Title of article
Hierarchical adaptive experimental design for Gaussian process emulators
Author/Authors
Daniel Busby، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
11
From page
1183
To page
1193
Abstract
Large computer simulators have usually complex and nonlinear input output functions. This complicated input output relation can be analyzed by global sensitivity analysis; however, this usually requires massive Monte Carlo simulations. To effectively reduce the number of simulations, statistical techniques such as Gaussian process emulators can be adopted. The accuracy and reliability of these emulators strongly depend on the experimental design where suitable evaluation points are selected. In this paper a new sequential design strategy called hierarchical adaptive design is proposed to obtain an accurate emulator using the least possible number of simulations. The hierarchical design proposed in this paper is tested on various standard analytic functions and on a challenging reservoir forecasting application. Comparisons with standard one-stage designs such as maximin latin hypercube designs show that the hierarchical adaptive design produces a more accurate emulator with the same number of computer experiments. Moreover a stopping criterion is proposed that enables to perform the number of simulations necessary to obtain required approximation accuracy.
Keywords
Gaussian process regression , Data-adaptive modeling , Sequential experimental design , Sensitivity analysis , Reservoir forecasting
Journal title
Reliability Engineering and System Safety
Serial Year
2009
Journal title
Reliability Engineering and System Safety
Record number
1188014
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