3 research outputs found

    A semi-empirical Bayesian chart to monitor Weibull percentiles

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    This paper develops a Bayesian control chart for the percentiles of the Weibull distribution, when both its in-control and out-of-control parameters are unknown. The Bayesian approach enhances parameter estimates for small sample sizes that occur when monitoring rare events as in high-reliability applications or genetic mutations. The chart monitors the parameters of the Weibull distribution directly, instead of transforming the data as most Weibull-based charts do in order to comply with their normality assumption. The chart uses the whole accumulated knowledge resulting from the likelihood of the current sample combined with the information given by both the initial prior knowledge and all the past samples. The chart is adapting since its control limits change (e.g. narrow) during the Phase I. An example is presented and good Average Run Length properties are demonstrated. In addition, the paper gives insights into the nature of monitoring Weibull processes by highlighting the relationship between distribution and process parameters.Comment: 21 pages, 3 figures, 5 table

    Simulation et analyse paramétrique de méthodes de prise de décision dans le cadre de la maintenance conditionnelle

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    Conception des modèles de simulation des méthodes de prise de décision -- Choix des niveaux des paramètres et plan d'expériences -- Analyse statistique des effets du changement des niveaux des paramètres sur les erreurs des méthodes de prise de décision

    Modeling and designing control chart for monitoring time-between events data

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    Ph.DDOCTOR OF PHILOSOPH
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