Sequential design of multi-fidelity computer experiments: maximizing the rate of stepwise uncertainty reduction

07/27/2020
by   Rémi Stroh, et al.
4

This article deals with the sequential design of experiments for (deterministic or stochastic) multi-fidelity numerical simulators, that is, simulators that offer control over the accuracy of simulation of the physical phenomenon or system under study. Very often, accurate simulations correspond to high computational efforts whereas coarse simulations can be obtained at a smaller cost. In this setting, simulation results obtained at several levels of fidelity can be combined in order to estimate quantities of interest (the optimal value of the output, the probability that the output exceeds a given threshold...) in an efficient manner. To do so, we propose a new Bayesian sequential strategy called Maximal Rate of Stepwise Uncertainty Reduction (MR-SUR), that selects additional simulations to be performed by maximizing the ratio between the expected reduction of uncertainty and the cost of simulation. This generic strategy unifies several existing methods, and provides a principled approach to develop new ones. We assess its performance on several examples, including a computationally intensive problem of fire safety analysis where the quantity of interest is the probability of exceeding a tenability threshold during a building fire.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/26/2017

Sequential design of experiments to estimate a probability of exceeding a threshold in a multi-fidelity stochastic simulator

In this article, we consider a stochastic numerical simulator to assess ...
research
01/09/2020

A Generalized Probabilistic Learning Approach for Multi-Fidelity Uncertainty Propagation in Complex Physical Simulations

Two of the most significant challenges in uncertainty propagation pertai...
research
04/15/2021

Bi-fidelity Reduced Polynomial Chaos Expansion for Uncertainty Quantification

A ubiquitous challenge in design space exploration or uncertainty quanti...
research
11/02/2022

Bayesian sequential design of computer experiments to estimate reliable sets

We consider an unknown multivariate function representing a system-such ...
research
09/20/2017

Integrating hyper-parameter uncertainties in a multi-fidelity Bayesian model for the estimation of a probability of failure

A multi-fidelity simulator is a numerical model, in which one of the inp...
research
07/03/2019

Estimating a probability of failure with the convex order in computer experiments

This paper deals with the estimation of a failure probability of an indu...
research
03/24/2022

Probabilistic Analysis of Aircraft Using Multi-Fidelity Aerodynamics Databases

The rise in computational capability has increased reliance on simulatio...

Please sign up or login with your details

Forgot password? Click here to reset