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首页> 外文期刊>Journal of Hydrology: Regional Studies >Inter-comparison of lumped hydrological models in data-scarce watersheds using different precipitation forcing data sets: Case study of Northern Ontario, Canada
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Inter-comparison of lumped hydrological models in data-scarce watersheds using different precipitation forcing data sets: Case study of Northern Ontario, Canada

机译:不同降水强制数据集数据稀缺流域群体水文模型的互相比较:加拿大安大略省的案例研究

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摘要

Study regionBig East River and Black River watersheds in Northern Ontario, Canada as snow-dominated, data-poor case studies.Study focusIn this study, seven lumped conceptual models were thoroughly compared in order to determine the best performing model for reproducing different components of the hydrograph, including low and high flows in data-poor catchments. All models were calibrated using five various objective functions for reducing the effects of calibration process on models’ performance. Additionally, the effects of precipitation, an important factor, particularly in data-scarce regions, were assessed by comparing two precipitation input scenarios: (1) low-density ground-based gauge data, and (2) the Canadian Precipitation Analysis (CaPA) data. The final goal of this study was to compare the effects of using either the Degree-Day or SNOW17 snowmelt estimation methods on the accuracy of streamflow simulation.New hydrological insightsThe results indicate that, in general, MACHBV is the best performing model at simulating daily streamflow in a data-poor watershed, and both SACSMA and GR4J can provide competitive results. Additionally, MACHBV and GR4J are superior to the other conceptual models regarding high flow simulation. Moreover, it was found that incorporating the more complex SNOW17 snowmelt estimation method did not always enhance the performance of the hydrologic models. Finally, the results also confirmed the reliability of the CaPA data as an alternative forcing precipitation in the case of low data availability.
机译:在加拿大安大略省北部的东河和黑河流域的研究区是雪撬,数据不足的案例研究。Study Focusin本研究,彻底地进行了七大概念模型,以确定再现不同部件的最佳表演模型水文,包括数据不足的集水区中的低流量。所有型号都使用五种各种客观功能进行校准,以降低校准过程对模型性能的影响。另外,通过比较两个降水输入场景来评估降水,一个重要因素,特别是数据稀缺区域,特别是数据稀缺区域:(1)低密度地面基数数据,(2)加拿大降水分析(CAPA)数据。本研究的最终目标是比较使用程度日或Snow17雪媒估计方法对流流模拟的准确性的影响。新的水文Insightshe结果表明,通常,MachBV是在模拟日常流流时最佳性能的模型在数据较差的流域中,Sacsma和GR4J都可以提供竞争力。此外,MachBV和GR4J优于关于高流量模拟的其他概念模型。此外,发现结合更复杂的Snow17雪花估计方法并不总是提高水文模型的性能。最后,结果还确认了CAPA数据的可靠性作为低数据可用性的替代强制降水。

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