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Uncertainty analysis of a semi-distributed hydrologic model based on a Gaussian Process emulator

机译:基于高斯过程仿真器的半分布式水文模型的不确定性分析

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Despite various criticisms of GLUE (Generalized Likelihood Uncertainty Estimation), it is still a widely-used uncertainty analysis technique in hydrologic modelling that can give an appreciation of the level and sources of uncertainty. We introduce an augmented GLUE approach based on a Gaussian Process (GP) emulator, involving GP to conduct a Bayesian sensitivity analysis to narrow down the influential factor space, and then performing a standard GLUE uncertainty analysis. This approach is demonstrated for a SWAT (Soil and Water Assessment Tool) application in a watershed in China using a calibration and two validation periods. Results show: 1) the augmented approach led to the screening out of 14-18 unimportant factors, effectively narrowing factor space; 2) compared to the more standard GLUE, it substantially improved the sampling efficiency, and located the optimal factor region at lower computational cost. This approach can be used for other uncertainty analysis techniques in hydrologic and nonhydrologic models. (C) 2017 Elsevier Ltd. All rights reserved.
机译:尽管对GLUE(广义似然不确定性估计)提出了各种批评,但它仍然是水文建模中广泛使用的不确定性分析技术,可以对不确定性的水平和来源进行评估。我们引入基于高斯过程(GP)模拟器的增强GLUE方法,让GP进行贝叶斯敏感性分析以缩小影响因素空间,然后执行标准GLUE不确定性分析。这种方法已在中国流域的SWAT(土壤和水评估工具)应用中得到了验证,并使用了校准和两个验证期。结果表明:1)扩充方法导致筛选出14-18个不重要的因素,有效地缩小了因素空间; 2)与更标准的GLUE相比,它大大提高了采样效率,并以较低的计算成本定位了最佳因子区域。该方法可用于水文和非水文模型中的其他不确定性分析技术。 (C)2017 Elsevier Ltd.保留所有权利。

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