Stochastic Spectral Methods in Uncertainty Quantification
Loading...
Downloads
2
Date issued
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Vysoká škola báňská - Technická univerzita Ostrava
Location
Signature
License
Abstract
Uncertainty quantification is an important part
of a probabilistic design of structures. Nonetheless,
common Monte Carlo methods are highly computationally
demanding or even not feasible for this task, especially in
case of mathematical models of physical problems solved
by finite element method. Therefore, the paper is focused
on the efficient alternative approach for uncertainty
quantification-stochastic spectral expansion, represented
herein by Polynomial Chaos Expansion. In recent years,
an application of stochastic spectral methods in
uncertainty quantification is the topic of research for many
scientists in various fields of science and its efficiency was
shown by various studies. The paper presents basic
theoretical background of polynomial chaos expansion
and its connection to uncertainty quantification. The
possibility of efficient statistical and sensitivity analysis is
investigated and an application in analytical examples
with known reference solution is presented herein.
Moreover, practical implementation of methodology is
discussed and developed SW tool is presented herein.
Description
Subject(s)
polynomial chaos expansion, sensitivity analysis, statistical analysis, uncertainty quantification
Citation
Sborník vědeckých prací Vysoké školy báňské - Technické univerzity Ostrava. Řada stavební. 2019, roč. 19, č. 2, s. 48-53 : il.