Uncertainty quantification for random domains using periodic random variables

IF 2.1 2区 数学 Q1 MATHEMATICS, APPLIED
Harri Hakula, Helmut Harbrecht, Vesa Kaarnioja, Frances Y. Kuo, Ian H. Sloan
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引用次数: 0

Abstract

We consider uncertainty quantification for the Poisson problem subject to domain uncertainty. For the stochastic parameterization of the random domain, we use the model recently introduced by Kaarnioja et al. (SIAM J. Numer. Anal., 2020) in which a countably infinite number of independent random variables enter the random field as periodic functions. We develop lattice quasi-Monte Carlo (QMC) cubature rules for computing the expected value of the solution to the Poisson problem subject to domain uncertainty. These QMC rules can be shown to exhibit higher order cubature convergence rates permitted by the periodic setting independently of the stochastic dimension of the problem. In addition, we present a complete error analysis for the problem by taking into account the approximation errors incurred by truncating the input random field to a finite number of terms and discretizing the spatial domain using finite elements. The paper concludes with numerical experiments demonstrating the theoretical error estimates.

Abstract Image

利用周期性随机变量量化随机域的不确定性
我们考虑的是受域不确定性影响的泊松问题的不确定性量化。对于随机域的随机参数化,我们采用了 Kaarnioja 等人最近引入的模型(SIAM 数值分析杂志,2020 年),其中可计数无限多个独立随机变量作为周期函数进入随机域。我们开发了网格准蒙特卡罗(QMC)立方体规则,用于计算受域不确定性影响的泊松问题解的期望值。这些 QMC 规则可以显示出周期设置所允许的更高阶立方收敛率,与问题的随机维度无关。此外,考虑到将输入随机场截断为有限项数以及使用有限元对空间域进行离散化所产生的近似误差,我们还对问题进行了完整的误差分析。论文最后通过数值实验证明了理论误差估计。
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来源期刊
Numerische Mathematik
Numerische Mathematik 数学-应用数学
CiteScore
4.10
自引率
4.80%
发文量
72
审稿时长
6-12 weeks
期刊介绍: Numerische Mathematik publishes papers of the very highest quality presenting significantly new and important developments in all areas of Numerical Analysis. "Numerical Analysis" is here understood in its most general sense, as that part of Mathematics that covers: 1. The conception and mathematical analysis of efficient numerical schemes actually used on computers (the "core" of Numerical Analysis) 2. Optimization and Control Theory 3. Mathematical Modeling 4. The mathematical aspects of Scientific Computing
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