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Multi-index Stochastic Collocation Convergence Rates for Random PDEs with Parametric Regularity

Published: 01 December 2016 Publication History

Abstract

We analyze the recent Multi-index Stochastic Collocation (MISC) method for computing statistics of the solution of a partial differential equation (PDE) with random data, where the random coefficient is parametrized by means of a countable sequence of terms in a suitable expansion. MISC is a combination technique based on mixed differences of spatial approximations and quadratures over the space of random data, and naturally, the error analysis uses the joint regularity of the solution with respect to both the variables in the physical domain and parametric variables. In MISC, the number of problem solutions performed at each discretization level is not determined by balancing the spatial and stochastic components of the error, but rather by suitably extending the knapsack-problem approach employed in the construction of the quasi-optimal sparse-grids and Multi-index Monte Carlo methods, i.e., we use a greedy optimization procedure to select the most effective mixed differences to include in the MISC estimator. We apply our theoretical estimates to a linear elliptic PDE in which the log-diffusion coefficient is modeled as a random field, with a covariance similar to a Matérn model, whose realizations have spatial regularity determined by a scalar parameter. We conduct a complexity analysis based on a summability argument showing algebraic rates of convergence with respect to the overall computational work. The rate of convergence depends on the smoothness parameter, the physical dimensionality and the efficiency of the linear solver. Numerical experiments show the effectiveness of MISC in this infinite dimensional setting compared with the Multi-index Monte Carlo method and compare the convergence rate against the rates predicted in our theoretical analysis.

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  1. Multi-index Stochastic Collocation Convergence Rates for Random PDEs with Parametric Regularity

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      cover image Foundations of Computational Mathematics
      Foundations of Computational Mathematics  Volume 16, Issue 6
      December 2016
      349 pages
      ISSN:1615-3375
      EISSN:1615-3383
      Issue’s Table of Contents

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      Springer-Verlag

      Berlin, Heidelberg

      Publication History

      Published: 01 December 2016

      Author Tags

      1. 41A10 (approx by polynomials)
      2. 65C20 (models
      3. 65N05 (Finite differences)
      4. 65N30 (Finite elements)
      5. Combination technique
      6. Elliptic partial differential equations with random coefficients
      7. Finite element method
      8. Infinite dimensional integration
      9. Multi-index Stochastic Collocation
      10. Multi-level
      11. Multi-level methods
      12. Multivariate approximation
      13. Random partial differential equations
      14. Sparse grids
      15. Stochastic Collocation methods
      16. Uncertainty quantification
      17. numerical methods)

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      • (2023)Comparing multi-index stochastic collocation and multi-fidelity stochastic radial basis functions for forward uncertainty quantification of ship resistanceEngineering with Computers10.1007/s00366-021-01588-039:3(2209-2237)Online publication date: 1-Jun-2023
      • (2019)Sparse approximation of multilinear problems with applications to kernel-based methods in UQNumerische Mathematik10.1007/s00211-017-0932-4139:1(247-280)Online publication date: 2-Jan-2019

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