏湖泊水文特征和水库运行规则的信息,全球范围内湖泊和水库例程的参数化存在很大的不确定性。在本研究中,我们估计了湖泊和水库对空间分布式LISFLOOD水文模型的全球日径流模拟的影响。我们对选定流域应用了最新的全局敏感性和不确定性分析,以检验不确定的湖泊和水库参数化对模型性能的影响。利用全球390个流域的径流观测数据和多种性能指标来评估模型性能。结果表明,湖泊和水库对径流模拟的影响在地理上存在很大差异。Nash-Sutcliffe效率(NSE)和Kling-Gupta效率(KGE)指标分别在65%和38%的流域得到改善,中位数技能得分分别为0.16和0.2,而在28%和52%的流域得分恶化,中位数分别为-0.09和-0.16。水库对极端高流量的影响在全球范围内显著且广泛,而湖泊的影响在空间上仅限于少数流域。全局敏感性分析表明,参数不确定性对模型性能的不确定性有很大影响。水库参数往往导致这种不确定性,尽管不同流域的影响差异很大。水库参数对模型性能的影响随着水库下游距离的增加而减小,有利于其他参数,特别是与地下水相关的参数和河道曼宁糙率系数。本研究强调了在大型水文模拟中考虑湖泊,特别是水库并使用适当参数化的重要性。