ARTÍCULO
TITULO

Comparisons of multivariate GR&R methods using bootstrap confidence interval

Rogério Santana Peruchi    
Helio Maciel Junior    
Nilson José Fernandes    
Pedro Paulo Balestrassi    
Anderson Paulo Paiva    

Resumen

This paper aimed to compare the performance of multivariate GR&R (gage repeatability and reproducibility) studies based on PCA (principal component analysis) and Manova (multivariate analysis of variance) methods. To estimate the multivariate gauge index, geometric and arithmetic means have been implemented with and without weighting strategies. Bootstrap confidence interval based on BCa (bias-corrected and accelerated) method has been adopted to determine multivariate gauge index adequacy. This confidence interval was calculated for the mean of univariate gauge indices estimated from each quality characteristic. The result analyses have shown that weighted approaches provided the best estimates of gauge index in multivariate GR&R studies. 

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