Analyzing abnormal pattern of hotelling ...
Type de document :
Article dans une revue scientifique: Article original
URL permanente :
Titre :
Analyzing abnormal pattern of hotelling T-2 control chart for compositional data using artificial neural networks
Auteur(s) :
Zaidi, F. S. [Auteur]
Dai, H. L. [Auteur]
Imran, M. [Auteur]
Tran, Kim-Phuc [Auteur]
Génie des Matériaux Textiles - ULR 2461 [GEMTEX]
Dai, H. L. [Auteur]
Imran, M. [Auteur]
Tran, Kim-Phuc [Auteur]
Génie des Matériaux Textiles - ULR 2461 [GEMTEX]
Titre de la revue :
Computers & Industrial Engineering
Nom court de la revue :
Comput. Ind. Eng.
Numéro :
180
Date de publication :
2023-06
ISSN :
0360-8352
Mot(s)-clé(s) en anglais :
HotellingT2
CoDa
Pattern recognition
Artificial neural networks
Multilayer feed-forward
CoDa
Pattern recognition
Artificial neural networks
Multilayer feed-forward
Discipline(s) HAL :
Sciences de l'ingénieur [physics]
Résumé en anglais : [en]
Compositional data (CoDa) has been monitored in statistical process monitoring, where multivariate control charts (CCs) such as Hotelling , MEWMA-CoDa, and MCUSUM-CoDa are commonly used to determine if a process is in-control. ...
Lire la suite >Compositional data (CoDa) has been monitored in statistical process monitoring, where multivariate control charts (CCs) such as Hotelling , MEWMA-CoDa, and MCUSUM-CoDa are commonly used to determine if a process is in-control. However, these charts can encounter problems when there is an out-of-control (OOC) process due to various factors such as shifts in variables, outliers, or trends. To address this issue, a pattern recognition (PR) tool using multilayer feed-forward neural networks (MLFFNN) is proposed to accurately recognize CoDa patterns. In the simulation study, six different models in simplex sample space are used to induce trends and shifts in CoDa, and sufficient samples are generated to evaluate the proposed PR model’s performance. The isometric log-ratio () transformation is applied to CoDa to convert the data from simplex sample space to real space. The Hotelling statistic is obtained from the generated values after applying the transformation. statistic is then standardized for MLFFNN, and a back-propagation learning algorithm is used to accurately fit the PR model. Results show the proposed model accurately identifies the CCs pattern, even during OOC processes. A time budget CoDa is analyzed to demonstrate the proposed model’s effectiveness in recognizing patterns.Lire moins >
Lire la suite >Compositional data (CoDa) has been monitored in statistical process monitoring, where multivariate control charts (CCs) such as Hotelling , MEWMA-CoDa, and MCUSUM-CoDa are commonly used to determine if a process is in-control. However, these charts can encounter problems when there is an out-of-control (OOC) process due to various factors such as shifts in variables, outliers, or trends. To address this issue, a pattern recognition (PR) tool using multilayer feed-forward neural networks (MLFFNN) is proposed to accurately recognize CoDa patterns. In the simulation study, six different models in simplex sample space are used to induce trends and shifts in CoDa, and sufficient samples are generated to evaluate the proposed PR model’s performance. The isometric log-ratio () transformation is applied to CoDa to convert the data from simplex sample space to real space. The Hotelling statistic is obtained from the generated values after applying the transformation. statistic is then standardized for MLFFNN, and a back-propagation learning algorithm is used to accurately fit the PR model. Results show the proposed model accurately identifies the CCs pattern, even during OOC processes. A time budget CoDa is analyzed to demonstrate the proposed model’s effectiveness in recognizing patterns.Lire moins >
Langue :
Anglais
Audience :
Internationale
Vulgarisation :
Non
Établissement(s) :
Université de Lille
ENSAIT
Junia HEI
ENSAIT
Junia HEI
Collections :
Date de dépôt :
2023-06-20T12:16:41Z
2024-02-20T10:56:44Z
2024-02-20T10:56:44Z