Efficient control chart calibration by simulated stochastic approximation

G. Capizzi, G. Masarotto
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引用次数: 14

Abstract

ABSTRACT The accurate determination of control limits is crucial in statistical process control. The usual approach consists in computing the limits so that the in-control run-length distribution has some desired properties; for example, a prescribed mean. However, as a consequence of the increasing complexity of process data, the run-length of many control charts discussed in the recent literature can be studied only through simulation. Furthermore, in some scenarios, such as profile and autocorrelated data monitoring, the limits cannot be tabulated in advance, and when different charts are combined, the control limits depend on a multidimensional vector of parameters. In this article, we propose the use of stochastic approximation methods for control chart calibration and discuss enhancements for their implementation (e.g., the initialization of the algorithm, an adaptive choice of the gain, a suitable stopping rule for the iterative process, and the advantages of using multicore workstations). Examples are used to show that simulated stochastic approximation provides a reliable and fully automatic approach for computing the control limits in complex applications. An R package implementing the algorithm is available in the supplemental materials.
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模拟随机逼近的有效控制图校准
在统计过程控制中,控制限的准确确定至关重要。通常的方法包括计算极限,使控制下的游程分布具有一些期望的性质;例如,一个规定的平均值。然而,由于过程数据日益复杂,最近文献中讨论的许多控制图的运行长度只能通过模拟来研究。此外,在某些场景中,例如概要文件和自相关数据监控,不能预先将限制制表,并且当不同的图表组合在一起时,控制限制依赖于参数的多维向量。在本文中,我们建议使用随机逼近方法进行控制图校准,并讨论其实现的增强功能(例如,算法的初始化,增益的自适应选择,迭代过程的合适停止规则,以及使用多核工作站的优势)。实例表明,模拟随机逼近为复杂应用中的控制极限计算提供了一种可靠的全自动方法。在补充材料中提供了实现该算法的R包。
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来源期刊
IIE Transactions
IIE Transactions 工程技术-工程:工业
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审稿时长
4.5 months
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