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MOESHA: A Genetic Algorithm for Automatic Calibration and Estimation of Parameter Uncertainty and Sensitivity of Hydrologic Models

机译:MOESHA:一种用于水文模型参数不确定性和灵敏度自动校准和估计的遗传算法

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摘要

Characterization of the uncertainty and sensitivity of model parameters is an essential facet of hydrologic modeling. This article introduces the multi-objective evolutionary sensitivity handling algorithm (MOESHA) that combines input parameter uncertainty and sensitivity analyses with a genetic algorithm calibration routine to dynamically sample the parameter space. This novel algorithm serves as an alternative to traditional static space-sampling methods, such as stratified sampling or Latin hypercube sampling. In addition to calibrating model parameters to a hydrologic model, MOESHA determines the optimal distribution of model parameters that maximizes model robustness and minimizes error, and the results provide an estimate for model uncertainty due to the uncertainty in model parameters. Subsequently, we compare the model parameter distributions to the distribution of a dummy variable (i.e., a variable that does not affect model output) to differentiate between impactful (i.e., sensitive) and non-impactful parameters. In this way, an optimally calibrated model is produced, and estimations of model uncertainty as well as the relative impact of model parameters on model output (i.e., sensitivity) are determined. A case study using a single-cell hydrologic model (EXP-HYDRO) is used to test the method using river discharge data from the Dee River catchment in Wales. We compare the results of MOESHA with Sobol’s global sensitivity analysis method and demonstrate that the algorithm is able to pinpoint non-impactful parameters, demonstrate the uncertainty of model results with respect to uncertainties in model parameters, and achieve excellent calibration results. A major drawback of the algorithm is that it is computationally expensive; therefore, parallelized methods should be used to reduce the computational burden.
机译:模型参数不确定性和敏感性的表征是水文建模的基本方面。本文介绍了多目标进化灵敏度处理算法(MOESHA),该算法将输入参数不确定性和灵敏度分析与遗传算法校准例程相结合,以动态采样参数空间。这种新颖的算法可以替代传统的静态空间采样方法,例如分层采样或拉丁超立方体采样。除了为水文模型校准模型参数外,MOESHA还确定模型参数的最佳分布,从而使模型的鲁棒性最大化并减小误差,并且由于模型参数的不确定性,结果为模型不确定性提供了估计。随后,我们将模型参数分布与虚拟变量(即不影响模型输出的变量)的分布进行比较,以区分有影响(即敏感)和无影响参数。以这种方式,产生了最佳校准的模型,并且确定了模型不确定性的估计以及模型参数对模型输出的相对影响(即,灵敏度)。使用单细胞水文模型(EXP-HYDRO)进行的案例研究用于使用威尔士Dee河流域的河水排放数据测试该方法。我们将MOESHA的结果与Sobol的全局灵敏度分析方法进行了比较,并证明了该算法能够查明非影响参数,证明模型结果相对于模型参数的不确定性,并获得出色的校准结果。该算法的主要缺点是计算量大。因此,应该使用并行化的方法来减少计算负担。

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