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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.

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Citations
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Book ChapterDOI

Digital Twin and Artificial Intelligence Incorporated with Surrogate Modeling for Hybrid and Sustainable Energy Systems

TL;DR: In this paper , a comprehensive framework/review on Artificial Intelligence-driven surrogate modeling and its applications with a focus on the digital twin framework and energy systems is presented, where the role of machine learning and artificial intelligence in constructing an effective surrogate model is explained.
Proceedings ArticleDOI

A Sequential Maximin Latin Hypercube Sampling Method And Its Application to Aircraft Design

TL;DR: A novel deterministic sequential maximin Latin Hypercube design method using successive local enumeration, notated as sequential-SLE (S-S LE), which is successfully applied to solve an airfoil stealth optimization problem in order to demonstrate its effectiveness for aircraft design optimization problems using expensive simulations.
Journal ArticleDOI

Digital Twin and Artificial Intelligence Incorporated With Surrogate Modeling for Hybrid and Sustainable Energy Systems

TL;DR: In this paper , a comprehensive framework/review on Artificial Intelligence-driven surrogate modeling and its applications with a focus on the digital twin framework and energy systems is presented, where the role of machine learning and artificial intelligence in constructing an effective surrogate model is explained.
Journal ArticleDOI

Multi-surrogates and multi-points infill strategy-based global optimization method

TL;DR: The proposed multi-surrogates and multi-points infill strategy-based global optimization (MSMPIGO) method shows superior search efficiency and strong robustness in locating the global optima.
Journal ArticleDOI

An Ensemble of Adaptive Surrogate Models Based on Local Error Expectations

TL;DR: The benchmark test functions and an application problem that deals with driving arm base of palletizing robot show that the proposed method can effectively improve the global and local prediction accuracy of the surrogate model.
References
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