scispace - formally typeset
Journal ArticleDOI

Efficient global optimization algorithm assisted by multiple surrogate techniques

TLDR
The multiple surrogate efficient global optimization (MSEGO) algorithm is proposed, which adds several points per optimization cycle with the help of multiple surrogates, and is found that MSEGO works well even with imported uncertainty estimates, delivering better results in a fraction of the optimization cycles needed by EGO.
Abstract
Surrogate-based optimization proceeds in cycles. Each cycle consists of analyzing a number of designs, fitting a surrogate, performing optimization based on the surrogate, and finally analyzing a candidate solution. Algorithms that use the surrogate uncertainty estimator to guide the selection of the next sampling candidate are readily available, e.g., the efficient global optimization (EGO) algorithm. However, adding one single point at a time may not be efficient when the main concern is wall-clock time (rather than number of simulations) and simulations can run in parallel. Also, the need for uncertainty estimates limits EGO-like strategies to surrogates normally implemented with such estimates (e.g., kriging and polynomial response surface). We propose the multiple surrogate efficient global optimization (MSEGO) algorithm, which adds several points per optimization cycle with the help of multiple surrogates. We import uncertainty estimates from one surrogate to another to allow use of surrogates that do not provide them. The approach is tested on three analytic examples for nine basic surrogates including kriging, radial basis neural networks, linear Shepard, and six different instances of support vector regression. We found that MSEGO works well even with imported uncertainty estimates, delivering better results in a fraction of the optimization cycles needed by EGO.

read more

Citations
More filters
Journal ArticleDOI

Pseudo expected improvement criterion for parallel EGO algorithm

TL;DR: The results show that the proposed PEI algorithm performs significantly better than the standard EGO algorithm, and gains significant improvements over five of the six test problems compared against a state-of-the-art parallel EGO algorithms.
Journal ArticleDOI

GP-DEMO: Differential Evolution for Multiobjective Optimization based on Gaussian Process models

TL;DR: A novel surrogate-model-based multiobjective evolutionary algorithm based on Gaussian Process models (GP-DEMO) is proposed, based on the newly defined relations for comparing solutions under uncertainty, which minimize the possibility of wrongly performed comparisons of solutions due to inaccurate surrogate model approximations.
Journal ArticleDOI

A generation-based optimal restart strategy for surrogate-assisted social learning particle swarm optimization

TL;DR: In the proposed method, the SL-PSO restarts every few generations in the global radial-basis-function model landscape, and the best sample points archived in the database are employed to reinitialize the swarm at each restart, thus offering a powerful optimizer for the computationally expensive problems.
Journal ArticleDOI

Performance measures based optimization of supply chain network resilience

TL;DR: Managers can make informed choices by evaluating tradeoff between objective functions through enriched Pareto frontier with associated degree of confidence of prediction accuracy through Co-Kriging interpolation.
Journal ArticleDOI

An adaptive Bayesian approach to surrogate-assisted evolutionary multi-objective optimization

TL;DR: An adaptive Bayesian approach to surrogate-assisted evolutionary algorithm to solve expensive MOPs by tuning the hyperparameter in the acquisition function according to the search dynamics to determine which candidate solutions are to be evaluated using the expensive real objective functions.
References
More filters
Journal ArticleDOI

Differential Evolution – A Simple and Efficient Heuristic for Global Optimization over Continuous Spaces

TL;DR: In this article, a new heuristic approach for minimizing possibly nonlinear and non-differentiable continuous space functions is presented, which requires few control variables, is robust, easy to use, and lends itself very well to parallel computation.
Book

An Introduction to Support Vector Machines and Other Kernel-based Learning Methods

TL;DR: This is the first comprehensive introduction to Support Vector Machines (SVMs), a new generation learning system based on recent advances in statistical learning theory, and will guide practitioners to updated literature, new applications, and on-line software.
Journal ArticleDOI

A tutorial on support vector regression

TL;DR: This tutorial gives an overview of the basic ideas underlying Support Vector (SV) machines for function estimation, and includes a summary of currently used algorithms for training SV machines, covering both the quadratic programming part and advanced methods for dealing with large datasets.
Journal ArticleDOI

A comparison of three methods for selecting values of input variables in the analysis of output from a computer code

TL;DR: In this paper, two sampling plans are examined as alternatives to simple random sampling in Monte Carlo studies and they are shown to be improvements over simple sampling with respect to variance for a class of estimators which includes the sample mean and the empirical distribution function.
Journal ArticleDOI

Efficient Global Optimization of Expensive Black-Box Functions

TL;DR: This paper introduces the reader to a response surface methodology that is especially good at modeling the nonlinear, multimodal functions that often occur in engineering and shows how these approximating functions can be used to construct an efficient global optimization algorithm with a credible stopping rule.
Related Papers (5)