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Local-metrics error-based Shepard interpolation as surrogate for highly non-linear material models in high dimensions

机译:基于本地度量的基于错误的SHEPard插值作为高尺寸高度非线性材料模型的代理

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摘要

Many problems in computational materials science and chemistry require the evaluation of expensive functions with locally rapid changes, such as the turn-over frequency of first principles kinetic Monte Carlo models for heterogeneous catalysis. Because of the high computational cost, it is often desirable to replace the original with a surrogate model, e.g., for use in coupled multiscale simulations. The construction of surrogates becomes particularly challenging in high-dimensions. Here, we present a novel version of the modified Shepardinterpolation method which can overcome the curse of dimensionality for such functions to give faithful reconstructions even from very modest numbers of function evaluations. The introduction of local metrics allows us to take advantage of the fact that, on a local scale, rapid variation often occurs only across a small number of directions. Furthermore, we use local error estimates to weigh different local approximations, which helps avoid artificial oscillations. Finally, we test our approach on a number of challenging analytic functions as well as a realistic kinetic Monte Carlo model. Our method not only outperforms existing isotropic metric Shepard methods but also state-of-the-art Gaussian process regression. Published by AIP Publishing.
机译:计算材料科学和化学中的许多问题需要评估具有本地快速变化的昂贵功能,例如第一原理的转频频率动力学蒙特卡罗模型用于异构催化。由于计算成本高,通常希望用代理模型更换原件,例如,用于耦合的多尺度模拟。替代品的建造在高维度中变得特别具有挑战性。在这里,我们介绍了一种新颖的修改的谢泼德接口方法,可以克服这些功能的维度诅咒,即使从非常适度的函数评估中提供忠实的重建。引入当地度量标准使我们能够利用本地规模,快速变化通常仅在少量方向上发生的快速变化。此外,我们使用本地错误估计来称量不同的局部近似,这有助于避免人工振荡。最后,我们在许多具有挑战性的分析功能以及一个现实的动力学蒙特卡罗模型中测试我们的方法。我们的方法不仅优于现有的各向同性公制谢泼德方法,还优于现有的高斯工艺回归。通过AIP发布发布。

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