Affiliation:
1. Department of Production Engineering, São Paulo State University, Guaratinguetá 05508-070, Brazil
2. Department of Administration and Public Administration, Fluminense Federal University, Volta Redonda 27213-145, Brazil
Abstract
Control charts are tools of paramount importance in statistical process control. They are broadly applied in monitoring processes and improving quality, as they allow the detection of special causes of variation with a significant level of accuracy. Furthermore, there are several strategies able to be employed in different contexts, all of which offer their own advantages. Therefore, this study focuses on monitoring the variability in univariate processes through variance using the Binomial version of the ATTRIVAR Same Sample S2 (B-ATTRIVAR SS S2) control chart, given that it allows coupling attribute and variable inspections (ATTRIVAR means attribute + variable), i.e., taking advantage of the cost-effectiveness of the former and the wealth of information and greater performance of the latter. Its Binomial version was used for such a purpose, since inspections are made using two attributes, and the Same Sample was used due to being submitted to both the attribute and variable stages of inspection. A computational application was developed in the R language using the Shiny package so as to create an interface to facilitate its application and use in the quality control of the production processes. Its application enables users to input process parameters and generate the B-ATTRIVAR SS control chart for monitoring the process variability with variance. By comparing the data obtained from its application with a simpler code, its performance was validated, given that its results exhibited striking similarity.
Reference22 articles.
1. Shewhart, W.A. (1931). Economic Control of Quality of Manufactured Product, D. Van Nostrand Company. [1st ed.].
2. Montgomery, D.C. (2009). Introduction to Statistical Quality Control, John Wiley & Sons. [6th ed.].
3. On developing sensitive nonparametric mixed control charts with application to manufacturing industry;Ali;Qual. Reliab. Eng. Int.,2021
4. Aslam, M., Saghir, A., and Ahmad, L. (2020). Introduction to Statistical Process Control, John Wiley & Sons. [1st ed.].
5. Attrivar: Optimized control charts to monitor process mean with lower operational cost;Ho;Int. J. Prod. Econ.,2016