Presenting a model for statistical process control in order to optimize efficiency and quality in manufacturing industries
In this research, a combined statistical process control model is presented to identify factors affecting efficiency and quality in manufacturing and component manufacturing industries, and then controlling and optimizing these processes is considered. Manufacturing and component industries are considered as the main body of the country's industries for case study and implementation. Clustering techniques are used to discover factors affecting efficiency. And then using decision tree algorithms to predict efficiency and quality in these industries, and in the final stage, control charts of dispersion and average variables are used to draw control charts. The comparison table of the parameters is prepared by the output of the Clementine software, and RapidMiner software is used in the neural network section. The results obtained from the identification of influencing and forecasting factors are close to the target values from a technical point of view, and the control charts are consistent with the technical control limits of the characteristics and are useful for optimizing the target value, which is efficiency and quality.
-
$n$-tuple Fixed Point Theorems Via $\alpha$-series in $C^*$-algebra-valued Metric Spaces with an Application in Integral Equations
S. Hadi Bonab, V. Parvaneh *, H. Hosseinzadeh, H. Aydi, S. J. Hosseini Ghoncheh
International Journal of Industrial Mathematics, Spring 2023 -
The Effect of trust, customer service and convenience on Intention to Shop Online by mediating role of Attitude towards Online Shopping (Case Study: Digistyle)
Sadaf Chankeshi, Peyman Ghafari Ashtiani *, Seyed Jalaledin Hosseini Ghoncheh
Journal of Marketing Management,