Marshall-Olkin逆对数logistic分布的过程能力指标

IF 0.7 Q2 MATHEMATICS
Olubisi Lawrence Aako, Kayode Samuel Adekeye, Johnson Ademola Adewara, Jean-Claude Malela-Majika
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引用次数: 0

摘要

过程能力分析是质量管理中的一个重要工具,它使组织能够评估和增强其过程。现实世界的数据大多是非正态的,它们经常偏离正态的假设。正常过程的过程能力指数(pci)的估计量不足以表征非正常过程,并且可能给出误导性的结果。Marshall-Olkin逆对数逻辑(MO-ILL)分布是一种灵活的分布,可以有效地模拟显示正偏度、不对称和重尾的数据。本文在假设过程处于统计控制状态的情况下,推导了基于MO-ILL分布的过程能力指数。提出了基于MO-ILL均值和方差和MO-ILL分位数的两种pca。利用两个真实生活数据和MO-ILL分布生成的数据,将所提出的pci与传统pci和基于百分位数的pci进行了比较。此外,还研究了样本大小和MO-ILL分布参数对PCI措施的影响。结果表明,基于MO-ILL均值、方差和MO-ILL分位数的pci值分别低于传统的pci值和基于百分位数的pci值。这表明所开发的基于MO-ILL分布的方法具有狭窄的误差范围,并且更适合于评估倾斜过程的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Process capability indices for Marshall–Olkin inverse log-logistic distribution

Process capability analysis is a vital tool in quality management that enables organizations to evaluate and enhance their processes. Real-world data are mostly non-normal, they often deviate from the assumption of normality. The estimators of process capability indices (PCIs) for normal processes are not sufficient to characterize non-normal processes and can give misleading results. The Marshall-Olkin inverse log-logistic (MO-ILL) distribution is a flexible distribution that can effectively model data exhibiting positive skewness, asymmetry and heavy tails. In this paper, we derived the process capability indices (PCIs) based on the MO-ILL distribution when the process is assumed to be in a state of statistical control. Two PCIs based on MO-ILL mean and variance, and MO-ILL quantiles are proposed. The proposed PCIs were compared with the traditional PCIs and percentile-based PCIs using two real life data and data generated from MO-ILL distribution. Moreover, the effect of the sample size and parameters of the MO-ILL distribution on the PCI measures is also investigated. The results showed that PCIs values based on the proposed MO-ILL mean and variance, and MO-ILL quantiles are respectively lower and better than the traditional PCIs and percentile-based PCIs. This is an indication that MO-ILL distribution-based methods developed have narrow margin of error and are more appropriate in assessing the performance of a skewed process.

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来源期刊
Afrika Matematika
Afrika Matematika MATHEMATICS-
CiteScore
2.00
自引率
9.10%
发文量
96
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