In this study, we consider the development of tailored quasi-Monte Carlo (QMC) cubatures for non-conforming discontinuous Galerkin (DG) approximations of elliptic partial differential equations (PDEs) with random coefficients. We consider both the affine and uniform and the lognormal models for the input random field, and investigate the use of QMC cubatures to approximate the expected value of the PDE response subject to input uncertainty. In particular, we prove that the resulting QMC convergence rate for DG approximations behaves in the same way as if continuous finite elements were chosen. Notably, the parametric regularity bounds for DG, which are developed in this work, are also useful for other methods such as sparse grids. Numerical results underline our analytical findings.
翻译:在这项研究中,我们考虑为不符合不连续的加勒金(DG)等离子体部分偏差方程近似值和随机系数开发量定制的准蒙卡罗(QMC)幼崽。我们考虑对输入随机字段既采用方形,也采用统一和对数模式,并调查QMC幼崽的使用情况,以接近投入不确定情况下PDE反应的预期值。特别是,我们证明,由此产生的QMC的GG接近的趋同率与选择连续的有限要素相同。值得注意的是,在这项工作中开发的DG的参数常态约束,对于诸如分散的电网等其他方法也是有用的。数字结果突出了我们的分析结论。</s>