AccScience Publishing / IJOCTA / Volume 14 / Issue 4 / DOI: 10.11121/ijocta.1594
RESEARCH ARTICLE

Modeling the dependency structure between quality characteristics in multi-stage manufacturing processes with copula functions

Pelin Toktaş1* Ömer Lütfi Gebizlioğlu2
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1 Department of Industrial Engineering, Başkent University, Turkey
2 Department of International Trade and Finance, Kadir Has University, Turkey
IJOCTA 2024, 14(4), 404–418; https://doi.org/10.11121/ijocta.1594
Submitted: 17 April 2024 | Accepted: 22 October 2024 | Published: 24 October 2024
© 2024 by the Author(s). This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution -Noncommercial 4.0 International License (CC-by the license) ( https://creativecommons.org/licenses/by-nc/4.0/ )
Abstract

This study is about multi-stage manufacturing processes and their control by statistical process control modeling. There are two kinds of dependence structures in a multi-stage manufacturing process: one is the dependence between the stages of the process, and the other is the dependence between the concerned quality characteristics. This study employs state-space models to demonstrate the dependency structure between the process stages and uses the Kalman filter method to estimate the states of the processes. In this setup, copula modeling is proposed to determine the dependence structure between the quality characteristics of interest. A simulation study is conducted to assess the model's accuracy.  As a result, it was found that the model gives highly accurate predictions according to the mean absolute percentage error (MAPE) criteria (<10%).

Keywords
Multi-stage manufacturing process
Statistical process control
State-space model
Kalman filter
Copula modeling
Conflict of interest
The authors declare they have no competing interests.
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An International Journal of Optimization and Control: Theories & Applications, Electronic ISSN: 2146-5703 Print ISSN: 2146-0957, Published by AccScience Publishing