Article ID: | iaor20062278 |
Country: | United Kingdom |
Volume: | 37 |
Issue: | 7 |
Start Page Number: | 685 |
End Page Number: | 703 |
Publication Date: | Oct 2005 |
Journal: | Engineering Optimization |
Authors: | Ray Tapabrata, Won Kok Sung |
Keywords: | engineering, design |
Design optimization is a computationally expensive process as it requires the assessment of numerous designs and each of such assessments may be based on expensive analyses (e.g. computational fluid dynamics method or finite element based method). One way to contain the computational time within affordable limits is to use computationally cheaper approximations (surrogates) in lieu of the actual analyses during the course of optimization. This article introduces a framework for design optimization using surrogates. The framework is built upon a stochastic, zero-order population-based optimization algorithm, which is embedded with a modified elitism scheme, to ensure convergence in the actual function space. The accuracy of the surrogate model is maintained via periodic retraining and the number of data points required to create the surrogate model is identified by a