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Economic and economic-statistical designs of MEWMA control charts—a hybrid Taguchi loss, Markov chain, and genetic algorithm approach

机译:MEWMA控制图的经济和经济统计设计— Taguchi损失,Markov链和遗传算法的混合

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Economic design of multivariate exponentially weighted moving average (MEWMA) control charts for monitoring the process mean vector involves determining economically the optimum values of the three control parameters: the sample size, the sampling interval between successive samples, and the control limits or the critical region of the chart. In the economic-statistical design, constraints (including the requirements of type I error probability and power) are added such that the statistical property of the chart is satisfied. In this paper, using the multivariate Taguchi loss approach, the Lorenzen–Vance (Technometrics 28:3-10, 1) cost function of implementing the control chart is extended to include intangible external costs along with the in-control average run length (ARL0) and out-of-control average run length (ARL1) as statistical constraints. A Markov chain model is then developed to estimate the ARLs and a genetic algorithm whose parameters are optimally obtained by design of experiments is used to solve the model and estimate the optimum values of the control chart parameters. A numerical example and a sensitivity analysis are provided to illustrate the solution procedure and to investigate the effects of cost parameters on the optimal designs. The results show that the proposed economic-statistical design of the chart has better statistical properties in comparison to the economic design while the difference between the costs is negligible.
机译:用于监控过程均值向量的多元指数加权移动平均值(MEWMA)控制图的经济设计涉及经济地确定三个控制参数的最佳值:样本大小,连续样本之间的采样间隔以及控制极限或关键区域图表。在经济统计设计中,添加了约束条件(包括I类错误概率和功效的要求),以便满足统计图的统计特性。在本文中,使用多元Taguchi损失方法,将实施控制图的Lorenzen-Vance(Technometrics 28:3-10,1)成本函数扩展为包括无形外部成本以及控制中平均运行时间(ARL) 0 )和失控平均游程长度(ARL 1 )作为统计约束。然后,开发一个马尔可夫链模型来估计ARL,并使用遗传算法来优化模型,并通过控制实验来优化参数,该遗传算法通过实验设计来获得参数。提供了一个数值示例和一个敏感性分析来说明求解过程,并研究成本参数对最佳设计的影响。结果表明,与经济设计相比,拟议的图表经济统计设计具有更好的统计属性,而成本之间的差异可以忽略不计。

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