Abstract

The purpose of the article is to determine the Type I error and Average Run Length values for charts and R, for which control limits have been determined based on the Skewness Correction method (SC method), with an unknown probability distribution of the qualitative feature being tested. The study also used the Monte Carlo Simulation, in which two sampling methods were used to obtain random input scenarios - matching theoretical distributions (selected skewed distributions) and bootstrap resampling based on a manufacturing company’s measurement data. The presented article is a continuation of Czabak-Górska's (2016) research. The purpose of the article was to determine Type I error value and ARL type A for chart and R, for which the control limits were determined based on the skewness correction method. For this purpose, measurement data from a company producing car seat frames. Presented case study showed that the chart determined using the skewness correction method works better for the data described by the gamma or log-normal distribution. This, in turn, may suggest that appropriate distribution was selected for the presented data, thanks to which it is possible to determine the course and nature of the process, which is important from the point of view of its further analysis, e.g. in terms of the process capability.

Highlights

  • Control charts are still an easy and effective tool in Statistical Process Control (SPC)

  • The purpose of the article is to determine the values of Type I error and Average Run Length (ARL) for chart Xand R, for which control limits have been set based on the Skewness Correction method (SC method), with an unknown probability distribution of the examined qualitative feature

  • The purpose of the article was to determine Type I error value and ARL type A for chart Xand R, for which the control limits were determined based on the skewness correction method

Read more

Summary

Introduction

Control charts are still an easy and effective tool in Statistical Process Control (SPC). Traditional control charts are based on the assumption that the distribution of the controlled feature / characteristic is Gaussian (normal). Karagöz and Hamurkaroglu (2012) pointed out that the use of control limits calculated on the basis of formulas proposed by Shewhart, in the case of skewed variation of the examined feature / characteristic, increases the Type I Error defined as the probability of a false signal about the destabilization of the process in the case of the controlled processes. The purpose of the article is to determine the values of Type I error and Average Run Length (ARL) for chart Xand R, for which control limits have been set based on the Skewness Correction method (SC method), with an unknown probability distribution of the examined qualitative feature. The presented article is a continuation of Czabak-Górska's research on SPC in the event that the measurement data are skewed (Czabak-Górska, 2016)

Assumptions and study method
Type I error and Average Run Length
Normality test
Descriptive statistics
Burr distribution
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call