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首页> 外文期刊>Hydrology and Earth System Sciences >The effect of input data resolution and complexity on the uncertainty of hydrological predictions in a humid vegetated watershed
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The effect of input data resolution and complexity on the uncertainty of hydrological predictions in a humid vegetated watershed

机译:输入数据的分辨率和复杂性对湿润植被流域水文预报不确定性的影响

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Uncertainty in hydrological modeling is of significant concern due to its effects on prediction and subsequent application in watershed management. Similar to other distributed hydrological models, model uncertainty is an issue in applying the Soil and Water Assessment Tool?(SWAT). Previous research has shown how SWAT predictions are affected by uncertainty in parameter estimation and input data resolution. Nevertheless, little information is available on how parameter uncertainty and output uncertainty are affected by input data of varying complexity. In this study, SWAT-Hillslope?(SWAT-HS), a modified version of SWAT capable of predicting saturation-excess runoff, was applied to assess the effects of input data with varying degrees of complexity on parameter uncertainty and output uncertainty. Four digital elevation model?(DEM) resolutions (1, 3, 10?and 30?m) were tested for their ability to predict streamflow and saturated areas. In a second analysis, three soil maps and three land use maps were used to build nine SWAT-HS setups from simple to complex (fewer to more soil types/land use classes), which were then compared to study the effect of input data complexity on model prediction/output uncertainty. The case study was the Town Brook watershed in the upper reaches of the West Branch Delaware River in the Catskill region, New York, USA. Results show that DEM resolution did not impact parameter uncertainty or affect the simulation of streamflow at the watershed outlet but significantly affected the spatial pattern of saturated areas, with 10m being the most appropriate grid size to use for our application. The comparison of nine model setups revealed that input data complexity did not affect parameter uncertainty. Model setups using intermediate soil/land use specifications were slightly better than the ones using simple information, while the most complex setup did not show any improvement from the intermediate ones. We conclude that improving input resolution and complexity may not necessarily improve model performance or reduce parameter and output uncertainty, but using multiple temporal and spatial observations can aid in finding the appropriate parameter sets and in reducing prediction/output uncertainty.
机译:由于水文建模的不确定性会影响流域管理的预测和后续应用,因此其不确定性备受关注。与其他分布式水文模型类似,模型不确定性是应用“土壤和水评估工具”(SWAT)的一个问题。先前的研究表明,参数估计和输入数据分辨率的不确定性如何影响SWAT预测。然而,关于可变性输入数据如何影响参数不确定性和输出不确定性的信息很少。在这项研究中,SWAT-Hillslope?(SWAT-HS)是SWAT的一种改进版本,能够预测饱和度过剩的径流,用于评估输入数据的复杂程度对参数不确定性和输出不确定性的影响。测试了四个数字高程模型(DEM)分辨率(1、3、10和30μm)的预测流量和饱和面积的能力。在第二次分析中,使用了三个土壤图和三个土地使用图来构建从简单到复杂(更少到更多的土壤类型/土地使用类别)的九种SWAT-HS设置,然后将其进行比较以研究输入数据复杂性的影响关于模型预测/输出不确定性。案例研究是美国纽约卡茨基尔地区西河特拉华河上游的布鲁克镇分水岭。结果表明,DEM分辨率不会影响参数不确定性或影响分水岭出口处的水流模拟,但会显着影响饱和区域的空间格局,其中10m是最适合我们应用的网格尺寸。九种模型设置的比较表明,输入数据的复杂性不会影响参数不确定性。使用中间土壤/土地使用规格的模型设置要比使用简单信息的模型设置稍好,而最复杂的设置并未显示出相对于中间设置的任何改进。我们得出的结论是,提高输入分辨率和复杂性可能不一定改善模型性能或减少参数和输出不确定性,但是使用多个时间和空间观测值可以帮助找到合适的参数集并减少预测/输出不确定性。

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