非常规过程能力指标的缺陷

Surajit Pal, S. Gauri
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引用次数: 0

摘要

对于具有规格上限(USL)的普通工艺的能力评估,通常需要估计Cpu指标,以便于在产品和工艺管理中做出更好的决策。但是,实际上,许多只有USL的质量特征,例如计数数据,缺陷比例等是离散的,并且遵循泊松或二项分布。文献中提出了一些非常规指标(如Cu、Cfu、Cpcu和Cpyu)来评价泊松过程或二项过程的能力。由于Cpu索引的使用及其解释的遗留问题,非常规索引的用户往往倾向于根据Cpu对坏进程、好进程或高性能正常进程的值来解释其值,并对相关泊松进程或二项进程的能力产生错误的印象。本文重点介绍了非常规指标的主要特征,并对非常规指标的解释问题进行了数值分析。分析结果表明,虽然非常规指标Cu没有解释问题,但其他非常规指标的解释问题严重。建立了其他非常规指标估计与Cu指标估计的数学关系。建议在进行决策之前,利用这些关系将其他非常规指标的估计值转换为Cu值的估计值。否则,其他非常规指标的用户可能会在不经意间导致错误决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The pitfalls of the unconventional process capability indices
For assessing capability of a normal process with upper specification limit (USL) conventionally Cpu index is estimated to facilitate better decision making in product and process management. But, in practice, many quality characteristics having USL only, e.g. count data, proportion defective etc. are discrete and follow Poisson or binomial distributions. Some unconventional indices (e.g. Cu , Cfu ¸ Cpcu and Cpyu) are proposed in literature for assessing capability of Poisson or binomial processes. Due to legacy of usages of Cpu index and its interpretations, a user of an unconventional index often tends to interpret its values with reference to the values of Cpu for the bad, good or highly capable normal processes, and get a false impression about the capability of the concerned Poisson or binomial process. In this paper, the key features of those unconventional indices are highlighted and then some numerical analysis is carried out for assessing the interpretation issues associated with these unconventional indices. The results of these analyses reveal that although there is no interpretation issue for the unconventional index Cu , there are serious interpretation issues with all other unconventional indices. The mathematical relationships of estimates of other unconventional indices with the estimate of Cu index are established. It is recommended to convert the estimates of other unconventional indices into estimated Cu value using those relationships before any decision making. Otherwise, users of the other unconventional indices may inadvertently be led to erroneous decision making. 
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