TY - JOUR
T1 - Bayesian multivariate control charts for multivariate profiles monitoring
AU - Ahmadi Yazdi, Ahmad
AU - Shafiee Kamalabad, Mahdi
AU - Oberski, Daniel
AU - Grzegorczyk, Marco
N1 - Publisher Copyright:
© 2023 International Chinese Association of Quantitative Management.
PY - 2024
Y1 - 2024
N2 - In many topical applications, the product’s quality can be well described in terms of statistical regression relationships between one or more response and a set of explanatory variables. In the literature, various types of regression models have been proposed for profile monitoring applications, and each of those regression models can be implemented and applied in its standard frequentist’s and its Bayesian variant. We formulate two popular Phase II multivariate cumulative sum control charts for monitoring multivariate linear profiles in terms of Bayesian regression models, and we show empirically that the resulting new Bayesian control charts perform better than the corresponding non-Bayesian control charts. For the comparative evaluation of the control charts we employ the average run length criterion. Moreover, we propose a new Bayesian approach, which we refer to as the informative prior generation method. The key idea of this method is to make use of historical datasets to generate informative prior distributions. The advantage of this method is that we do not ignore the historical data from Phase I. Instead we re-use it to construct informative prior distributions for Phase II monitoring. The applicability and the superiority of the proposed Bayesian control charts are illustrated through extensive simulation studies.
AB - In many topical applications, the product’s quality can be well described in terms of statistical regression relationships between one or more response and a set of explanatory variables. In the literature, various types of regression models have been proposed for profile monitoring applications, and each of those regression models can be implemented and applied in its standard frequentist’s and its Bayesian variant. We formulate two popular Phase II multivariate cumulative sum control charts for monitoring multivariate linear profiles in terms of Bayesian regression models, and we show empirically that the resulting new Bayesian control charts perform better than the corresponding non-Bayesian control charts. For the comparative evaluation of the control charts we employ the average run length criterion. Moreover, we propose a new Bayesian approach, which we refer to as the informative prior generation method. The key idea of this method is to make use of historical datasets to generate informative prior distributions. The advantage of this method is that we do not ignore the historical data from Phase I. Instead we re-use it to construct informative prior distributions for Phase II monitoring. The applicability and the superiority of the proposed Bayesian control charts are illustrated through extensive simulation studies.
KW - Bayesian modelling
KW - multivariate linear profile
KW - Phase II
KW - Profile monitoring
KW - statistical process monitoring
UR - http://www.scopus.com/inward/record.url?scp=85160945021&partnerID=8YFLogxK
U2 - 10.1080/16843703.2023.2214386
DO - 10.1080/16843703.2023.2214386
M3 - Article
AN - SCOPUS:85160945021
SN - 1684-3703
VL - 21
SP - 368
EP - 421
JO - Quality Technology and Quantitative Management
JF - Quality Technology and Quantitative Management
IS - 3
ER -