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A Comprehensive Sensitivity Analysis Framework for Model Evaluation and Improvement Using a Case Study of the Rangeland Hydrology and Erosion Model

机译:一个综合评价模型的敏感性分析框架,以草地水文侵蚀模型为例

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摘要

The complexity of numerical models and the large numbers of input factors result in complex interdependencies of sensitivities to input parameter values, and high risk of having problematic or nonsensical model responses in localized regions of the input parameter space. Sensitivity analysis (SA) is a useful tool for ascertaining model responses to input variables. One popular method is local SA, which calculates the localized model response of output to an input parameter. This article describes a comprehensive SA method to explore the parameter behavior globally by calculating localized sensitivity indices over the entire parameter space. This article further describes how to use this framework to identify model deficiencies and improve model function. The method was applied to the Rangeland Hydrology and Erosion Model (RHEM) using soil erosion response as a case study. The results quantified the localized sensitivity, which varied and was interdependently related to the input parameter values. This article also shows that the localized sensitivity indices, combined with techniques such as correlation analysis and scatter plots, can be used effectively to compare the sensitivity of different inputs, locate sensitive regions in the parameter space, decompose the dependency of the model response on the input parameters, and identify nonlinear and incorrect relationships in the model. The method can be used as an element of the iterative modeling process whereby the model response can be surveyed and problems identified and corrected in order to construct a robust model
机译:数值模型的复杂性和大量输入因子导致灵敏度与输入参数值的复杂相互依赖关系,以及在输入参数空间的局部区域中出现有问题或无意义的模型响应的高风险。灵敏度分析(SA)是确定模型对输入变量的响应的有用工具。一种流行的方法是局部SA,它计算输出对输入参数的局部模型响应。本文介绍了一种全面的SA方法,通过计算整个参数空间上的局部灵敏度指标来全局地探索参数行为。本文进一步介绍了如何使用此框架来识别模型缺陷并改善模型功能。以土壤侵蚀响应为例,将该方法应用于牧场水文侵蚀模型(RHEM)。结果量化了局部灵敏度,该灵敏度变化并且与输入参数值相互依赖。本文还表明,结合相关分析和散点图等技术,可以将局部灵敏度指标有效地用于比较不同输入的灵敏度,在参数空间中定位敏感区域,分解模型响应对模型的依赖关系。输入参数,并识别模型中的非线性关系和错误关系。该方法可以用作迭代建模过程的元素,从而可以调查模型响应并识别和纠正问题,以构建健壮的模型

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