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Improving the flood prediction capability of the Xinanjiang model in ungauged nested catchments by coupling it with the geomorphologic instantaneous unit hydrograph

机译:通过将其与地貌瞬时单位水位图相结合,提高新安江模型在无浮巢地区的洪水预报能力

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Improving the predictive capabilities of rainfall-runoff models in ungauged catchments is a challenging task but has important theoretical and practical significance. In this study, we investigated the predictive capabilities of the conceptual Xinanjiang model (XAJ), which is widely used for flood forecasting and simulation in China, in ungauged catchments. We further produced a hybrid rainfall-runoff model (named XAJ-GIUH) by coupling the XAJ model with the geomorphologic instantaneous unit hydrograph (GIUH) to achieve improved flood predictions in ungauged catchments. The flood prediction capabilities of the original XAJ model and the XAJ-GIUH model were investigated and compared at an hourly time scale in a mountainous catchment with six nested catchments located in the south of Anhui province, China. The two models were first calibrated for each individual catchment by comparing with the observed streamflows. Then, the nested catchments were treated as ungauged and modeled using the parameter values regionalized by transposition from the downstream catchments. The results show that the performance of both models is comparable and satisfactory on different catchment scales in the case that model parameters are calibrated in each catchment. However, the models perform differently in the case that model parameters are transposed from the downstream catchments. The XAJ-GIUH model produced markedly improved estimates of peak discharge and peak time as compared to the original XAJ model in the latter case, indicating that the runoff routing is a major uncertainty source for the application of the XAJ model in this case. Coupling XAJ with topography-based GIUH has the potential to substantially improve the flood prediction capability of the XAJ model in ungauged catchments. Our analysis further reveals that the models do not necessarily perform better when the parameter values are transposed from closer donor catchment. Instead, adopting the parameter values from the catchment with more similar topographic characteristics is more likely to produce better model performance. This study implicates the necessity of including remotely sensed geomorphologic characteristics of ungauged catchments to improve flood predictions in these regions.
机译:提高非流域集水区降雨径流模型的预测能力是一项艰巨的任务,但具有重要的理论和实践意义。在这项研究中,我们调查了概念性的新安江模型(XAJ)的预测能力,该模型在中国未开垦的流域被广泛用于中国的洪水预报和模拟。通过将XAJ模型与地貌瞬时单位水位图(GIUH)耦合,我们进一步产生了混合降雨-径流模型(XAJ-GIUH),以改善未开垦集水区的洪水预报。最初的XAJ模型和XAJ-GIUH模型的洪水预报能力在每小时的时间尺度上进行了调查,并在中国安徽省南部具有六个嵌套流域的山区流域进行了比较。首先,通过与观察到的水流进行比较,对每个流域的两个模型进行校准。然后,将嵌套的集水区视为未集水区,并使用通过从下游集水区进行换位分区的参数值进行建模。结果表明,在每个流域校准了模型参数的情况下,两种模型在不同的流域尺度下的性能均相当且令人满意。但是,在从下游集水区调换模型参数的情况下,模型的执行方式会有所不同。与后一种情况下的原始XAJ模型相比,XAJ-GIUH模型对峰值流量和峰值时间的估计明显改善,这表明径流路径是这种情况下XAJ模型应用的主要不确定性来源。将XAJ与基于地形的GIUH耦合,可以显着提高XAJ模型在未满流域的洪水预报能力。我们的分析进一步揭示,当参数值从较近的捐助者流域转置而来时,模型不一定会表现更好。相反,从具有相似地形特征的流域采用参数值更有可能产生更好的模型性能。这项研究暗示有必要包括非流域集水区的遥感地貌特征,以改善这些地区的洪水预报。

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