Control Monitoring Schemes for Monitoring Percentiles of Generalized Exponential Distribution with Hybrid Censoring

In this article, a parametric bootstrap control monitoring scheme equivalently known as control chart, is proposed for process monitoring of percentiles of the generalized exponential distribution for type-I hybrid censored data assuming in-control parameters to be unknown. Similar schemes can be d...

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Bibliographic Details
Main Authors: Shovan Chowdhury, Amarjit Kundu, Bidhan Modok
Format: Article
Language:English
Published: Instituto Nacional de Estatística | Statistics Portugal 2025-02-01
Series:Revstat Statistical Journal
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Online Access:https://revstat.ine.pt/index.php/REVSTAT/article/view/492
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Summary:In this article, a parametric bootstrap control monitoring scheme equivalently known as control chart, is proposed for process monitoring of percentiles of the generalized exponential distribution for type-I hybrid censored data assuming in-control parameters to be unknown. Similar schemes can be derived for type-I and type-II censored data as a special case of the proposed censoring scheme. Monte Carlo simulations are carried out for various combinations of percentiles, false-alarm rates and sample sizes to evaluate the in-control performance of the proposed scheme in terms of average run lengths. The out-of-control behavior and performance of the scheme is thoroughly investigated for several choices of shifts in the parameters of the distribution. Conventional Shewhart-type scheme is also proposed under the same set-up asymptotically and compared with bootstrap scheme using a skewed data set. The chart under hybrid censoring scheme is found to be more effective than the same under type-I and type-II censoring schemes in terms of magnitude and speed of detection of out-of-control signals. Finally, an application of the proposed scheme is shown from clinical practice.
ISSN:1645-6726
2183-0371