On efficient global optimization via universal Kriging surrogate models
Pramudita Satria Palar, Koji Shimoyama

TL;DR
This paper evaluates the effectiveness of universal Kriging models within an efficient global optimization framework, demonstrating that automatic trend function selection can enhance optimization performance over standard EGO, especially with polynomial-chaos Kriging.
Contribution
The study introduces and compares four UK variants in an EGO framework, highlighting the benefits of automatic trend selection and identifying PCK-EGO as the most robust approach.
Findings
PCK-EGO outperforms other UK variants in robustness.
Automatic trend selection improves optimization results.
UK models can find better solutions despite lower global accuracy.
Abstract
In this paper, we investigate the capability of the universal Kriging (UK) model for single-objective global optimization applied within an efficient global optimization (EGO) framework. We implemented this combined UK-EGO framework and studied four variants of the UK methods, that is, a UK with a first-order polynomial, a UK with a second-order polynomial, a blind Kriging (BK) implementation from the ooDACE toolbox, and a polynomial-chaos Kriging (PCK) implementation. The UK-EGO framework with automatic trend function selection derived from the BK and PCK models works by building a UK surrogate model and then performing optimizations via expected improvement criteria on the Kriging model with the lowest leave-one-out cross-validation error. Next, we studied and compared the UK-EGO variants and standard EGO using five synthetic test functions and one aerodynamic problem. Our results…
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