On Stochastic Model Interpolation and Extrapolation Methods for Vehicle Design

Finite Element (FE) models are widely used in automotive for vehicle design. Even with increasing speed of computers, the simulation of high fidelity FE models is still too time-consuming to perform direct design optimization. As a result, response surface models (RSMs) are commonly used as surrogat...

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Bibliographic Details
Published inSAE International journal of materials and manufacturing Vol. 6; no. 3; pp. 517 - 531
Main Authors Zhan, Zhenfei, Fu, Yan, Yang, Ren-Jye
Format Journal Article
LanguageEnglish
Published Warrendale SAE International 01.06.2013
SAE International, a Pennsylvania Not-for Profit
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Summary:Finite Element (FE) models are widely used in automotive for vehicle design. Even with increasing speed of computers, the simulation of high fidelity FE models is still too time-consuming to perform direct design optimization. As a result, response surface models (RSMs) are commonly used as surrogates of the FE models to reduce the turn-around time. However, RSM may introduce additional sources of uncertainty, such as model bias, and so on. The uncertainty and model bias will affect the trustworthiness of design decisions in design processes. This calls for the development of stochastic model interpolation and extrapolation methods that can address the discrepancy between the RSM and the FE results, and provide prediction intervals of model responses under uncertainty. This paper investigates and compares three stochastic methods for model interpolation and extrapolation, and they are: (1) Bayesian inference-based method, (2) Gaussian process modeling-based method, and (3) Copula-based method, and several validation metrics are proposed to evaluate the prediction results. An analytical case study and a vehicle design problem are used to demonstrate the advantages and disadvantages of these methods.
Bibliography:2013-04-16 ANNUAL 201503 Detroit, Michigan, United States
ISSN:1946-3979
1946-3987
1946-3987
DOI:10.4271/2013-01-1386