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Efficient classification based methods for global sensitivity analysis

机译:基于有效分类的全局敏感性分析方法

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摘要

New classification based methods for global sensitivity analysis of structural models are presented which do not require the full approximation of the model response for qualitatively good sensitivity measures. Instead, only the level sets of the model response are identified by partitioning it into a number of classes with a few available sample points. The average change in class memberships of simulated points on the model domain is considered as sensitivity measure. The new methods are realized using Support Vector Machines and their results are compared with existing methods by using analytical as well as practical industry examples.
机译:提出了用于结构模型全局敏感性分析的基于分类的新方法,该方法不需要定性良好的敏感性度量的模型响应的完全近似。取而代之的是,仅通过将模型响应的级别集划分为具有几个可用采样点的多个类来进行标识。模型域上模拟点的类成员资格的平均变化被视为敏感性度量。使用支持向量机实现了新方法,并通过分析和实际行业示例将其结果与现有方法进行了比较。

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