A framework for multivariate process monitoring and diagnosis

Monitoring and diagnosis of mean shifts in manufacturing processes become more challenging when involving two or more correlated variables. Unfortunately, most of the existing statistical process control frameworks are only effective in shift detection but suffers high false alarm, that is, imbalanc...

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Main Authors: Masood, Ibrahim, Hassan, Adnan
Format: Conference or Workshop Item
Published: 2013
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Online Access:http://eprints.utm.my/id/eprint/50855/
http://dx.doi.org/10.4028/www.scientific.net/AMM.315.374
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spelling my.utm.508552017-09-26T03:49:14Z http://eprints.utm.my/id/eprint/50855/ A framework for multivariate process monitoring and diagnosis Masood, Ibrahim Hassan, Adnan TJ Mechanical engineering and machinery Monitoring and diagnosis of mean shifts in manufacturing processes become more challenging when involving two or more correlated variables. Unfortunately, most of the existing statistical process control frameworks are only effective in shift detection but suffers high false alarm, that is, imbalanced performance monitoring. The problem becomes more complicated when dealing with small shift particularly in identifying the causable variables. In this research, a framework to address balanced monitoring and accurate diagnosis was investigated. Design considerations involved extensive simulation experiments to select input representation based on raw data and statistical features, recognizer design structure based on synergistic model, and monitoring-diagnosis approach based on two stages technique. The study focuses on correlated process mean shifts for cross correlation function, ρ = 0.1 ~ 0.9 and mean shift, μ = ± 0.75 ~ 3.00 standard deviations. The proposed design, that is, an Integrated Multivariate Exponentially Weighted Moving Average with Artificial Neural Network gave superior performance, namely, average run length, ARL1 = 3.18 ~ 16.75 (for out-of-control process), ARL0 = 452.13 (for in-control process) and recognition accuracy, RA = 89.5 ~ 98.5%. This research has provided a new perspective in realizing balanced monitoring and accurate diagnosis of multivariate correlated process mean shifts. 2013 Conference or Workshop Item PeerReviewed Masood, Ibrahim and Hassan, Adnan (2013) A framework for multivariate process monitoring and diagnosis. In: Applied Mechanics And Materials. http://dx.doi.org/10.4028/www.scientific.net/AMM.315.374
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic TJ Mechanical engineering and machinery
spellingShingle TJ Mechanical engineering and machinery
Masood, Ibrahim
Hassan, Adnan
A framework for multivariate process monitoring and diagnosis
description Monitoring and diagnosis of mean shifts in manufacturing processes become more challenging when involving two or more correlated variables. Unfortunately, most of the existing statistical process control frameworks are only effective in shift detection but suffers high false alarm, that is, imbalanced performance monitoring. The problem becomes more complicated when dealing with small shift particularly in identifying the causable variables. In this research, a framework to address balanced monitoring and accurate diagnosis was investigated. Design considerations involved extensive simulation experiments to select input representation based on raw data and statistical features, recognizer design structure based on synergistic model, and monitoring-diagnosis approach based on two stages technique. The study focuses on correlated process mean shifts for cross correlation function, ρ = 0.1 ~ 0.9 and mean shift, μ = ± 0.75 ~ 3.00 standard deviations. The proposed design, that is, an Integrated Multivariate Exponentially Weighted Moving Average with Artificial Neural Network gave superior performance, namely, average run length, ARL1 = 3.18 ~ 16.75 (for out-of-control process), ARL0 = 452.13 (for in-control process) and recognition accuracy, RA = 89.5 ~ 98.5%. This research has provided a new perspective in realizing balanced monitoring and accurate diagnosis of multivariate correlated process mean shifts.
format Conference or Workshop Item
author Masood, Ibrahim
Hassan, Adnan
author_facet Masood, Ibrahim
Hassan, Adnan
author_sort Masood, Ibrahim
title A framework for multivariate process monitoring and diagnosis
title_short A framework for multivariate process monitoring and diagnosis
title_full A framework for multivariate process monitoring and diagnosis
title_fullStr A framework for multivariate process monitoring and diagnosis
title_full_unstemmed A framework for multivariate process monitoring and diagnosis
title_sort framework for multivariate process monitoring and diagnosis
publishDate 2013
url http://eprints.utm.my/id/eprint/50855/
http://dx.doi.org/10.4028/www.scientific.net/AMM.315.374
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score 13.214268