An $hp$-adaptive multi-element stochastic collocation method for surrogate modeling with information re-use
Abstract
This paper introduces an -adaptive multi-element stochastic collocation method, which additionally allows to re-use existing model evaluations during either - or -refinement. The collocation method is based on weighted Leja nodes. After -refinement, local interpolations are stabilized by adding and sorting Leja nodes on each newly created sub-element in a hierarchical manner. For -refinement, the local polynomial approximations are based on total-degree or dimension-adaptive bases. The method is applied in the context of forward and inverse uncertainty quantification to handle non-smooth or strongly localised response surfaces. The performance of the proposed method is assessed in several test cases, also in comparison to competing methods.
Keywords
Cite
@article{arxiv.2206.14435,
title = {An $hp$-adaptive multi-element stochastic collocation method for surrogate modeling with information re-use},
author = {Armin Galetzka and Dimitrios Loukrezis and Niklas Georg and Herbert De Gersem and Ulrich Römer},
journal= {arXiv preprint arXiv:2206.14435},
year = {2023}
}
Comments
31 pages, 13 figures