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Open AccessJournal ArticleDOI

Selecting the Best Quantity and Variety of Surrogates for an Ensemble Model

Pengcheng Ye, +1 more
- Vol. 8, Iss: 10, pp 1721
TLDR
In general, using as many accurate surrogates as possible to construct ensemble models will improve the prediction performance and ensemble models can be used as an insurance rather than offering significant improvements.
Abstract
Surrogate modeling techniques are widely used to replace the computationally expensive black-box functions in engineering. As a combination of individual surrogate models, an ensemble of surrogates is preferred due to its strong robustness. However, how to select the best quantity and variety of surrogates for an ensemble has always been a challenging task. In this work, five popular surrogate modeling techniques including polynomial response surface (PRS), radial basis functions (RBF), kriging (KRG), Gaussian process (GP) and linear shepard (SHEP) are considered as the basic surrogate models, resulting in twenty-six ensemble models by using a previously presented weights selection method. The best ensemble model is expected to be found by comparative studies on prediction accuracy and robustness. By testing eight mathematical problems and two engineering examples, we found that: (1) in general, using as many accurate surrogates as possible to construct ensemble models will improve the prediction performance and (2) ensemble models can be used as an insurance rather than offering significant improvements. Moreover, the ensemble of three surrogates PRS, RBF and KRG is preferred based on the prediction performance. The results provide engineering practitioners with guidance on the superior choice of the quantity and variety of surrogates for an ensemble.

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Citations
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Journal ArticleDOI

Integration of Second-Order Sensitivity Method and CoKriging Surrogate Model

TL;DR: This study introduces a low-cost method to compute the high-order derivatives, making high order derivatives enhanced cokriging modeling practically achievable and proposes a novel direction for the large scale optimization problems.
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The use of Fuzzy rule-based systems in the design process of the metallic products on example of microstructure evolution prediction

TL;DR: In this paper , the authors presented a study on application of simplified models for solving technological tasks, allowing obtaining expected properties of designed products, and they used hybrid knowledge acquisition methods that combine the results of point experiments with expert knowledge.
References
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Book

Engineering Design via Surrogate Modelling: A Practical Guide

TL;DR: This chapter discusses the design and exploration of a Surrogate-based kriging model, and some of the techniques used in that process, as well as some new approaches to designing models based on the data presented.
Journal ArticleDOI

Comparative studies of metamodelling techniques under multiple modelling criteria

TL;DR: This paper systematically compare four popular metamodelling techniques – polynomial regression, multivariate adaptive regression splines, radial basis functions, and kriging – based on multiple performance criteria using fourteen test problems representing different classes of problems.
Journal ArticleDOI

Ensemble of surrogates

TL;DR: The utility of an ensemble of surrogate models is extended to identify regions of possible high errors at locations where predictions of surrogates widely differ, and provide a more robust approximation approach.
Journal ArticleDOI

Ensemble of metamodels with optimized weight factors

TL;DR: The selection of weight factors in the general weighted-sum formulation of an ensemble is treated as an optimization problem with the desired solution being one that minimizes a selected error metric.
Journal ArticleDOI

An optimization methodology of alkaline-surfactant-polymer flooding processes using field scale numerical simulation and multiple surrogates

TL;DR: The proposed approach estimates the optimal values for a set of design variables to maximize the cumulative oil recovery from a heterogeneous and multiphase petroleum reservoir subject to an ASP flooding.
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