Novel Tool for Selecting Surrogate Modeling Techniques for Surface Approximation | AIChE

Novel Tool for Selecting Surrogate Modeling Techniques for Surface Approximation

TitleNovel Tool for Selecting Surrogate Modeling Techniques for Surface Approximation
Publication TypeJournal Article
Year of Publication2021
AuthorsWilliams, B, Cremaschi, S
Secondary AuthorsTürkay, M, Gani, R
Journal31 European Symposium on Computer Aided Process Engineering
Volume50
Pagination451–456
Date Publishedjan
KeywordsBP5Q4, process design/optimization, Surface approximation, surrogate model
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. Many techniques have been developed for surrogate modeling; however, a systematic method for selecting suitable techniques for an application remains an open challenge. This work compares the performance of eight surrogate modeling techniques for approximating a surface over a set of simulated data. Using the comparison results, we constructed a Random Forest based tool to recommend the appropriate surrogate modeling technique for a given dataset using attributes calculated only from the available input and output values. The tool identifies the appropriate surrogate modeling techniques for surface approximation with an accuracy of 87% and a precision of 86%. Using the tool for surrogate model form selection enables computational time savings by avoiding expensive trial-and-error selection methods.

URLhttps://www.sciencedirect.com/science/article/pii/B9780323885065500711
DOI10.1016/B978-0-323-88506-5.50071-1