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Profile Extrema for Visualizing and Quantifying Uncertainties on Excursion Regions: Application to Coastal Flooding

机译:用于可视化和量化游览区域的不确定性的轮廓:沿海洪水的应用

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摘要

We consider the problem of describing excursion sets of a real-valued function f, that is, the set of inputs where f is above a fixed threshold. Such regions are hard to visualize if the input space dimension, d, is higher than 2. For a given projection matrix from the input space to a lower dimensional (usually 1, 2) subspace, we introduce profile sup (inf) functions that associate to each point in the projection's image the sup (inf) of the function constrained over the pre-image of this point by the considered projection. Plots of profile extrema functions convey a simple, although intrinsically partial, visualization of the set. We consider expensive to evaluate functions where only a very limited number of evaluations, n, is available, for example, , and we surrogate f with a posterior quantity of a Gaussian process (GP) model. We first compute profile extrema functions for the posterior mean given n evaluations of f. We quantify the uncertainty on such estimates by studying the distribution of GP profile extrema with posterior quasi-realizations obtained from an approximating process. We control such approximation with a bound inherited from the Borell-TIS inequality. The technique is applied to analytical functions (d = 2, 3) and to a five-dimensional coastal flooding test case for a site located on the Atlantic French coast. Here f is a numerical model returning the area of flooded surface in the coastal region given some offshore conditions. Profile extrema functions allowed us to better understand which offshore conditions impact large flooding events.
机译:我们考虑描述实值函数F的偏移集的问题,即F的输入集在固定阈值上方。如果输入空间尺寸D,则难以可视化,如果给定投影矩阵到从输入空间到较低维度(通常为1,2)子空间的给定投影矩阵,则介绍关联(INF)辅助的函数对于投影的图像中的每个点的图像,所以通过所考虑的投影的函数的SUP(INF)受到该点的预图像。轮廓曲线函数的曲线函数传达了简单的,虽然本质上部分地,可视化集合。我们考虑评估只有非常有限数量的评估N的功能,例如,具有高斯过程(GP)模型的后部的替代品。我们首先计算F的后部平均值的轮廓曲线函数。通过研究从近似过程中获得的后准实现的GP轮廓极值的分布来量化这些估计的不确定性。我们控制了从博尔特-TIS不等式继承的绑定的这种近似。该技术应用于分析功能(D = 2,3),以及位于大西洋法国海岸的网站的五维沿海洪水测试案例。这里F是返回沿海地区淹水面积的数值模型给出了一些离岸条件。轮廓extrema功能使我们能够更好地了解哪些离岸条件会影响大型洪水事件。

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