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首页> 外文期刊>Journal of Hydrology >A downward structural sensitivity analysis of hydrological models to improve low-flow simulation
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A downward structural sensitivity analysis of hydrological models to improve low-flow simulation

机译:水文模型的向下结构敏感性分析,以改善低流量模拟

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摘要

Better simulation and earlier prediction of river low flows are needed for improved water management. Here, a top-down structural analysis to improve a hydrological model in a low-flow simulation perspective is presented. Starting from a simple but efficient rainfall-runoff model (GR5J), we analyse the sensitivity of low-flow simulations to progressive modifications of the model's structure. These modifications correspond to the introduction of more complex routing schemes and/or the addition of simple representations of groundwater-surface water exchanges. In these tests, we wished to improve low-flow simulation while avoiding performance losses in high-flow conditions, i.e. keeping a general model.In a typical downward modelling perspective, over 60 versions of the model were tested on a large set of French catchments corresponding to various low-flow conditions, and performance was evaluated using criteria emphasising errors in low-flow conditions. The results indicate that several best performing structures yielded quite similar levels of efficiency. The addition of a new flow component to the routing part of the model yielded the most significant improvement. In spite of the close performance of several model structures, we conclude by proposing a modified model version of GR5J with a single additional parameter.
机译:为了改善水管理,需要更好的模拟和对河流低流量的早期预测。在这里,提出了一种从低流量模拟的角度对水文模型进行改进的自上而下的结构分析。从简单但有效的降雨径流模型(GR5J)开始,我们分析了低流量模拟对模型结构进行逐步修改的敏感性。这些修改对应于引入更复杂的路由方案和/或增加了地下水-地表水交换的简单表示。在这些测试中,我们希望改进低流量模拟,同时避免在高流量条件下降低性能,即保持通用模型。在典型的向下建模角度,在大型法国集水区测试了60多个版本的模型对应于各种低流量条件,并使用强调低流量条件下的误差的标准来评估性能。结果表明,几种性能最佳的结构产生了非常相似的效率水平。在模型的路由部分中添加新的流组件产生了最显着的改进。尽管几个模型结构具有相似的性能,但我们还是通过提出带有单个附加参数的GR5J的改进模型版本来得出结论。

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