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首页> 外文期刊>SIAM/ASA Journal on Uncertainty Quantification >Two-Level a Posteriori Error Estimation for Adaptive Multilevel Stochastic Galerkin Finite Element Method
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Two-Level a Posteriori Error Estimation for Adaptive Multilevel Stochastic Galerkin Finite Element Method

机译:两级后验误差估计自适应多级随机伽辽金有限的单元法

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The paper considers a class of parametric elliptic partial differential equations (PDEs), where the coefficients and the right-hand side function depend on infinitely many (uncertain) parameters. We introduce a two-level a posteriori estimator to control the energy error in multilevel stochastic Galerkin approximations for this class of PDE problems. We prove that the two-level estimator always provides a lower bound for the unknown approximation error, while the upper bound is equivalent to a saturation assumption. We propose and empirically compare three adaptive algorithms, where the structure of the estimator is exploited to perform spatial refinement as well as parametric enrichment. The paper also discusses implementation aspects of computing multilevel stochastic Galerkin approximations.
机译:本文考虑一类参数椭圆偏微分方程(pde)的地方系数和右侧功能依靠无穷多(不确定)参数。我们引入了两级后验估计在多级控制能量误差为这类随机加勒金近似PDE的问题。估计总提供的下界未知的近似误差,而上相当于一个饱和的假设。我们建议和经验比较三个自适应算法,估计量的结构是用来执行空间细化以及参数浓缩。讨论了计算的实现方面多级随机加勒金近似。

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