This paper presents a conceptually simple and resource efficient method for robust parameter design. The proposed method varies control factors according to an adaptive one-factor-at-a-time plan while varying noise factors using a two-level resolution III fractional factorial array. This method is compared with crossed arrays by analyzing a set of four case studies to which both approaches were applied. The proposed method improves system robustness effectively, attaining more than 80% of the potential improvement on average if experimental error is low. This figure improves to about 90% if prior knowledge of the system is used to define a promising starting point for the search. The results vary across the case studies, but, in general, both the average amount of improvement and the consistency of the results are better than those provided by crossed arrays if experimental error is low or if the system contains some large interactions involving two or more control factors. This is true despite the fact that the proposed method generally uses fewer experiments than crossed arrays. The case studies reveal that the proposed method provides these benefits by exploiting, with high probability, both control by noise interactions and also higher order effects involving two control factors and a noise factor. The overall conclusion is that adaptive one-factor-at-a-time, used in concert with factorial outer arrays, is demonstrated to be an effective approach to robust parameter design providing significant practical advantages as compared to commonly used alternatives.
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e-mail: danfrey@mit.edu
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February 2008
Research Papers
An Adaptive One-Factor-at-a-Time Method for Robust Parameter Design: Comparison With Crossed Arrays via Case Studies
Daniel D. Frey,
Daniel D. Frey
Department of Mechanical Engineering and Engineering Systems Division,
e-mail: danfrey@mit.edu
Massachusetts Institute of Technology
, 77 Massachusetts Avenue, Cambridge, MA 02139
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Nandan Sudarsanam
Nandan Sudarsanam
Department of Mechanical Engineering and Engineering Systems Division,
e-mail: nandan@mit.edu
Massachusetts Institute of Technology
, 77 Massachusetts Avenue, Cambridge, MA 02139
Search for other works by this author on:
Daniel D. Frey
Department of Mechanical Engineering and Engineering Systems Division,
Massachusetts Institute of Technology
, 77 Massachusetts Avenue, Cambridge, MA 02139e-mail: danfrey@mit.edu
Nandan Sudarsanam
Department of Mechanical Engineering and Engineering Systems Division,
Massachusetts Institute of Technology
, 77 Massachusetts Avenue, Cambridge, MA 02139e-mail: nandan@mit.edu
J. Mech. Des. Feb 2008, 130(2): 021401 (14 pages)
Published Online: December 27, 2007
Article history
Received:
July 14, 2006
Revised:
November 23, 2006
Published:
December 27, 2007
Citation
Frey, D. D., and Sudarsanam, N. (December 27, 2007). "An Adaptive One-Factor-at-a-Time Method for Robust Parameter Design: Comparison With Crossed Arrays via Case Studies." ASME. J. Mech. Des. February 2008; 130(2): 021401. https://doi.org/10.1115/1.2748450
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