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Uncertainty in high and low flows due to model structure and parameter errors

机译:由于模型结构和参数误差导致的高低流量不确定性

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摘要

This paper aims to investigate the uncertainty in simulated extreme low and high flows originating from hydrological model structure and parameters. To this end, three different rainfall-runoff models, namely GR4J, HBV and Xinanjiang, are applied to two subbasins of Qiantang River basin, eastern China. The Generalised Likelihood Uncertainty Estimation approach is used for estimating the uncertainty of the three models due to parameter values, henceforth referred as parameter uncertainty. Uncertainty in simulated extreme flows is evaluated by means of the annual maximum discharge and mean annual 7-day minimum discharge. The results show that although the models have good performance for the daily flows, the uncertainty in the extreme flows could not be neglected. The uncertainty originating from parameters is larger than uncertainty due to model structure. The parameter uncertainty of the extreme flows increases with the observed discharge. The parameter uncertainty in both the extreme high flows and the extreme low flows is the largest for the HBV model and the smallest for the Xinanjiang model. It is noted that the extreme low flows are mostly underestimated by all models with optimum parameter sets for both subbasins. The largest underestimation is from Xinanjiang model. Therefore it is not reliable enough to use only one set of the parameters to make the prediction and carrying out the uncertainty study in the extreme discharge simulation could give an overall picture for the planners.
机译:本文旨在研究源自水文模型结构和参数的模拟极端低流量和高流量的不确定性。为此,中国东部钱塘江流域的两个子流域采用了GR4J,HBV和新安江这三种不同的降雨径流模型。广义似然不确定性估计方法用于估计由于参数值而导致的三个模型的不确定性,以下称为参数不确定性。通过年最大排放量和年平均7天最小排放量来评估模拟极端流量的不确定性。结果表明,尽管该模型对于日流量具有良好的性能,但不能忽略极端流量中的不确定性。由于模型结构,源自参数的不确定性大于不确定性。极端流量的参数不确定性随观察到的流量而增加。在HBV模型中,极高流量和极低流量中的参数不确定性最大,而对于新安江模型,参数不确定性最小。值得注意的是,所有模型都对两个子盆地的参数集进行了优化,所有模型都低估了极低流量。最大的低估是来自新安江模型。因此,仅使用一组参数进行预测是不够可靠的,并且在极端放电模拟中进行不确定性研究可能会为规划人员提供一幅全貌。

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  • 作者单位

    Department of Civil Engineering, Institute of Hydrology and Water Resources, Zhejiang University, Hangzhou 310058, Zhejiang, China;

    Department of Water Engineering and Management, Faculty of Engineering Technology, University of Twente, Enschede, The Netherlands;

    Department of Civil Engineering, Institute of Hydrology and Water Resources, Zhejiang University, Hangzhou 310058, Zhejiang, China;

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  • 正文语种 eng
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  • 关键词

    Uncertainty analysis; GLUE; GR4J; HBV; Xinanjiang; Extreme flows;

    机译:不确定性分析;胶;GR4J;乙肝病毒新安江极端流量;

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