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The Use of Probability Limits of COM-Poisson Charts and their Applications

机译:COM-泊松图的概率极限的使用及其应用

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摘要

The conventional c and u charts are based on the Poisson distribution assumption for the monitoring of count data. In practice, this assumption is not often satisfied, which requires a generalized control chart to monitor both over-dispersed as well as under-dispersed count data. The Conway-Maxwell-Poisson (COM-Poisson) distribution is a general count distribution that relaxes the equi-dispersion assumption of the Poisson distribution and in fact encompasses the special cases of the Poisson, geometric, and Bernoulli distributions. In this study, the exact κ-sigma limits and true probability limits for COM-Poisson distribution chart have been proposed. The comparison between the 3-sigma limits, the exact κ-sigma limits, and the true probability limits has been investigated, and it was found that the probability limits are more efficient than the 3-sigma and the κ-sigma limits in terms of (i) low probability of false alarm, (ii) existence of lower control limits, and (iii) high discriminatory power of detecting a shift in the parameter (particularly downward shift). Finally, a real data set has been presented to illustrate the application of the probability limits in practice.
机译:常规的c图和u图基于Poisson分布假设,用于监视计数数据。在实践中,这个假设通常不能满足,这就需要一个通用的控制图来监视过度分散和分散不足的计数数据。 Conway-Maxwell-Poisson(COM-Poisson)分布是一种通用的计数分布,它放宽了Poisson分布的等散假设,并且实际上包含了Poisson分布,几何分布和Bernoulli分布的特殊情况。在这项研究中,提出了COM-Poisson分布图的精确κ-sigma极限和真实概率极限。研究了3-sigma极限,精确的κ-sigma极限和真实概率极限之间的比较,发现在以下方面,概率极限比3-sigma和κ-sigma极限更有效。 (i)错误警报的可能性低,(ii)控制下限的存在,以及(iii)检测到参数变化(尤其是向下变化)的辨别力很高。最后,提出了一个真实的数据集来说明概率极限在实践中的应用。

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