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Functional principal component analysis for global sensitivity analysis of model with spatial output

机译:空间输出模型全局敏感性分析功能主成分分析

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Motivated by risk assessment of coastal flooding, we consider time-consuming simulators with a spatial output. The aim is to perform sensitivity analysis (SA), quantifying the influence of input parameters on the output. There are three main issues. First, due to computational time, standard SA techniques cannot be directly applied on the simulator. Second, the output is infinite dimensional, or at least high dimensional if the output is discretized. Third, the spatial output is non-stationary and exhibits strong local variations.We show that all these issues can be addressed all together by using functional PCA (FPCA). We first specify a functional basis, such as wavelets or B-splines, designed to handle local variations. Secondly, we select the most influential basis terms, either with an energy criterion after basis orthonormalization, or directly on the original basis with a penalized regression approach. Then FPCA further reduces dimension by doing PCA on the most influential basis coefficients, with an ad-hoc metric. Finally, fast-to-evaluate metamodels are built on the few selected principal components. They provide a proxy on which SA can be done. As a by-product, we obtain analytical formulas for variance-based sensitivity indices, generalizing known formula assuming orthonormality of basis functions.
机译:受沿海洪水风险评估的推动,我们考虑耗时的模拟器具有空间输出。目的是执行灵敏度分析(SA),量化输入参数对输出的影响。有三个主要问题。首先,由于计算时间,标准SA技术不能直接应用于模拟器。其次,输出是无限尺寸的,或者如果输出被离散化,则至少高维度。第三,空间输出是非静止的,展示强烈的本地变体。我们展示了所有这些问题都可以通过使用功能PCA(FPCA)来解决所有这些问题。我们首先指定功能基础,例如小波或B样条,旨在处理局部变化。其次,我们选择最有影响力的基础术语,在正常化之后的能量标准,或直接以惩罚的回归方法直接依据。然后,FPCA通过在最有影响力的基础系数上进行PCA,进一步减少维度,具有ad-hoc度量标准。最后,快速评估的元典型内置于少数选定的主组件上。它们提供了可以完成SA的代理。作为副产物,我们获得基于方差的敏感性指数的分析公式,推广了假设基础函数的正交性的已知式。

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