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    Quantifying Geometric Accuracy With Unsupervised Machine Learning: Using Self-Organizing Map on Fused Filament Fabrication Additive Manufacturing Parts

    Source: Journal of Manufacturing Science and Engineering:;2018:;volume( 140 ):;issue: 003::page 31011
    Author:
    Khanzadeh, Mojtaba
    ,
    Rao, Prahalada
    ,
    Jafari-Marandi, Ruholla
    ,
    Smith, Brian K.
    ,
    Tschopp, Mark A.
    ,
    Bian, Linkan
    DOI: 10.1115/1.4038598
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: Although complex geometries are attainable with additive manufacturing (AM), a major barrier preventing its use in mission-critical applications is the lack of geometric accuracy of AM parts. Existing geometric dimensioning and tolerancing (GD&T) characteristics are defined based on simple landmark features, and thus, need to be customized to capture the subtle difference in parts with complex geometries. Hence, the objective of this work is to quantify the geometric deviations of additively manufactured parts from a large data set of laser-scanned coordinates using an unsupervised machine learning (ML) approach called the self-organizing map (SOM). The central hypothesis is that clusters recognized by the SOM correspond to specific types of geometric deviations, which in turn are linked to certain AM process conditions. This hypothesis is tested on parts made while varying process conditions in the fused filament fabrication (FFF) AM process. The outcomes of this research are as follows: (1) visualizing and quantifying the link between process conditions and geometric accuracy in FFF and (2) significantly reducing the amount of point cloud data required for characterizing of geometric accuracy. The significance of this research is that this unsupervised ML approach resulted in less than 3% of over 1 million data points being required to fully quantify the part geometric accuracy.
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      Quantifying Geometric Accuracy With Unsupervised Machine Learning: Using Self-Organizing Map on Fused Filament Fabrication Additive Manufacturing Parts

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4251996
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    contributor authorKhanzadeh, Mojtaba
    contributor authorRao, Prahalada
    contributor authorJafari-Marandi, Ruholla
    contributor authorSmith, Brian K.
    contributor authorTschopp, Mark A.
    contributor authorBian, Linkan
    date accessioned2019-02-28T11:02:25Z
    date available2019-02-28T11:02:25Z
    date copyright12/21/2017 12:00:00 AM
    date issued2018
    identifier issn1087-1357
    identifier othermanu_140_03_031011.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4251996
    description abstractAlthough complex geometries are attainable with additive manufacturing (AM), a major barrier preventing its use in mission-critical applications is the lack of geometric accuracy of AM parts. Existing geometric dimensioning and tolerancing (GD&T) characteristics are defined based on simple landmark features, and thus, need to be customized to capture the subtle difference in parts with complex geometries. Hence, the objective of this work is to quantify the geometric deviations of additively manufactured parts from a large data set of laser-scanned coordinates using an unsupervised machine learning (ML) approach called the self-organizing map (SOM). The central hypothesis is that clusters recognized by the SOM correspond to specific types of geometric deviations, which in turn are linked to certain AM process conditions. This hypothesis is tested on parts made while varying process conditions in the fused filament fabrication (FFF) AM process. The outcomes of this research are as follows: (1) visualizing and quantifying the link between process conditions and geometric accuracy in FFF and (2) significantly reducing the amount of point cloud data required for characterizing of geometric accuracy. The significance of this research is that this unsupervised ML approach resulted in less than 3% of over 1 million data points being required to fully quantify the part geometric accuracy.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleQuantifying Geometric Accuracy With Unsupervised Machine Learning: Using Self-Organizing Map on Fused Filament Fabrication Additive Manufacturing Parts
    typeJournal Paper
    journal volume140
    journal issue3
    journal titleJournal of Manufacturing Science and Engineering
    identifier doi10.1115/1.4038598
    journal fristpage31011
    journal lastpage031011-12
    treeJournal of Manufacturing Science and Engineering:;2018:;volume( 140 ):;issue: 003
    contenttypeFulltext
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