Dynamic Robust Parameter Design Using Response Surface Methodology based on Generalized Linear Model

Kosuke Oyama (1), Ohkubo Masato (2), Yasushi Nagata (3)
(1) Waseda University, Japan,
(2) Department of Business Administration, Toyo University, Tokyo, Japan, Japan,
(3) Department of Industrial and Management Systems Engineering, Waseda University, Tokyo, Japan, Japan

Abstract

Purpose: When designing an input-output system susceptible to noise, engineers assume a functional relation between the input and the output. The Taguchi method, which uses a dynamic, robust parameter design (RPD) to evaluate the robustness of the input-output relation against noise, is employed. This study aims to address extending the scope of use of a dynamic RPD.


Methodology/Approach: A target system in a typical dynamic RPD can be interpreted as one in which the relation between the input and the output is a linear model, and the output error follows a normal distribution. However, an actual system often does not conform to this premise. Therefore, we propose a new analysis approach that can realize a more flexible system design by applying a response surface methodology (RSM) based on a generalized linear model (GLM) to dynamic RPD.


Findings: The results demonstrate that 1) a robust solution can be obtained using the proposed method even for a typical dynamic RPD system or an actual system, and 2) the target function can be evaluated using an adjustment parameter.


Research Limitation/implication: Further analysis is required to determine which factor(s) in the estimated process model largely contribute(s) to changes in the adjustment parameter.


Originality/Value of paper: The applicability of typical dynamic RPD is limited. Hence, this study’s analytical process provides engineers with greater design flexibility and deeper insights into dynamic systems across various contexts.


Category: Research paper


Keywords: robust parameter design; dynamic system; generalized linear model; response surface methodology; Taguchi method

Full text article

Generated from XML file

References

Enkawa, T. and Miyakawa, M., 1992. SQC Theory and Practice. Tokyo, Japan: Asakura Publishing.

Kawamura, T. and Takahashi, T., 2013. A Statistical Modeling and Optimization of Dynamic Parameter Design. Journal of the Japanese Society for Quality Control, [e-journal] 43(3), pp.364-371. https://doi.org/10.20684/quality.43.3_364.

Kume, S. and Nagata, Y., 2013. Robust Parameter Design for Signal-Response Systems Using Generalized Linear Model. Asian Network for Quality Congress 2013, The Swiss Hotel Le Concorde Hotel, Bangkok, 16-18 October 2013.

Lee, Y. and Nelder, J. A., 1998. Generalized Linear Models for the Analysis of Quality-improvement Experiments. The Canadian Journal of Statistics, [e-journal] 26(1), pp.95-105. https://doi.org/10.2307/3315676.

Lee, Y. and Nelder, L. A., 2003. Robust Design via Generalized Linear Models. Journal of Quality Technology; [e-journal] 35(1), pp.2-12. https://doi.org/10.1080/00224065.2003.11980187.

Mikami, E. and Yano, H., 2004. Studies of a Method of Detecting Thermoresistant Bacteria. Journal of Quality Engineering Society, [e-journal] 12(6), pp.37-44. https://doi.org/10.18890/qes.12.6_37.

Myers, R. H. and Montgomery, D. C., 1997. A Tutorial on Generalized Linear Models. Journal of Quality Technology, [e-journal] 29(3), pp.274-291. https://doi.org/10.1080/00224065.1997.11979769.

Myers, W. R., Brenneman, W. A. and Myers, R. H., 2005. A Dual-Response Approach to Robust Parameter Design for a Generalized Linear Model. Journal of Quality Technology, [e-journal] 37(2), pp.130-138. https://doi.org/10.1080/00224065.2005.11980311.

Nagata, Y., 2009. Statistical Quality Control - A Step-by-Step Guidebook. Tokyo, Japan: Asakura Publishing.

Nair, V. N., 1992. Taguchi’s Parameter Design: A Panel Discussion. Technometrics, [e-journal] 34(2), pp.127-161. https://doi.org/10.2307/1269231.

Nelder, J. A. and Wedderburn, R. W. M., 1972. Generalized Linear Models. Journal of the Royal Statistical Society, [e-journal] Series A, 135(3), pp.370-384. https://doi.org/10.2307/2344614.

Smyth, G. K., 1989. Generalized Linear Models with Varying Dispersion. Journal of the Royal Statistical Society, Series B, [e-journal] 51(1), pp.47-60. https://doi.org/10.1111/J.2517-6161.1989.TB01747.X.

Smyth, G. K. and Verbyla, A. P., 1999. Adjusted Likelihood Methods for Modelling Dispersion in Generalized Linear Models. Environmetrics, [e-journal] 10(6), pp.696-709. https://doi.org/10.1002/(SICI)1099-095X(199911/12)10:6<695::AID-ENV385>3.0.CO;2-M.

Tatebayashi, K., 2004. Introduction to Taguchi Method. Tokyo, Japan: JUSE Press.

Yoshino, S., 1995. Optimization of Bean Sprouting Condition by Parameter Design. Journal of Quality Engineering Society, [e-journal] 3(2), pp.17-22. https://doi.org/10.18890/qes.3.2_17.

Authors

Kosuke Oyama
whbcbr1000rr@akane.waseda.jp (Primary Contact)
Ohkubo Masato
Yasushi Nagata
Author Biographies

Ohkubo Masato, Department of Business Administration, Toyo University, Tokyo, Japan

Masato Ohkubo is an Associate Professor in the Department of Business Administration at Toyo University. He received a Doctor of Engineering from Waseda University. His main research interests are the quality statistics.

Yasushi Nagata, Department of Industrial and Management Systems Engineering, Waseda University, Tokyo, Japan

Yasushi Nagata is a Professor in the Department of Industrial and Management Systems at the University of Waseda. He holds a Ph.D. in engineering from Osaka University. His research interests are in the area of statistics. He was awarded the Deming Prize for Individuals in November 2019 for his many accomplishments in the field of quality control.

Oyama, K., Masato, O., & Nagata, Y. (2024). Dynamic Robust Parameter Design Using Response Surface Methodology based on Generalized Linear Model. Quality Innovation Prosperity, 28(2). https://doi.org/10.12776/qip.v28i2.2021

Article Details

Similar Articles

<< < 11 12 13 14 15 16 17 18 19 20 > >> 

You may also start an advanced similarity search for this article.