Please use this identifier to cite or link to this item: http://localhost:80/xmlui/handle/123456789/150
Title: Impact of multivariate normality assumption on multivariate process capability indices
Authors: Chatterjee, Moutushi
Keywords: Capability Index
multivariate non-normal distribution
test for multivariate normality 1. Introduction Process Capability Index (PCI) is a very important yardstick for assessing the overall performance of a process. Initially, PCIs were defined assuming that the process under study has only one quality characteristic of interest. Under the assumption of normality of the distribution of the quality characteristic under consideration, the four classical PCIs for univariate processes with bilateral specification limits are Cp = USL − LSL 6σ , (1) Cpk = d − |μ − M| 3σ , (2) CONTACT Moutushi
multivariate process quality control
multivariate normal distribution
Issue Date: 5-Jan-2012
Series/Report no.: COMMUNICATIONS IN STATISTICS: CASE STUDIES, DATA ANALYSIS AND APPLICATIONS;2019, VOL. 5, NO. 4, 314–345
Abstract: Process Capability Index (PCI) is a very popular tool for assessing performance of processes (often involving a single quality characteristic). Multivariate process capability indices (MPCI) are comparativelynewto the literature and hence often involve some difficulties in practical applications. One such hurdle is multivariate normality assumption of the underlying distribution of the quality characteristics. While such assumption gives some computational as well as theoretical advantage in formulating MPCIs, often data encountered in practice do not follow multivariate normal distribution due to several reasons. Consequently, the computed values of the MPCIs may give misleading results. In the present article, we have made performance analysis of some MPCIs in the light of a dataset which has been widely used in the literature, particularly in the context of MPCIs. Most of these MPCIs were already applied to the said data in the literature and our objective is to make their comparative performance analysis. In this context, the data, though actually non-normal, is often concluded as multivariate normal by several researchers. Therefore, while making the performance analysis of the MPCIs, this aspect has also been incorporated to put emphasis on the importance of distributional assumption in a multivariate process capability analysis.
Description: Communications in Statistics: Case Studies, Data Analysis and Applications
URI: http://hdl.handle.net/123456789/150
ISSN: 2373-7484
Appears in Collections:Journal Article



Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.