Selection of surrogate modeling techniques for surface approximation and surrogate-based optimization | AIChE

Selection of surrogate modeling techniques for surface approximation and surrogate-based optimization

TitleSelection of surrogate modeling techniques for surface approximation and surrogate-based optimization
Publication TypeJournal Article
Year of Publication2021
AuthorsWilliams, B, Cremaschi, S
JournalChemical Engineering Research and Design
Volume170
Pagination76–89
Date Publishedjun
ISSN0263-8762
Keywords9.3, BP5Q4, Gaussian process regression, multivariate adaptive regression splines, random forests, Surface approximation, surrogate model, Surrogate-based optimization
Abstract

Surrogate models are used to map input data to output data when the actual relationship between the two is unknown or computationally expensive to evaluate for several applications, including surface approximation and surrogate-based optimization. This work evaluates the performance of eight surrogate modeling techniques for those two applications over a set of generated datasets with known characteristics. With this work, we aim to provide general rules for selecting an appropriate surrogate model form based solely on the characteristics of the data being modeled. The computational experiments revealed that there is a dependence of the surrogate modeling performance on the data characteristics. However, in general, multivariate adaptive regression spline models and Gaussian process regression yielded the most accurate predictions for approximating a surface. Random forests, support vector machine regression, and Gaussian process regression models most reliably identified the optimum locations and values when used for surrogate-based optimization.

URLhttps://www.sciencedirect.com/science/article/pii/S0263876221001465
DOI10.1016/j.cherd.2021.03.028