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Surrogate modelling for the prediction of spatial fields based on simultaneous dimensionality reduction of high-dimensional input/output spaces

机译:基于高维输入/输出空间的同时降维的空间模型预测的替代模型

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摘要

Time-consuming numerical simulators for solving groundwater flow and dissolution models of physico-chemical processes in deep aquifers normally require some of the model inputs to be defined in high-dimensional spaces in order to return realistic results. Sometimes, the outputs of interest are spatial fields leading to high-dimensional output spaces. Although Gaussian process emulation has been satisfactorily used for computing faithful and inexpensive approximations of complex simulators, these have been mostly applied to problems defined in low-dimensional input spaces. In this paper, we propose a method for simultaneously reducing the dimensionality of very high-dimensional input and output spaces in Gaussian process emulators for stochastic partial differential equation models while retaining the qualitative features of the original models. This allows us to build a surrogate model for the prediction of spatial fields in such time-consuming simulators. We apply the methodology to a model of convection and dissolution processes occurring during carbon capture and storage.
机译:解决深层含水层中地下水流和物理化学过程溶解模型的费时的数值模拟器通常需要在高维空间中定义一些模型输入,以便返回真实结果。有时,感兴趣的输出是导致高维输出空间的空间场。尽管高斯过程仿真已被令人满意地用于计算复杂模拟器的忠实且廉价的近似值,但这些方法大多已应用于在低维输入空间中定义的问题。在本文中,我们提出了一种方法,用于同时降低随机偏微分方程模型的高斯过程仿真器中高维输入和输出空间的维数,同时保留原始模型的定性特征。这使我们能够在此类耗时的模拟器中建立替代模型来预测空间场。我们将该方法应用于碳捕获和储存过程中发生的对流和溶解过程模型。

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