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Assessment of Parametric Sensitivity Analysis Methods Based on A Quasi Two-Dimensional Groundwater Model

机译:基于准二维地下水模型的参数敏感性分析方法评估

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Parametric sensitivity analysis (SA) aims to select the sensitive parameters that most significantly affect the model output variables, which helps to improve model optimization efficiency by adjusting a small number of sensitive parameters instead of all adjustable parameters. The qualitative and quantitative SA methods have been commonly used to quantify the sensitive parameters of the models. However, the response surface model based quantitative SA method was rarely used. Taking the simulation of a quasi two-dimensional (quasi-2D) groundwater model as an example, this study systematically assess eight SA methods divided into three categories (qualitative SA, quantitative SA, and the response surface model-based quantitative SA). The study validates the effectiveness of these methods by comparing the parameter sensitivity results, and also demonstrates the efficiency of these methods by determining the minimum sample size required. Using the minimum samples means the least number of model runs. The results show that P1 and P2 are the most sensitive parameters of the quasi-2D model for simulating groundwater table elevation. Except for local method, four global qualitative SA methods obtain reasonable parameter sensitivity rankings using 200 samples, but the parameter sensitivity scores fail. For obtaining accurate sensitivity scores, at least 2000 samples are required by the quantitative SA methods. However, for the response surface model-based quantitative SA method, 60 samples are sufficient to obtain accurate sensitivity scores, demonstrating that the method is an effective and highly efficient, and should be recommended as the primary parametric SA method, especially for the complex models with large computational demand.
机译:参数敏感度分析(SA)旨在选择对模型输出变量影响最大的敏感参数,通过调整少量敏感参数而不是所有可调参数来帮助提高模型优化效率。定性和定量SA方法通常用于量化模型的敏感参数。然而,基于响应面模型的定量SA方法很少使用。本文以准二维地下水模型模拟为例,系统评估了8种SA方法,分为定性SA、定量SA和基于响应面模型的定量SA三大类。该研究通过比较参数灵敏度结果验证了这些方法的有效性,并通过确定所需的最小样本量来证明这些方法的有效性。使用最小样本意味着最少的模型运行次数。结果表明:P1和P2是拟二维模型模拟地下水位高程最敏感的参数;除局部方法外,4种全局定性SA方法使用200个样本获得了合理的参数敏感度排名,但参数敏感度得分失败。为了获得准确的灵敏度分数,定量 SA 方法至少需要 2000 个样品。然而,对于基于响应面模型的定量SA方法,60个样本足以获得准确的灵敏度分数,表明该方法是一种有效且高效的方法,应推荐作为主要的参数SA方法,特别是对于计算需求较大的复杂模型。

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