监测过程位置和可变性变化的非参数变化点方法

R. Afolabi, P. A. Osanaiye, O. Akpa
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引用次数: 4

摘要

在统计过程控制中,过程是否处于控制状态以及过程位移在失控过程中的位置检测是关键的研究问题。如果满足正态性假设,则在检测平均值和/或方差的移动方面取得了进展。然而,在现实生活中,常态性假设往往不被满足。我们提出了一种非参数lepage型变化点(LCP)控制图,用于在非正态性下联合检测均值和方差的过程移位。将该方法与基于广义似然比(GLR)的方法进行了比较。过程数据按照正态分布和拉普拉斯分布进行模拟。在考虑的分布下,使用评估的平均运行长度来评估和呈现LCP和GLR的性能。LCP在正态分布中与GLR竞争有利。然而,在考虑重尾分布的情况下,LCP优于GLR。对于底层发行版通常未知的短期情况,我们推荐使用新方法。
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Non-parametric change-point approach for monitoring shifts in process location and variability
In statistical process control, detecting if the process is in control and the position of shift in an out-of-control process are critical research problems. If the normality assumption is satisfied, work has advanced in detecting shifts in mean and/or variance. However, the normality assumption is often not satisfied in many real life situations. We suggest a non-parametric Lepage-type change-point (LCP) control chart for jointly detecting process shifts in mean and variance, under non-normality. A comparison between our proposed method and a generalised likelihood ratio (GLR)-based method was made. Process data were simulated following normal and Laplace distributions. The performances of LCP and GLR were assessed and presented, using evaluated average run lengths, under the distributions considered. The LCP competed favourably with the GLR in a normal distribution. However, LCP outperformed GLR under the heavy-tailed distribution considered. We recommend the new approach for short-run situations where the underlying distributions are usually unknown.
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来源期刊
International Journal of Quality Engineering and Technology
International Journal of Quality Engineering and Technology Engineering-Safety, Risk, Reliability and Quality
CiteScore
0.40
自引率
0.00%
发文量
1
期刊介绍: IJQET fosters the exchange and dissemination of research publications aimed at the latest developments in all areas of quality engineering. The thrust of this international journal is to publish original full-length articles on experimental and theoretical basic research with scholarly rigour. IJQET particularly welcomes those emerging methodologies and techniques in concise and quantitative expressions of the theoretical and practical engineering and science disciplines.
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