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Sampling behavioral model parameters for ensemble-based sensitivity analysis using Gaussian process emulation and active subspaces

机译:使用高斯工艺仿真和活动子空间采样基于基于集合的灵敏度分析的行为模型参数

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Ensemble-based uncertainty quantification and global sensitivity analysis of environmental models requires generating large ensembles of parameter-sets. This can already be difficult when analyzing moderately complex models based on partial differential equations because many parameter combinations cause an implausible model behavior even though the individual parameters are within plausible ranges. In this work, we apply Gaussian Process Emulators (GPE) as surrogate models in a sampling scheme. In an active-training phase of the surrogate model, we target the behavioral boundary of the parameter space before sampling this behavioral part of the parameter space more evenly by passive sampling. Active learning increases the subsequent sampling efficiency, but its additional costs pay off only for a sufficiently large sample size. We exemplify our idea with a catchment-scale subsurface flow model with uncertain material properties, boundary conditions, and geometric descriptors of the geological structure. We then perform a global-sensitivity analysis of the resulting behavioral dataset using the active-subspace method, which requires approximating the local sensitivities of the target quantity with respect to all parameters at all sampled locations in parameter space. The Gaussian Process Emulator implicitly provides an analytical expression for this gradient, thus improving the accuracy of the active-subspace construction. When applying the GPE-based preselection, 70-90% of the samples were confirmed to be behavioral by running the full model, whereas only 0.5% of the samples were behavioral in standard Monte-Carlo sampling without preselection. The GPE method also provided local sensitivities at minimal additional costs.
机译:基于合奏的不确定性量化和环境模型的全局敏感性分析需要生成参数集的大集合。当基于部分微分方程分析适度的复杂模型时,这可能已经困难,因为许多参数组合导致难以置信的模型行为,即使各个参数在合理的范围内。在这项工作中,我们将高斯流程仿真器(GPE)应用于采样方案中的代理模型。在替代模型的主动训练阶段,我们通过被动采样对参数空间的这种行为部分进行采样之前瞄准参数空间的行为边界。主动学习提高了随后的采样效率,但其额外的成本仅为足够大的样本大小进行。我们用具有不确定的材料特性,边界条件和地质结构的几何描述符的集水区级地下流动模型举例说明了我们的想法。然后,我们使用活动 - 子空间方法对所产生的行为数据集进行全局敏感性分析,这需要近似于参数空间中所有采样位置处的所有参数的局部敏感性。高斯工艺仿真器隐含地为该梯度提供了分析表达,从而提高了主动子空间结构的准确性。当应用基于GPE的预选时,通过运行完整模型确认70-90%的样品是行为,而只有0.5%的样品在标准的蒙特卡罗采样中是行为,而无需预选。 GPE方法还以最少的额外成本提供局部敏感性。

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