Author:
Rao G. Srinivasa,Aslam Muhammad,Alamri Faten S.,Jun Chi-Hyuck
Abstract
AbstractThis paper aimed to develop a coefficient of variation (CV) control chart utilizing the generalized multiple dependent state (GMDS) sampling approach for CV monitoring. We conducted a comprehensive examination of this designed control chart in comparison to existing control charts based on multiple dependent state sampling (MDS) and the Shewhart-type CV control chart, with a focus on average run lengths. The results were then compared to run-rule control charts available in the existing literature. Additionally, we elucidated the implementation of the proposed control chart through concrete examples and a simulation study. The findings clearly demonstrated that the GMDS sampling control chart shows significantly superior accuracy in detecting process shifts when compared to the MDS sampling control chart. As a result, the control chart approach presented in this paper holds significant potential for applications in textile and medical industries, particularly when researchers seek to identify minor to moderate shifts in the CV, contributing to enhanced quality control and process monitoring in these domains.
Publisher
Springer Science and Business Media LLC
Reference56 articles.
1. Montgomery, D. C. Introduction to Statistical Quality Control 7th edn. (John Wiley & Sons, 2013).
2. Costa, A. F. B. & Machado, M. A. G. A single chart with supplementary runs rules for monitoring the mean vector and the covariance matrix of multivariate processes. Comput. Ind. Eng. 66(2), 431–437 (2013).
3. Reed, G. F., Lynn, F. & Meade, B. D. Use of coefficient of variation in assessing variability of quantitative assays. Clin. Diagn. Lab. Immunol. 9(6), 1235–1239 (2002).
4. Castagliola, P., Achouri, A., Taleb, H., Celano, G. & Psarakis, S. Monitoring the coefficient of variation using a variable sampling interval control chart. Qual. Reliab. Eng. Int. 29(8), 1135–1149 (2013).
5. Castagliola, P., Achouri, A., Taleb, H., Celano, G. & Psarakis, S. Monitoring the coefficient of variation using control charts with run rules. Qual. Technol. Quant. Manag. 10(1), 75–94 (2013).