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Stochastic Finite Element Methods with the Euclidean Degree for Partial Differential Equations with Random Inputs

机译:具有随机输入的偏微分方程的欧式随机有限元方法。

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In this paper, we construct a new implementation of stochastic finite element methods for partial differential equations with random inputs. The basis functions of generalized polynomial chaos are determined not by the usual notion of degree of a multivariate polynomial, but by the Euclidean degree. Then the corresponding linear combination of basis from the stochastic finite element methods is obtained, where the coefficient matrix is sparse and symmetric. In numerical experiments considering stochastic diffusion and Helmholtz equations, our approach with Euclidean degree of gPC basis achieves a better convergence rate than ones with total degree.
机译:在本文中,我们为带有随机输入的偏微分方程构造了一种随机有限元方法的新实现。广义多项式混沌的基函数不是由多元多项式的通常程度的概念来确定,而是由欧几里德程度来确定的。然后从随机有限元方法获得了相应的基础线性组合,其中系数矩阵是稀疏且对称的。在考虑随机扩散和Helmholtz方程的数值实验中,我们的基于gPC的欧几里得度的方法比具有总度数的方法具有更高的收敛速度。

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