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Economic design of variable sampling interval T~2 control charts—A hybrid Markov Chain approach with genetic algorithms

机译:可变采样间隔T〜2控制图的经济设计-基于遗传算法的混合马尔可夫链方法

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Hotelling's T~2 chart is the most widely used multivariate procedure for two or more related quality characteristics, but it is slow in detecting small process shifts. Recently, the variable sampling interval (VSI) control scheme in which the sampling interval between two success sampling points is varied based on the preceding T~2 value has been shown to provide an increase to the detecting efficiency of the original T~2 chart. In this paper a method is proposed to conduct the economic design of the VSI T~2 chart when the in-control process mean vector and covariance matrix are unknown. It is assumed that only one assignable cause of variation exists and the time between occurrences is exponentially distributed. Accordingly, the Markov Chain approach is allowable to develop a cost model. In applying genetic algorithms to minimize the cost function, the optimal values of sample size, sampling interval lengths, upper control limit and warning limit used to choose one of the sampling interval lengths can be determined. Variable sampling interval and original T~2 charts are compared with respect to the expect cost per unit time. Sensitivity analysis on the quantity of initial samples to estimate for in-control process mean vector and covariance matrix is also presented.
机译:Hotelling的T〜2图表是用于两个或多个相关质量特征的最广泛使用的多元过程,但是在检测小的过程偏移时速度较慢。近来,已经示出了可变采样间隔(VSI)控制方案,在该方案中,两个成功采样点之间的采样间隔基于先前的T〜2值而改变,以提高原始T〜2图的检测效率。本文提出了一种在控制中均值向量和协方差矩阵未知的情况下对VSI T〜2图进行经济设计的方法。假定仅存在一个可指定的变化原因,并且出现之间的时间呈指数分布。因此,可以使用马尔可夫链方法来开发成本模型。在应用遗传算法来最小化成本函数时,可以确定用于选择采样间隔长度之一的样本大小,采样间隔长度,控制上限和警告极限的最佳值。将可变采样间隔和原始T〜2图与每单位时间的预期成本进行比较。还提出了对初始样本数量的敏感性分析,以估计控制中过程的平均向量和协方差矩阵。

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