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Multi-Index Stochastic Collocation (MISC) for random elliptic PDEs

机译:随机椭圆PDE的多指标随机搭配(MISC)

摘要

In this work we introduce the Multi-Index Stochastic Collocation method (MISC) for computing statistics of the solution of a PDE with random data. MISC is a combination technique based on mixed differences of spatial approximations and quadratures over the space of random data. We propose an optimization procedure to select the most effective mixed differences to include in the MISC estimator: such optimization is a crucial step and allows us to build a method that, provided with sufficient solution regularity, is potentially more effective than other multi-level collocation methods already available in literature. We then provide a complexity analysis that assumes decay rates of product type for such mixed differences, showing that in the optimal case the convergence rate of MISC is only dictated by the convergence of the deterministic solver applied to a one dimensional problem. We show the effectiveness of MISC with some computational tests, comparing it with other related methods available in the literature, such as the Multi-Index and Multilevel Monte Carlo, Multilevel Stochastic Collocation, Quasi Optimal Stochastic Collocation and Sparse Composite Collocation methods.
机译:在这项工作中,我们介绍了用于计算带有随机数据的PDE解的统计数据的多指标随机搭配方法(MISC)。 MISC是一种基于随机数据空间上空间逼近度和正交度的混合差的组合技术。我们提出了一种优化程序,以选择最有效的混合差异,以包括在MISC估计器中:这种优化是至关重要的一步,它使我们能够构建一种方法,该方法具有足够的求解规律性,因此可能比其他多级配置更有效。文献中已有可用的方法。然后,我们提供了复杂性分析,该分析假定了此类混合差异的乘积类型的衰减率,这表明在最佳情况下,MISC的收敛速度仅由应用于一维问题的确定性求解器的收敛决定。我们通过一些计算测试证明了MISC的有效性,并将其与文献中可用的其他相关方法进行了比较,例如多索引和多级蒙特卡洛,多级随机搭配,拟最优随机搭配和稀疏复合搭配方法。

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