期刊论文详细信息
Mathematics
Multivariate Pattern Recognition in MSPC Using Bayesian Inference
Ismael Lopez-Juarez1  EdgarAugusto Ruelas-Santoyo2  Aidee Hernandez-Lopez3  Jose Ruiz-Tamayo4  JoseAntonio Vazquez-Lopez4  ArmandoJavier Rios-Lira4 
[1] Centro de Investigacion y de Estudios Avanzados del IPN (CINVESTAV), Ramos Arizpe 25900, Mexico;Instituto Tecnologico Superior de Irapuato, Irapuato 36821, Mexico;Sistema Avanzado de Bachillerato y Educacion Superior, Celaya 38010, Mexico;Tecnologico Nacional de Mexico/Instituto Tecnologico de Celaya, Celaya 38010, Mexico;
关键词: Multivariate Statistical Process Control;    control charts;    Bayesian Network;    Bayesian Inference;    moving windows;   
DOI  :  10.3390/math9040306
来源: DOAJ
【 摘 要 】

Multivariate Statistical Process Control (MSPC) seeks to monitor several quality characteristics simultaneously. However, it has limitations derived from its inability to identify the source of special variation in the process. In this research, a proposed model that does not have this limitation is presented. In this paper, data from two scenarios were used: (A) data created by simulation and (B) random variable data obtained from the analysed product, which in this case corresponds to cheese production slicing process in the dairy industry. The model includes a dimensional reduction procedure based on the centrality and data dispersion. The goal is to recognise a multivariate pattern from the conjunction of univariate variables with variation patterns so that the model indicates the univariate patterns from the multivariate pattern. The model consists of two stages. The first stage is concerned with the identification process and uses Moving Windows (MWs) for data segmentation and pattern analysis. The second stage uses Bayesian Inference techniques such as conditional probabilities and Bayesian Networks. By using these techniques, the univariate variable that contributed to the pattern found in the multivariate variable is obtained. Furthermore, the model evaluates the probability of the patterns of the individual variables generating a specific pattern in the multivariate variable. This probability is interpreted as a signal of the performance of the process that allows to identify in the process a multivariate out-of-control state and the univariate variable that causes the failure. The efficiency results of the proposed model compared favourably with respect to the results obtained using the Hotelling’s T2 chart, which validates our model.

【 授权许可】

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