Multivariate Control Charts for Individual Observations
- 1 April 1992
- journal article
- research article
- Published by Taylor & Francis in Journal of Quality Technology
- Vol. 24 (2) , 88-95
- https://doi.org/10.1080/00224065.1992.12015232
Abstract
When p correlated process characteristics are being measured simultaneously, often individual observations are initially collected. The process data are monitored and special causes of variation are identified in order to establish control and to obtain a “clean” reference sample to use as a basis in determining the control limits for future observations. One common method of constructing multivariate control charts is based on Hotelling's T2 statistic. Currently, when a process is in the start-up stage and only individual observations are available, approximate F and chi-square distributions are used to construct the necessary multivariate control limits. These approximations are conservative in this situation. This article presents an exact method, based on the beta distribution, for constructing multivariate control limits at the start-up stage. An example from the chemical industry illustrates that this procedure is an improvement over the approximate techniques, especially when the number of subgroups is small.Keywords
This publication has 11 references indexed in Scilit:
- A Use's Guide to Principal ComponentsPublished by Wiley ,1991
- Multivariate Quality Control Based on Regression-Adiusted VariablesTechnometrics, 1991
- Multivariate quality controlCommunications in Statistics - Theory and Methods, 1985
- Principal Components and Factor Analysis: Part III—What is Factor Analysis?Journal of Quality Technology, 1981
- A New Test for Multivariate Normality and HomoscedasticityTechnometrics, 1981
- Principal Components and Factor Analysis: Part II—Additional Topics Related to Principal ComponentsJournal of Quality Technology, 1981
- Principal Components and Factor Analysis: Part I—Principal ComponentsJournal of Quality Technology, 1980
- The Detection of Errors in Multivariate Data Using Principal ComponentsJournal of the American Statistical Association, 1974
- Robust Estimates, Residuals, and Outlier Detection with Multiresponse DataPublished by JSTOR ,1972
- The Generalization of Student's RatioThe Annals of Mathematical Statistics, 1931