Study of artificial neural network scheme application in manufacturing industry for monitoring-diagnosis bivariate process variation

In manufacturing industries, process variation is known to be a major source of poor quality. As such, process monitoring and diagnosis is critical towards continuous quality improvement. This becomes more challenging when involving two or more correlated variables (multivariate). Process moni...

Full description

Bibliographic Details
Main Author: Majid, Mariam
Format: Thesis
Language:English
English
English
Published: 2014
Subjects:
Online Access:http://eprints.uthm.edu.my/1531/1/24p%20MARIAM%20MAJID.pdf
http://eprints.uthm.edu.my/1531/2/MARIAM%20MAJID%20COPYRIGHT%20DECLARATION.pdf
http://eprints.uthm.edu.my/1531/3/MARIAM%20MAJID%20WATERMARK.pdf
_version_ 1825709552757112832
author Majid, Mariam
author_facet Majid, Mariam
author_sort Majid, Mariam
collection UTHM
description In manufacturing industries, process variation is known to be a major source of poor quality. As such, process monitoring and diagnosis is critical towards continuous quality improvement. This becomes more challenging when involving two or more correlated variables (multivariate). Process monitoring refers to the identification of process status either it is running within a statistically in-control or out-of-control condition, whereas process diagnosis refers to the identification of the source variables of out-of-control process. The traditional statistical process control (SPC) charting schemes are known to be effective in monitoring aspect. Nevertheless, they are lack of diagnosis. In recent years, the artificial neural network (ANN) based pattern recognition schemes have been developed for solving this issue. The existing schemes are mainly designed for dealing with fully completed process data streams. In practice, however, there are cases that observation data are incomplete due to measurement error. In this research, an ensemble (combined) ANN model pattern recognizer will be investigated for recognizing data streams process. Each model consists of different input representation, namely, raw data and statistical features. The raw data of representation generate by manufacturing industry as a real data. The proposed ensemble ANN scheme would provide better perspective in this research area.
first_indexed 2024-03-05T21:40:22Z
format Thesis
id uthm.eprints-1531
institution Universiti Tun Hussein Onn Malaysia
language English
English
English
last_indexed 2024-03-05T21:40:22Z
publishDate 2014
record_format dspace
spelling uthm.eprints-15312021-10-03T07:56:23Z http://eprints.uthm.edu.my/1531/ Study of artificial neural network scheme application in manufacturing industry for monitoring-diagnosis bivariate process variation Majid, Mariam TS Manufactures TS155-194 Production management. Operations management In manufacturing industries, process variation is known to be a major source of poor quality. As such, process monitoring and diagnosis is critical towards continuous quality improvement. This becomes more challenging when involving two or more correlated variables (multivariate). Process monitoring refers to the identification of process status either it is running within a statistically in-control or out-of-control condition, whereas process diagnosis refers to the identification of the source variables of out-of-control process. The traditional statistical process control (SPC) charting schemes are known to be effective in monitoring aspect. Nevertheless, they are lack of diagnosis. In recent years, the artificial neural network (ANN) based pattern recognition schemes have been developed for solving this issue. The existing schemes are mainly designed for dealing with fully completed process data streams. In practice, however, there are cases that observation data are incomplete due to measurement error. In this research, an ensemble (combined) ANN model pattern recognizer will be investigated for recognizing data streams process. Each model consists of different input representation, namely, raw data and statistical features. The raw data of representation generate by manufacturing industry as a real data. The proposed ensemble ANN scheme would provide better perspective in this research area. 2014-12 Thesis NonPeerReviewed text en http://eprints.uthm.edu.my/1531/1/24p%20MARIAM%20MAJID.pdf text en http://eprints.uthm.edu.my/1531/2/MARIAM%20MAJID%20COPYRIGHT%20DECLARATION.pdf text en http://eprints.uthm.edu.my/1531/3/MARIAM%20MAJID%20WATERMARK.pdf Majid, Mariam (2014) Study of artificial neural network scheme application in manufacturing industry for monitoring-diagnosis bivariate process variation. Masters thesis, Universiti Tun Hussein Onn Malaysia.
spellingShingle TS Manufactures
TS155-194 Production management. Operations management
Majid, Mariam
Study of artificial neural network scheme application in manufacturing industry for monitoring-diagnosis bivariate process variation
title Study of artificial neural network scheme application in manufacturing industry for monitoring-diagnosis bivariate process variation
title_full Study of artificial neural network scheme application in manufacturing industry for monitoring-diagnosis bivariate process variation
title_fullStr Study of artificial neural network scheme application in manufacturing industry for monitoring-diagnosis bivariate process variation
title_full_unstemmed Study of artificial neural network scheme application in manufacturing industry for monitoring-diagnosis bivariate process variation
title_short Study of artificial neural network scheme application in manufacturing industry for monitoring-diagnosis bivariate process variation
title_sort study of artificial neural network scheme application in manufacturing industry for monitoring diagnosis bivariate process variation
topic TS Manufactures
TS155-194 Production management. Operations management
url http://eprints.uthm.edu.my/1531/1/24p%20MARIAM%20MAJID.pdf
http://eprints.uthm.edu.my/1531/2/MARIAM%20MAJID%20COPYRIGHT%20DECLARATION.pdf
http://eprints.uthm.edu.my/1531/3/MARIAM%20MAJID%20WATERMARK.pdf
work_keys_str_mv AT majidmariam studyofartificialneuralnetworkschemeapplicationinmanufacturingindustryformonitoringdiagnosisbivariateprocessvariation