Comment on the Assumption of a Normal Distribution in Known-Sigma and Unknown Sigma Plans
The frequency distribution of many industrial quality characteristics is roughly normal. This is particularly so where the product comes from a single source within a short period of time. For this reason, the assumption of a normal distribution is good enough for practical purposes in many instances. This assumption is most likely a reasonable where inspection lots are formed close to the point of production, so that the chance for the mixing of product having different frequency distributions is held to a minimum.
Nevertheless, even though inspection lots have been produced under apparently homogenous conditions, it is always well to view the assumption of normality with a somewhat critical eye, investigating to see whether conditions exist that are likely to cause serious departure from a normal distribution. Sometimes the underlying frequency distribution is skewed, or it may be symmetrical but either peaked or flat-topped. The percentages in the extreme tails of such distributions may differ considerably from those obtaining under a normal distribution, and the protection against stated percentages of defectives given by the variables acceptance criteria may be either greater or less than the protection indicated by QC curves computed on the assumption of normality. The tighter the quality standards (for example the smaller of the AQL), the less reasonable it is to use the acceptance criteria based on the assumption of normality.
One important departure from normality exists when a producer has given 100% screening inspection by attributes to a lot prior to its variables sampling inspection by the customer. In such a case the frequency distribution in the screened lot may be truncated; one or both of the tails of the distribution may have been removed. With such truncated distributions, the variables criteria based on the assumption of normality may indicated that a lot should be rejected even though the actual nonnormal distribution in the lot may contain no defectives.
From “Statistical Quality Control”, Eugene L. Grant and Richard S. Leavenworth, 5th Edition , Page 527
(Yeah, I know it’s old, but so am I. And I don’t think frequency distribution has changed too much in the intervening years…)