The use of dimensional analysis to augment design of experiments for optimization and robustification
Authors: Lacey, Damien1; Steele, Clint1
Source: Journal of Engineering Design, Volume 17, Number 1, Number 1/January 2006 , pp. 55-73(19)
Publisher: Taylor and Francis Ltd
Key:
- Free Content
- New Content
- Subscribed Content
- Free Trial Content
Abstract:
Optimization can be a time-consuming and demanding process when an analytical model of the system of interest cannot be developed. The problem is even more extreme when the robustification of the system is desired. Under such circumstances the design engineer will typically resort to design of experiments (DOE) or finite element analysis/computational fluid dynamics or some combination. Each can be time consuming and demanding. It is shown in this paper that by combining dimensional analysis with DOE it is possible to generate a near-exact surrogate model of a system empirically. This can be done with a significantly reduced number of experiments when compared with traditional DOE techniques. The approximation is sufficiently accurate to be optimized or robustified using methods traditionally suited to analytical models. A strategy designed to help the design engineer take full advantage of this approach is presented.Keywords: Surrogate modelling; DOE; Dimensional analysis; Robustification; Optimization
Document Type: Research article
DOI: 10.1080/09544820500275594
Affiliations: 1: Swinburne University of Technology, Australia
Key:
- Free Content
- New Content
- Subscribed Content
- Free Trial Content

Click here for Page Help