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    Machine Learning for Diagnosis of Event Synchronization Faults in Discrete Manufacturing Systems

    Source: Journal of Manufacturing Science and Engineering:;2021:;volume( 144 ):;issue: 007::page 71006-1
    Author:
    Cohen, Joseph
    ,
    Jiang, Baoyang
    ,
    Ni, Jun
    DOI: 10.1115/1.4052762
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: Common in discrete manufacturing, timed event systems often have strict synchronization requirements for healthy operation. Discrete event system methods have been used as mathematical tools to detect known faults, but do not scale well for problems with extensive variability in the normal class. A hybridized discrete event and data-driven method is suggested to supplement fault diagnosis in the case where failure patterns are not known in advance. A unique fault diagnosis framework consisting of signal data from programmable logic controllers, a Timed Petri Net of the normal process behavior, and machine learning algorithms is presented to improve fault diagnosis of timed event systems. Various supervised and unsupervised machine learning algorithms are explored as the methodology is implemented in a case study in semiconductor manufacturing. State-of-the-art classifiers such as artificial neural networks, support vector machines, and random forests are implemented and compared for handling multi-fault diagnosis using programmable logic controller signal data. For unsupervised learning, classifiers based on principal component analysis utilizing major and minor principal components are compared for anomaly detection. The rule-based random forest and extreme random forest classifiers achieve excellent performance with a precision and recall score of 0.96 for multi-fault classification. Additionally, the unsupervised learning approach yields anomaly detection rates of 98% with false alarms under 3% with a training set 99% smaller than the supervised learning classifiers. These results obtained on a real use case are promising to enable prognostic tools in industrial automation systems in the future.
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      Machine Learning for Diagnosis of Event Synchronization Faults in Discrete Manufacturing Systems

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4283841
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    contributor authorCohen, Joseph
    contributor authorJiang, Baoyang
    contributor authorNi, Jun
    date accessioned2022-05-08T08:21:46Z
    date available2022-05-08T08:21:46Z
    date copyright12/8/2021 12:00:00 AM
    date issued2021
    identifier issn1087-1357
    identifier othermanu_144_7_071006.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4283841
    description abstractCommon in discrete manufacturing, timed event systems often have strict synchronization requirements for healthy operation. Discrete event system methods have been used as mathematical tools to detect known faults, but do not scale well for problems with extensive variability in the normal class. A hybridized discrete event and data-driven method is suggested to supplement fault diagnosis in the case where failure patterns are not known in advance. A unique fault diagnosis framework consisting of signal data from programmable logic controllers, a Timed Petri Net of the normal process behavior, and machine learning algorithms is presented to improve fault diagnosis of timed event systems. Various supervised and unsupervised machine learning algorithms are explored as the methodology is implemented in a case study in semiconductor manufacturing. State-of-the-art classifiers such as artificial neural networks, support vector machines, and random forests are implemented and compared for handling multi-fault diagnosis using programmable logic controller signal data. For unsupervised learning, classifiers based on principal component analysis utilizing major and minor principal components are compared for anomaly detection. The rule-based random forest and extreme random forest classifiers achieve excellent performance with a precision and recall score of 0.96 for multi-fault classification. Additionally, the unsupervised learning approach yields anomaly detection rates of 98% with false alarms under 3% with a training set 99% smaller than the supervised learning classifiers. These results obtained on a real use case are promising to enable prognostic tools in industrial automation systems in the future.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleMachine Learning for Diagnosis of Event Synchronization Faults in Discrete Manufacturing Systems
    typeJournal Paper
    journal volume144
    journal issue7
    journal titleJournal of Manufacturing Science and Engineering
    identifier doi10.1115/1.4052762
    journal fristpage71006-1
    journal lastpage71006-8
    page8
    treeJournal of Manufacturing Science and Engineering:;2021:;volume( 144 ):;issue: 007
    contenttypeFulltext
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