Reduced dimensional Gaussian process emulators of parametrized partial differential equations basedon Isomap

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Abstract

In this paper, Isomap and kernel Isomap are used to dramatically reduce the dimensionality of the output space to efficiently construct a Gaussian process emulator of parametrized partial differential equations. The output space consists of spatial or spatio-temporal fields that are functions of multiple input variables. For such problems, standard multi-output Gaussian process emulation strategies are computationally impractical and/or make restrictive assumptions regarding the correlation structure. The method we develop can be applied without modification to any problem involving vector-valued targets and vector-valued inputs. It also extends a method based on linear dimensionality reduction to response surfaces that cannot be described accurately by a linear subspace of the high dimensional output space. Comparisons to the linear method are made through examples that clearly demonstrate the advantages of nonlinear dimensionality reduction.

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Xing, W., Shah, A. A., & Nair, P. B. (2015). Reduced dimensional Gaussian process emulators of parametrized partial differential equations basedon Isomap. Proceedings of the Royal Society A: Mathematical, Physical and Engineering Sciences, 471(2174). https://doi.org/10.1098/rspa.2014.0697

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