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AuthorHaq, Abdul
AuthorKhoo, Michael B.C.
AuthorHa Lee, Ming
AuthorAbbasi, Saddam Akber
Available date2023-05-28T10:11:27Z
Publication Date2021
Publication NameJournal of Statistical Computation and Simulation
ResourceScopus
URIhttp://dx.doi.org/10.1080/00949655.2021.1894564
URIhttp://hdl.handle.net/10576/43503
AbstractThe multivariate charts are mostly used to simultaneously monitor several quality characteristics in manufacturing processes. In this study, we enhance the sensitivities of the recently proposed adaptive multivariate EWMA (AME) and weighted adaptive multivariate CUSUM (WAMC) charts with an auxiliary-information-based (AIB) estimator, namely the AIB-AME and AIB-WAMC charts, for monitoring different kinds of shifts in the mean of a multivariate normally distributed process. In addition, the variable sampling interval (VSI) feature is also incorporated into the proposed charts. The run length properties of these control charts are computed using Monte Carlo simulations. It is found that the AIB-AME and AIB-WAMC charts are uniformly and substantially more sensitive than the AME and WAMC charts, respectively. The same trend is observed when these control charts have the VSI feature incorporated into them. Real datasets are used to demonstrate the implementation of the proposed charts. 2021 Informa UK Limited, trading as Taylor & Francis Group.
SponsorThe authors are thankful to the anonymous reviewers for providing useful comments that led to an improved version of the article.
Languageen
PublisherTaylor and Francis Ltd.
Subjectadaptive multivariate charts
Auxiliary information
fixed and variable sampling intervals
Monte Carlo simulation
multivariate normal
statistical process control
TitleEnhanced adaptive multivariate EWMA and CUSUM charts for process mean
TypeArticle
Pagination2361-2382
Issue Number12
Volume Number91
dc.accessType Abstract Only


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