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Global sensitivity metrics from active subspaces

机译:活动子空间的全局敏感性指标

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摘要

Predictions from science and engineering models depend on several input parameters. Global sensitivity analysis quantifies the importance of each input parameter, which can lead to insight into the model and reduced computational cost; commonly used sensitivity metrics include Sobol' total sensitivity indices and derivative-based global sensitivity measures. Active subspaces are part of an emerging set of tools for identifying important directions in a model's input parameter space; these directions can be exploited to reduce the model's dimension enabling otherwise infeasible parameter studies. In this paper, we develop global sensitivity metrics called activity scores from the active subspace, which yield insight into the important model parameters. We mathematically relate the activity scores to established sensitivity metrics, and we discuss computational methods to estimate the activity scores. We show two numerical examples with algebraic functions taken from simplified engineering models. For each model, we analyze the active subspace and discuss how to exploit the low-dimensional structure. We then show that input rankings produced by the activity scores are consistent with rankings produced by the standard metrics.
机译:科学和工程模型的预测取决于几个输入参数。全局敏感性分析可量化每个输入参数的重要性,从而可以深入了解模型并降低计算成本;常用的灵敏度指标包括Sobol的总灵敏度指标和基于导数的全局灵敏度指标。活动子空间是用于识别模型输入参数空间中重要方向的一组新兴工具的一部分。可以利用这些方向来减小模型的尺寸,从而进行其他不可行的参数研究。在本文中,我们从活动子空间中开发了称为活动评分的全局敏感性度量,可以了解重要的模型参数。我们在数学上将活动分数与已建立的敏感性指标相关联,并且我们讨论了估算活动分数的计算方法。我们展示了来自简化工程模型的两个具有代数函数的数值示例。对于每个模型,我们分析活动子空间并讨论如何利用低维结构。然后,我们显示活动得分产生的输入排名与标准指标产生的排名一致。

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