This content is not included in
your SAE MOBILUS subscription, or you are not logged in.
Experiments Planning for Robust Design through CAE
Technical Paper
2006-01-3518
ISSN: 0148-7191, e-ISSN: 2688-3627
This content contains downloadable datasets
Annotation ability available
Sector:
Language:
English
Abstract
This paper presents a systematic approach for designing an experiment in situations where expensive and time consuming computer simulations are used to evaluate product characteristics. In the presence of many design parameters, the critical step is to find the best possible experimental set up with minimum number of simulations. Usually in such situations, designers use their intuition and experience to carry out a number of simulation runs and choose the design that gives better performance. This intuitive approach can be considerably improved by using statistical methods. “Classical experimental designs” were compared with “space filling designs” in terms of their results and requirements. A typical clutch booster bracket is used as an example to demonstrate the methodology.
Authors
Topic
Citation
Sushma, Y., Sridhar, M., and Dharmadhikari, A., "Experiments Planning for Robust Design through CAE," SAE Technical Paper 2006-01-3518, 2006, https://doi.org/10.4271/2006-01-3518.Data Sets - Support Documents
Title | Description | Download |
---|---|---|
Unnamed Dataset 1 | ||
Unnamed Dataset 2 |
Also In
Advanced Concepts in Product Engineering, Design and Innovation and Lifecycle Management
Number: SP-2056; Published: 2006-10-31
Number: SP-2056; Published: 2006-10-31
References
- Booker, A. J. 1998 September 2 4 “Design and analysis of computer experiments” 7 th AIAA/USAF/NASA/ISSMO symposium on multidisciplinary analysis & optimization St. Louis, MO AIAA 1 118 128
- Box, G. E. Hunter W. G. Hunter J. S. 1978 Statistics for experimenters: An introduction to design, data analysis and model building New York John Wiley
- Fang, K. T. Wang, Y. 1994 Number-theoretic methods in Statistics Chapman & Hall New York
- Fang, K. T. Lin, D. K. J. Winter, P. Zhang, Y. 2000 “Uniform Design: Theory and Application” Technometrics 42 237 248
- Kelton, W. D. 2000 “Experimental Design for simulation” In proceedings of the 2000 winter Simulation Conference Joines J. A. Barton R. R. Kang K. Fishwick P. A.
- Koehler, J. R. Owen, A. B. 1996 Computer Experiments Handbook of Statistics Ghosh, S. Rao, C. R. Elsevier Science New York 261 308
- Montogomery, D. C. 1997 Design and analysis of experiments 4th New York John Wiley
- NIST/SEMATECH 2006 e-Handbook of statistical methods http://www.itl.nist.gov/div898/handbook/
- Sacks, J. Welch, W. J. Mitchell, T. J. H. P. Wynn, 1989 “Design and Analysis of Computer Experiments” Statistical Science 4 409 435
- Sanchez, S. M. Lucas T. W. 2002 “Exploring the world of agent-based simulations”: Simple models, complex analysis In Proceedings of the 2002 Winter Simulation Conference Yucesan E. Chen C. H. Snowdon J. L. Charnes J. 116 126 Piscataway, New Jersey Institute of Electrical and Electronics
- Sanchez, S. M. 2005 Work smarter, not harder: Guidelines for Designing Simulation Experiments In proceedings of the 2005 Winter Simulation Conference Kuhl M. E. Steiger N. M. Armstrong F. B. Joines J. A.
- Wu, C. F. J. Hamada, M. 2002 Experiments: Planning, Analysis and Parameter Design Optimization John Wiley