Affiliation:
1. University of Carthage, Tunisia
2. University of Tunis, Tunisia
Abstract
Abstract: Interpreting an out-of-control signal is a crucial step in monitoring categorical processes. For the Chi-Square Control Chart (CSCC), an out-of control situation does not specify if it was a process deterioration or a process improvement. For this reason, a weighted chi-square statistical control chart WSCC is proposed with different weighting categories in order to enable an accelerated disclosure of a control situation after a shift due to a deterioration of quality and on the other hand, decelerate an out of control situation after a shift due to a quality improvement. Furthermore, in comparison with Marcucci’s method, the new procedure provides an accurate and easier way to interpret several signals. In other words, the WSCC allows a faster detection of an out-of control situation in the case of a quality deterioration, however, an out-of control situation is not quickly detected in the case of a quality improvement. Indeed, comparative studies have been performed to find the best control chart for each combination. Concluding remarks with comments and recommendations are given based on Average Run Length (ARL) and standard deviation run length (SDRL).
Subject
Industrial and Manufacturing Engineering,Business and International Management
Reference15 articles.
1. A chi-square chart for controlling a set of percentages;Duncan A. J.;Industrial Quality Control,1950
2. Quality control and industrial statistics;Duncan A. J.,1974
3. A chi-square chart for controlling a set of percentages. industrial quality control;Feiveson A. H.,1968
4. Control charts for process average and variability based on linguistic data;Kanagawa A.;International Journal of Production Research,1993
5. Monitoring multinomial processes;Marcucci M.;Journal of Quality Technology,1985
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献