Title of article :
Economic-Statistical Design of an Integrated Triple-Component Model Under Various Autocorrelated Processes
Author/Authors :
Jafarian-Namin, Samrad Department of Industrial Engineering - Faculty of Engineering - Yazd University , Fallahnezhad, Mohammad Saber Department of Industrial Engineering - Faculty of Engineering - Yazd University , Tavakkoli- Moghaddam, Reza School of Industrial Engineering - College of Engineering - University of Tehran , Salmasnia, Ali Department of Industrial Engineering - Faculty of Technology and Engineering - University of Qom , Abooie, Mohammad Hossein Department of Industrial Engineering - Faculty of Engineering - Yazd University
Abstract :
It has recently been proven that integrating statistical process control (SPC), maintenance policy
(MP), and production could bring benefits for the entire production system. In the literature of
integrated triple-component models, independent observations have generally been studied. The
existence of correlated structures in practice put the traditional control charts in trouble. The mixed
EWMA-CUSUM (MEC) chart has been developed as an effective tool of SPC for monitoring only the
autoregressive (AR) processes. Nevertheless, it has not been extended for moving average (MA) and
ARMA processes. Besides, MEC has been designed only based on statistical measures. However, in an
imperfect production system, the decision variables of MEC together with the other components should
be determined according to the resulting costs and satisfaction of some criteria. This paper proposes
an integrated triple-component model by applying the MEC chart for monitoring various
autocorrelated processes. Due to the complexity of the model, a particle swarm optimization (PSO)
algorithm is employed to reach optimal solutions. The applicability of the model is investigated via an
industrial example. The effects of model parameters on the solutions are studied through a sensitivity
analysis. Moreover, extensive comparisons and a real data set are provided for more investigations.
Keywords :
Meta-heuristic algorithm , Statistical process control , Production , Maintenance policy , Autocorrelated process
Journal title :
International Journal of Industrial Engineering and Production Research