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Goal-oriented adaptive modeling of random heterogeneous media and model-based multilevel Monte Carlo methods

机译:面向目标的随机异构媒体自适应建模和基于模型的多层蒙特卡洛方法

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摘要

Methods for generating sequences of surrogates approximating fine scale models of two-phase random heterogeneous media are presented that are designed to adaptively control the modeling error in key quantities of interest (Qols). For specificity, the base models considered involve stochastic partial differential equations characterizing, for example, steady-state heat conduction in random heterogeneous materials and stochastic elastostatics problems in linear elasticity. The adaptive process involves generating a sequence of surrogate models defined on a partition of the solution domain into regular subdomains and then, based on estimates of the error in the Qols, assigning homogenized effective material properties to some subdomains and full random fine scale properties to others, to control the error so as to meet a preset tolerance. New model-based Multilevel Monte Carlo (mbMLMC) methods are presented that exploit the adaptive sequencing and are designed to reduce variances and thereby accelerate convergence of Monte Carlo sampling. Estimates of cost and mean squared error of the method are presented. The results of several numerical experiments are discussed that confirm that substantial saving in computer costs can be realized through the use of controlled surrogate models and the associated mbMLMC algorithms. (C) 2019 Elsevier Ltd. All rights reserved.
机译:提出了产生替代物序列的方法,这些替代物序列近似于两相随机异质介质的精细模型,这些方法旨在自适应地控制关键关注量(Qols)中的建模误差。具体来说,所考虑的基本模型涉及随机偏微分方程,这些方程表征例如随机异质材料中的稳态热传导以及线性弹性中的随机弹性静力学问题。自适应过程包括生成在解决方案域的划分为规则子域的分区上定义的一系列替代模型,然后基于Qol中误差的估计,将均匀化的有效材料属性分配给某些子域,并将完全随机的精细尺度属性分配给其他子域,以控制误差以达到预设的公差。提出了新的基于模型的多级蒙特卡洛(mbMLMC)方法,该方法利用自适应排序,旨在减少方差,从而加快蒙特卡洛采样的收敛速度。提出了该方法的成本估算和均方误差。讨论了几个数值实验的结果,这些结果证实,通过使用受控代理模型和相关的mbMLMC算法,可以节省大量计算机成本。 (C)2019 Elsevier Ltd.保留所有权利。

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