Well-Posedness and Finite Element Approximations for Elliptic SPDEs with Gaussian Noises

Yanzhao Cao, Jialin Hong, Zhihui Liu
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引用次数: 2

Abstract

The paper studies the well-posedness and optimal error estimates of spectral finite element approximations for the boundary value problems of semi-linear elliptic SPDEs driven by white or colored Gaussian noises. The noise term is approximated through the spectral projection of the covariance operator, which is not required to be commutative with the Laplacian operator. Through the convergence analysis of SPDEs with the noise terms replaced by the projected noises, the well-posedness of the SPDE is established under certain covariance operator-dependent conditions. These SPDEs with projected noises are then numerically approximated with the finite element method. A general error estimate framework is established for the finite element approximations. Based on this framework, optimal error estimates of finite element approximations for elliptic SPDEs driven by power-law noises are obtained. It is shown that with the proposed approach, convergence order of white noise driven SPDEs is improved by half for one-dimensional problems, and by an infinitesimal factor for higher-dimensional problems.
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高斯噪声下椭圆型SPDEs的适定性及有限元逼近
本文研究了在白色或彩色高斯噪声驱动下半线性椭圆型SPDEs边值问题的谱有限元逼近的适定性和最优误差估计。噪声项是通过协方差算子的谱投影来逼近的,它不需要与拉普拉斯算子交换。通过用投影噪声代替噪声项对SPDE的收敛性分析,在一定的协方差算子依赖条件下,建立了SPDE的适定性。然后用有限元法对这些带有投影噪声的spde进行数值逼近。建立了有限元近似的一般误差估计框架。在此框架下,得到了幂律噪声驱动下椭圆型SPDEs有限元逼近的最优误差估计。结果表明,采用该方法,白噪声驱动的SPDEs在一维问题上的收敛阶提高了一半,在高维问题上的收敛阶提高了一个无限小的因子。
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