Many problems in industrial quality control involve n measurements on p process variables Xn;p. Generally, we need to know how the quality characteris- tics of a product behavior as process variables change. Nevertheless, there may be two problems: the linear hypothesis is not always respected and q quality variables Yn;q are not measured frequently because of high costs. B-spline transformation remove nonlinear hypothesis while principal component analysis with linear con- straints (CPCA) onto subspace spanned by column X matrix. Linking Yn;q and Xn;p variables gives us information on the Yn;q without expensive measurements and o®-line analysis. Finally, there are few uncorrelated latent variables which con- tain the information about the Yn;q and may be monitored by multivariate control charts. The purpose of this paper is to show how the conjoint employment of di®erent statistical methods, such as B-splines, Constrained PCA and multivariate control charts allow a better control on product or service quality by monitoring directly the process variables. The proposed approach is illustrated by the discussion of a real problem in an industrial process.
Nonlinear constrained principal component analysis for the multivariate process control / M., Gallo; D'Ambra, Luigi. - STAMPA. - (2008), pp. 193-200.
Nonlinear constrained principal component analysis for the multivariate process control.
D'AMBRA, LUIGI
2008
Abstract
Many problems in industrial quality control involve n measurements on p process variables Xn;p. Generally, we need to know how the quality characteris- tics of a product behavior as process variables change. Nevertheless, there may be two problems: the linear hypothesis is not always respected and q quality variables Yn;q are not measured frequently because of high costs. B-spline transformation remove nonlinear hypothesis while principal component analysis with linear con- straints (CPCA) onto subspace spanned by column X matrix. Linking Yn;q and Xn;p variables gives us information on the Yn;q without expensive measurements and o®-line analysis. Finally, there are few uncorrelated latent variables which con- tain the information about the Yn;q and may be monitored by multivariate control charts. The purpose of this paper is to show how the conjoint employment of di®erent statistical methods, such as B-splines, Constrained PCA and multivariate control charts allow a better control on product or service quality by monitoring directly the process variables. The proposed approach is illustrated by the discussion of a real problem in an industrial process.File | Dimensione | Formato | |
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