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Multi-Objective Approximation for the Optimal Design of Control Charts with Variable Parameters using the Taguchi Loss Function

机译:使用田口损失函数的可变参数控制图最佳设计的多目标逼近

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This paper considers an auto-correlated production process represented using a first-order auto-regressive model. During the period when the process is under statistical control, the mean values are contained in their objective value; after the occurrence of an assignable cause, a shift is produced. To detect the occurrence of the assignable cause, we propose a model of control charts with variable parameters to monitor the process and issue warning signals. The technical and economic success of implementing this tool depends on the adequate selection of parameters for the chart such as sample size, sample interval and the coefficient of the control limits. A cost-based model based on the Taguchi loss function was used to select the parameters and multi-objective optimization techniques on the response surfaces to find the optimal levels to minimize the cost and maximize the statistical potential of the chart. The fitting of the multiple regression models was necessary to assess the statistical and economic performance. Subsequently, we constructed a desirability function to simultaneously integrate the statistical and economic design. We identified and quantified the most significant design parameters and the effect of repetition. Finally, we reviewed the impact of the auto-correlation coefficient on the optimal selection of parameters. The results demonstrated that when considering an economic and statistical objective, the sample size is a significant variable in the monitoring of the process.
机译:本文考虑了使用一阶自回归模型表示的自相关生产过程。在过程处于统计控制期间,平均值包含在其目标值中;发生可分配原因后,便会产生偏移。为了检测可分配原因的发生,我们提出了一个带有可变参数的控制图模型,以监视过程并发出警告信号。实现该工具的技术和经济上的成功取决于用于图表的参数,例如样本大小,样本间隔和控制限系数适当选择。使用基于田口损失函数的基于成本的模型来选择响应面上的参数和多目标优化技术,以找到最佳水平以最小化成本并最大化统计图的潜力。多元回归模型的拟合对于评估统计和经济绩效是必要的。随后,我们构造了一个期望函数,以同时整合统计和经济设计。我们确定并量化了最重要的设计参数和重复效果。最后,我们回顾了自相关系数对参数最佳选择的影响。结果表明,在考虑经济和统计目标时,样本量是过程监控中的重要变量。

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