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Sensitivity analysis based dimension reduction of multiscale models

机译:基于灵敏度分析的多尺度模型降维

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In this paper, the sensitivity analysis of a single scale model is employed in order to reduce the input dimensionality of the related multiscale model, in this way, improving the efficiency of its uncertainty estimation. The approach is illustrated with two examples: a reaction model and the standard Ornstein-Uhlenbeck process. Additionally, a counterexample shows that an uncertain input should not be excluded from uncertainty quantification without estimating the response sensitivity to this parameter. In particular, an analysis of the function defining the relation between single scale components is required to understand whether single scale sensitivity analysis can be used to reduce the dimensionality of the overall multiscale model input space.
机译:为了减少相关多尺度模型的输入维数,本文采用了单尺度模型的敏感性分析,以提高不确定性估计的效率。通过两个示例说明了该方法:反应模型和标准的Ornstein-Uhlenbeck过程。此外,一个反例显示,在不估计对该参数的响应灵敏度的情况下,不应将不确定的输入排除在不确定性量化之外。特别是,需要对定义单比例尺组件之间关系的函数进行分析,以了解是否可以使用单比例尺灵敏度分析来减少整个多比例尺模型输入空间的维数。

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