测量能力分析:经典与方差分析。

J Antony, G Knowles, P Roberts
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引用次数: 19

摘要

为了在当今的现代工业环境中高效地使用统计过程控制(SPC),分析和确定仪表变异性的程度是必不可少的。发生在控制图上的变化本质上是产品和量规变化的结合。测量或量规变化的研究绝对是对资源的浪费,除非它们能导致过程可变性的实质性减少或过程和产品质量的改进。测量能力分析的目标是理解和量化测量过程中存在的各种可变性的来源。本文的目的是说明经典标准能力分析(CGCA)和使用基于方差分析(ANOVA)的更强大的方法之间的根本区别。作者建议,后一种方法在涉及测量过程的部件和操作人员之间存在交互作用时更有用和强大。文中举例说明了这两种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gauge Capability Analysis: classical versus ANOVA.

In order to use Statistical Process Control (SPC) efficiently and effectively in today's modern industrial environment, it is essential to analyze and determine the extent of gauge variability. The variation that occurs on a control chart is essentially a combination of product and gauge variation. Studies of measurement or gauge variation are absolutely a waste of resources unless they can lead to a substantial reduction in process variability or to an improvement in process and product quality. The goal of gauge capability analysis is an understanding and quantification of the various sources of variability present in the measurement process. The purpose of this paper is to illustrate the fundamental difference between Classical Gauge Capability Analysis (CGCA) and the use of a more powerful approach based on the Analysis of Variance (ANOVA). The author recommends that the latter approach is more useful and powerful in the presence of an interaction between the parts and the operators involved in the measurement process. An example is illustrated in the paper to demonstrate the two approaches.

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