一种利用不稳定指数进行过程控制的新方法

Jeffrey Weintraub, S. Warrick
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引用次数: 1

摘要

稳健的统计过程控制(SPC)方法的优点早已确立。针对大量的SPC规则组合、流程和高昂的控制成本,不稳定性指数(ISTAB)被提出作为管理这些复杂性的工具。ISTAB将有限的资源集中在关键问题上,并为制造业务的稳定性提供了一个窗口。ISTAB通过比较观察到的平均运行长度(OARL)和预期运行长度(ARL)来利用流程的统计特性,从而产生一个称为ISTAB索引的间隙值。ISTAB索引有三种特征行为,它们表明了SPC实例中的缺陷。案例1:观察到的平均运行长度相对于预期过长。ISTAB > 0表示限制可能太宽。案例2:观察到的平均运行长度与预期一致。ISTAB接近零表明过程是稳定的。案例3:观察到的平均运行长度相对于预期而言非常短。ISTAB < 0表示限制太紧,过程不稳定或两者兼而有之。行程长度的概率分布是建立ARL的基础。我们证明了几何分布是跨各种规则集的运行长度的良好近似值。过长的运行长度与SPC实例中的一种缺陷有关;异常短的运行长度与另一个相关联。引入抽样分布作为一种量化观察到的过长和过短运行长度的方法。本文提供了这些运行长度的动作限制的详细指导。ISTAB作为一种统计方法,有利于不稳定性的自动检测。本文提出了一个基于ISTAB的管理系统,作为对传统SPC方法的改进。
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A new approach to process control using Instability Index
The merits of a robust Statistical Process Control (SPC) methodology have long been established. In response to the numerous SPC rule combinations, processes, and the high cost of containment, the Instability Index (ISTAB) is presented as a tool for managing these complexities. ISTAB focuses limited resources on key issues and provides a window into the stability of manufacturing operations. ISTAB takes advantage of the statistical nature of processes by comparing the observed average run length (OARL) to the expected run length (ARL), resulting in a gap value called the ISTAB index. The ISTAB index has three characteristic behaviors that are indicative of defects in an SPC instance. Case 1: The observed average run length is excessively long relative to expectation. ISTAB > 0 is indicating the possibility that the limits are too wide. Case 2: The observed average run length is consistent with expectation. ISTAB near zero is indicating that the process is stable. Case 3: The observed average run length is inordinately short relative to expectation. ISTAB < 0 is indicating that the limits are too tight, the process is unstable or both. The probability distribution of run length is the basis for establishing an ARL. We demonstrate that the geometric distribution is a good approximation to run length across a wide variety of rule sets. Excessively long run lengths are associated with one kind of defect in an SPC instance; inordinately short run lengths are associated with another. A sampling distribution is introduced as a way to quantify excessively long and inordinately short observed run lengths. This paper provides detailed guidance for action limits on these run lengths. ISTAB as a statistical method of review facilitates automated instability detection. This paper proposes a management system based on ISTAB as an enhancement to more traditional SPC approaches.
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