Total Quality Science
Online ISSN : 2189-3195
ISSN-L : 2189-3195
Robust parameter design with covariates of multiple noise factors
Kensuke GotoHironao SatoMasami MiyakawaYasushi Nagata
Author information
JOURNAL FREE ACCESS

2015 Volume 1 Issue 2 Pages 77-88

Details
Abstract

The intent of robust parameter design is to make a system insensitive to noise factors by choosing optimum levels for the controllable factors. This is conducted by finding the interactions between noise factors and control factors. In general, it is necessary to control the levels of noise factors; however, there are some that cannot be controlled. On the other hand, there are some which can be observed as covariates.
Hirano and Miyakawa (2007) proposed a method based on linear regression to analyze the interactions between a single noise factor and the control factors, when the noise factor is observed as a covariate.
This paper discusses robust parameter designs when multiple noise factors are observed as covariates. We propose two extensions of the Hirano and Miyakawa method: extended methods 1 and 2. We perform Monte Carlo simulations under several data models to estimate the accuracy of these methods. It is shown that the extended methods are able to analyze the interactions between each of the control factors and the noise factors, when multiple noise factors are observed as covariates. Since the noise factors are combined in extended method 1, it cannot detect which noise factor influences the control factors. On the other hand, extended method 2 distinguishes between noise factors, and thus it can detect the interactions between the control factors and each of the noise factors.

Content from these authors
© 2015 The Japanese Society for Quality Control
Previous article Next article
feedback
Top