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首页> 外文期刊>Journal of Hydrology >Calibration of a semi-distributed hydrologic model for streamflow estimation along a river system
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Calibration of a semi-distributed hydrologic model for streamflow estimation along a river system

机译:半分布式水文模型的校准,用于估算河流系统的流量

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An important goal of spatially distributed hydrologic modeling is to provide estimates of streamflow (and river levels) at any point along the river system. To encourage collaborative research into appropriate levels of model complexity, the value of spatially distributed data, and methods suitable for model development and calibration, the US National Weather Service Hydrology Laboratory (NWSHL) is promoting the distributed modeling intercomparison project (DMIP). In particular, the project is interested in how spatially distributed estimates of precipitation provided by the next generation radar (NEXRAD) network, high resolution digital elevation models (DEM), soil, land-use and vegetation data can be integrated into an improved system for distributed hydrologic modeling that provides more accurate and informative flood forecasts.The goal of this study is to explore four questions: Can a semi-distributed approach improve the streamflow forecasts at the watershed outlet compared to a lumped approach? What is a suitable calibration strategy for a semi-distributed model structure, and how much improvement can be obtained? What is the minimum level of spatial complexity required, above which the improvement in forecast accuracy is marginal? What spatial details must be included to enable flow prediction at any point along the river network?The study compares lumped, semi-lumped and semi-distributed versions of the SAC-SMA (Sacramento Soil Moisture Accounting) model for the Illinois River basin at Watts (OK). A kinematic wave scheme is used to rout the flow along the river channel to the outlet. A Multi-step Automatic Calibration Scheme (MACS) using the Shuffled Complex Evolution (SCE-UA) optimization algorithm is applied for model calibration. The calibration results reveal that moving from a lumped model structure, driven by spatially averaged NEXRAD data over the entire basin, to a semi-distributed model structure, with forcing data averaged over each sub-basin while having identical parameters for all the sub-basins, improves the simulation results. However, varying the parameters between sub-basins does not further improve the simulation results, either at the outlet or at an interior testing point. (C) 2004 Elsevier B.V. All rights reserved.
机译:空间分布水文模型的一个重要目标是提供沿河流系统任何一点的水流量(和河流水位)的估算值。为了鼓励对适当级别的模型复杂性,空间分布数据的价值以及适用于模型开发和校准的方法进行协作研究,美国国家气象局水文实验室(NWSHL)正在推动分布式建模比对项目(DMIP)。特别是,该项目感兴趣的是如何将下一代雷达(NEXRAD)网络,高分辨率数字高程模型(DEM),土壤,土地利用和植被数据提供的降水在空间分布上的估计值整合到改进的系统中,以用于分布式水文模型可以提供更准确,更有用的洪水预报。本研究的目的是探索四个问题:与集总方法相比,半分布式方法可以改善流域出口处的径流预报吗?对于半分布式模型结构,什么是合适的校准策略?可以获得多少改进?所需的最低空间复杂度水平是多少,在该水平之上,预测准确性的提高是微不足道的?为了对沿河网的任何点进行流量预测,必须包括哪些空间细节?该研究比较了位于Watts的伊利诺伊河流域的SAC-SMA(萨克拉曼多土壤水分核算)模型的集总,半集和半分布版本(好)。运动波方案用于沿河道流向出口的水流。使用随机混合复杂演化(SCE-UA)优化算法的多步自动校准方案(MACS)用于模型校准。校准结果表明,从整个盆地的空间平均NEXRAD数据驱动的集总模型结构过渡到半分布式模型结构,迫使每个子盆地的数据平均,同时所有子盆地的参数都相同,改善了仿真结果。但是,在子流域之间更改参数并不能进一步改善仿真结果,无论是在出口还是在内部测试点。 (C)2004 Elsevier B.V.保留所有权利。

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