(Created page with "== Abstract == A novel approach is presented for efficiently training a neural network (NN)-based surrogate model when the training data set is to be generated using a comput...")
 
m (Scipediacontent moved page Draft Content 211213438 to Hazmi et al 2021a)
 
(No difference)

Latest revision as of 17:41, 11 March 2021

Abstract

A novel approach is presented for efficiently training a neural network (NN)-based surrogate model when the training data set is to be generated using a computationally intensive high-fidelity computational model. The approach consists in using a Gaussian Process (GP), and more specifically, its acquisition function, to adaptively sample the parameter space of interest and generate the minimum amount of training data needed to achieve the desired level of approximation accuracy. The overall approach is explained and illustrated with numerical experiments associated with the prediction of the lift-over-drag ratio for a NACA airfoil in a large, two-dimensional parameter space of free-stream Mach number and free-stream angle of attack. The obtained numerical results demonstrate the superior accuracy delivered by the proposed training over standard trainings using uniform and random samplings.

Full document

The PDF file did not load properly or your web browser does not support viewing PDF files. Download directly to your device: Download PDF document
Back to Top
GET PDF

Document information

Published on 11/03/21
Submitted on 11/03/21

Volume 1700 - Data Science and Machine Learning, 2021
DOI: 10.23967/wccm-eccomas.2020.054
Licence: CC BY-NC-SA license

Document Score

0

Views 97
Recommendations 0

Share this document

claim authorship

Are you one of the authors of this document?