The parameter design is the most emphasized measure by researchers for a new products development. It is critical for makers to achieve simultaneously in both the time‐to‐market production and the quality enhancement. However, there are difficulties in practical application, such as (1) complexity and nonlinear relationships co‐existed among the system’s inputs, outputs and control parameters, (2) interactions occurred among parameters, (3) where the adjustment factors of Taguchi’s two‐phase optimization procedure cannot be sure to exist in practice, and (4) for some reasons, the data became lost or were never available. For these incomplete data, the Taguchi methods cannot treat them well. Neural networks have a learning capability of fault tolerance and model free characteristics. These characteristics support the neural networks as a competitive tool in processing multivariable input‐output implementation. The successful fields include diagnostics, robotics, scheduling, decision‐making, prediction, etc. This research is a case study of spherical annealing model. In the beginning, an original model is used to pre‐fix a model of parameter design. Then neural networks are introduced to achieve another model. Study results showed both of them could perform the highest spherical level of quality.
Article navigation
17 April 2005
Review Article|
April 17 2005
Robust Parameter Design via Taguchi’s Approach and Neural Network
Jeh‐Hsin Tsai;
Jeh‐Hsin Tsai
Ph.D Candidate, Department of Business Administration, National Sun Yat‐Sen University, Kaohsiung, Taiwan, ROC
Search for other works by this author on:
Iuan‐Yuan Lu
Iuan‐Yuan Lu
President of the CSQ & Professor, Department of Business Administration, National Sun Yat‐Sen University, Kaohsiung, Taiwan, ROC
Search for other works by this author on:
Publisher: Emerald Publishing
Online ISSN: 2054-555X
Print ISSN: 1598-2688
© Emerald Group Publishing Limited
2005
Asian Journal on Quality (2005) 6 (1): 109–118.
Citation
Tsai J, Lu I (2005), "Robust Parameter Design via Taguchi’s Approach and Neural Network". Asian Journal on Quality, Vol. 6 No. 1 pp. 109–118, doi: https://doi.org/10.1108/15982688200500009
Download citation file:
Suggested Reading
Neural network procedures for experimental analysis with censored data
International Journal of Quality Science (September,1998)
Applying neural network approach to achieve robust design for dynamic quality characteristics
International Journal of Quality & Reliability Management (August,1998)
Selection of optimal parameters in gas‐assisted injection moulding using a neural network model and the Taguchi method
International Journal of Quality Science (June,1997)
Construction principle of NES shock absorber and its application in frame structure
Multidiscipline Modeling in Materials and Structures (January,2020)
A tubular linear machine with dual Halbach array
Engineering Computations (February,2014)
Related Chapters
Physics-informed machine learning: Applications in smart transportation
Machine Learning in Civil Engineering and Infrastructure Development: A Practitioner's Handbook
DIFFUSION COEFFICIENT OF CHLORIDE IONS UNDER SIMULATED CONDITIONS
Cement Combinations for Durable Concrete: Proceedings of the International Conference held at the University of Dundee, Scotland, UK on 5–7 July 2005
The Dark Side of Artificial Intelligence in Retail Innovation
Retail Futures: The Good, the Bad and the Ugly of the Digital Transformation
Recommended for you
These recommendations are informed by your reading behaviors and indicated interests.
