首页|Adaptive experimental design for multi‐fidelity surrogate modeling of multi‐disciplinary systems

Adaptive experimental design for multi‐fidelity surrogate modeling of multi‐disciplinary systems

扫码查看
Abstract We present an adaptive algorithm for constructing surrogate models of multi‐disciplinary systems composed of a set of coupled components. With this goal we introduce “coupling” variables with a priori unknown distributions that allow surrogates of each component to be built independently. Once built, the surrogates of the components are combined to form an integrated‐surrogate that can be used to predict system‐level quantities of interest at a fraction of the cost of the original model. The error in the integrated‐surrogate is greedily minimized using an experimental design procedure that allocates the amount of training data, used to construct each component‐surrogate, based on the contribution of those surrogates to the error of the integrated‐surrogate. The multi‐fidelity procedure presented is a generalization of multi‐index stochastic collocation that can leverage ensembles of models of varying cost and accuracy, for one or more components, to reduce the computational cost of constructing the integrated‐surrogate. Extensive numerical results demonstrate that, for a fixed computational budget, our algorithm is able to produce surrogates that are orders of magnitude more accurate than methods that treat the integrated system as a black‐box.

experimental designmulti‐disciplinarymulti‐fidelitymulti‐physicssurrogateuncertainty quantification

Alex A. Gorodetsky、Doug Allaire、John D. Jakeman、Sam Friedman、Michael S. Eldred、Lorenzo Tamellini

展开 >

University of Michigan

Texas A&M University

Sandia National Laboratories

Istituto di Matematica Applicata e Tecnologie Informatiche “E. Magenes” (CNR‐IMATI)

展开 >

2022

International Journal for Numerical Methods in Engineering

International Journal for Numerical Methods in Engineering

EISCI
ISSN:0029-5981
年,卷(期):2022.123(12)
  • 3
  • 54