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Alternative optimization procedure for parameter design using neural network without SN  

Na, Myung-Whan (Department of Statistics, Chonnam University)
Kwon, Yong-Man (Department of Computer and Statistics, Chosun University)
Publication Information
Journal of the Korean Data and Information Science Society / v.21, no.2, 2010 , pp. 211-218 More about this Journal
Abstract
Taguchi has used the signal-to-noise ratio (SN) to achieve the appropriate set of operating conditions where variability around target is low in the Taguchi parameter design. Many Statisticians criticize the Taguchi techniques of analysis, particularly those based on the SN. Moreover, there are difficulties in practical application, such as complexity and nonlinear relationships among quality characteristics and design (control) factors, and interactions occurred among control factors. Neural networks have a learning capability and model free characteristics. There characteristics support neural networks as a competitive tool in processing multivariable input-output implementation. In this paper we propose a substantially simpler optimization procedure for parameter design using neural network without resorting to SN. An example is illustrated to compare the difference between the Taguchi method and neural network method.
Keywords
Design (control) factors; neural networks; optimization procedure parameter design;
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Times Cited By KSCI : 1  (Citation Analysis)
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