SeAr PC: Sensitivity Enhanced Arbitrary Polynomial Chaos
This paper presents a method for performing Uncertainty Quantification in high-dimensional uncertain spaces by combining arbitrary polynomial chaos with a recently proposed scheme for sensitivity enhancement (1). Including available sensitivity information offers a way to mitigate the curse of dimen...
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Zusammenfassung: | This paper presents a method for performing Uncertainty Quantification in
high-dimensional uncertain spaces by combining arbitrary polynomial chaos with
a recently proposed scheme for sensitivity enhancement (1). Including available
sensitivity information offers a way to mitigate the curse of dimensionality in
Polynomial Chaos Expansions (PCEs). Coupling the sensitivity enhancement to
arbitrary Polynomial Chaos allows the formulation to be extended to a wide
range of stochastic processes, including multi-modal, fat-tailed, and truncated
probability distributions. In so doing, this work addresses two of the barriers
to widespread industrial application of PCEs. The method is demonstrated for a
number of synthetic test cases, including an uncertainty analysis of a Finite
Element structure, determined using Topology Optimisation, with 306 uncertain
inputs. We demonstrate that by exploiting sensitivity information, PCEs can
feasibly be applied to such problems and through the Sobol sensitivity indices,
can allow a designer to easily visualise the spatial distribution of the
contributions to uncertainty in the structure. |
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DOI: | 10.48550/arxiv.2402.05507 |