Affiliation:
1. Computational Engineering and Design Group, School of Engineering Sciences, University of SouthamptonSouthampton SO17 1BJ, UK
Abstract
This paper demonstrates the application of correlated Gaussian process based approximations to optimization where multiple levels of analysis are available, using an extension to the geostatistical method of
co-kriging
. An exchange algorithm is used to choose which points of the search space to sample within each level of analysis. The derivation of the co-kriging equations is presented in an intuitive manner, along with a new variance estimator to account for varying degrees of computational ‘noise’ in the multiple levels of analysis. A multi-fidelity wing optimization is used to demonstrate the methodology.
Subject
General Physics and Astronomy,General Engineering,General Mathematics
Cited by
688 articles.
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