Startseite The 𝑛𝑝-Chart with 3-𝜎 Limits and the ARL-Unbiased 𝑛𝑝-Chart Revisited
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The 𝑛𝑝-Chart with 3-𝜎 Limits and the ARL-Unbiased 𝑛𝑝-Chart Revisited

  • Manuel Cabral Morais ORCID logo EMAIL logo , Philipp Wittenberg ORCID logo und Camila Jeppesen Cruz
Veröffentlicht/Copyright: 27. Oktober 2022
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Abstract

In the statistical process control literature, counts of nonconforming items are frequently assumed to be independent and have a binomial distribution with parameters ( n , p ) , where 𝑛 and 𝑝 represent the fixed sample size and the fraction nonconforming. In this paper, the traditional n p -chart with 3-𝜎 control limits is reexamined. We show that, even if its lower control limit is positive and we are dealing with a small target value p 0 of the fraction nonconforming ( p ) , this chart average run length (ARL) function achieves a maximum to the left of p 0 . Moreover, the in-control ARL of this popular chart is also shown to vary considerably with the fixed sample size 𝑛. We also look closely at the ARL function of the ARL-unbiased n p -chart proposed by Morais [An ARL-unbiased n p -chart, Econ. Qual. Control 31 (2016), 1, 11–21], which attains a pre-specified maximum value in the in-control situation. This chart triggers a signal at sample 𝑡 with probability one if the observed number of nonconforming items, x t , is beyond the lower and upper control limits (𝐿 and 𝑈), probability γ L (resp. γ U ) if x t coincides with 𝐿 (resp. 𝑈). A graphical display for the ARL-unbiased n p -chart is proposed, taking advantage of the qcc package for the statistical software R. Furthermore, as far as we have investigated, its control limits can be obtained using three different search algorithms; their computation times are thoroughly compared.

MSC 2010: 62P30

Award Identifier / Grant number: UIDB/04621/2020

Award Identifier / Grant number: UIDP/04621/2020

Funding statement: The first author acknowledges the financial support of the Portuguese FCT – Fundação para a Ciência e a Tecnologia, through the projects UIDB/04621/2020 and UIDP/04621/2020 of CEMAT/IST-ID (Center for Computational and Stochastic Mathematics), Instituto Superior Técnico, Universidade de Lisboa.

Acknowledgements

We are greatly indebted to the referee(s) who selflessly devoted his/her(their) time to review our work.

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Received: 2022-08-01
Accepted: 2022-10-02
Published Online: 2022-10-27
Published in Print: 2022-12-01

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