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    Uncertainty Quantification With Mixed Data by Hybrid Convolutional Neural Network for Additive Manufacturing

    Source: ASCE-ASME J Risk and Uncert in Engrg Sys Part B Mech Engrg:;2024:;volume( 010 ):;issue: 003::page 31103-1
    Author:
    Yin, Jianhua
    ,
    Hu, Zhen
    ,
    Du, Xiaoping
    DOI: 10.1115/1.4065444
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: Surrogate models have become increasingly essential for replacing simulation models in additive manufacturing (AM) process analysis and design, particularly for assessing the impact of microstructural variations and process imperfections (aleatory uncertainty). However, these surrogate models can introduce predictive errors, introducing epistemic uncertainty. The challenge arises when dealing with image input data, which is inherently high-dimensional, making it challenging to apply existing uncertainty quantification (UQ) techniques effectively. To address this challenge, this study develops a new UQ methodology based on an existing concept of combining convolutional neural network (CNN) and Gaussian process (GP) regression (GPR). This CNN-GP method converts both numerical and image inputs into a unified, larger-sized image dataset, enabling direct dimension reduction with CNN. Subsequently, GPR constructs the surrogate model, not only providing predictions but also quantifying the associated model uncertainty. This approach ensures that the surrogate model considers both input-related aleatory uncertainty and model-related epistemic uncertainty when it is used for prediction, enhancing confidence in image-based AM simulations and informed decision-making. Three examples validate the high accuracy and effectiveness of the proposed method.
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      Uncertainty Quantification With Mixed Data by Hybrid Convolutional Neural Network for Additive Manufacturing

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    • ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part B: Mechanical Engineering

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    contributor authorYin, Jianhua
    contributor authorHu, Zhen
    contributor authorDu, Xiaoping
    date accessioned2024-12-24T19:18:13Z
    date available2024-12-24T19:18:13Z
    date copyright5/28/2024 12:00:00 AM
    date issued2024
    identifier issn2332-9017
    identifier otherrisk_010_03_031103.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4303695
    description abstractSurrogate models have become increasingly essential for replacing simulation models in additive manufacturing (AM) process analysis and design, particularly for assessing the impact of microstructural variations and process imperfections (aleatory uncertainty). However, these surrogate models can introduce predictive errors, introducing epistemic uncertainty. The challenge arises when dealing with image input data, which is inherently high-dimensional, making it challenging to apply existing uncertainty quantification (UQ) techniques effectively. To address this challenge, this study develops a new UQ methodology based on an existing concept of combining convolutional neural network (CNN) and Gaussian process (GP) regression (GPR). This CNN-GP method converts both numerical and image inputs into a unified, larger-sized image dataset, enabling direct dimension reduction with CNN. Subsequently, GPR constructs the surrogate model, not only providing predictions but also quantifying the associated model uncertainty. This approach ensures that the surrogate model considers both input-related aleatory uncertainty and model-related epistemic uncertainty when it is used for prediction, enhancing confidence in image-based AM simulations and informed decision-making. Three examples validate the high accuracy and effectiveness of the proposed method.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleUncertainty Quantification With Mixed Data by Hybrid Convolutional Neural Network for Additive Manufacturing
    typeJournal Paper
    journal volume10
    journal issue3
    journal titleASCE-ASME J Risk and Uncert in Engrg Sys Part B Mech Engrg
    identifier doi10.1115/1.4065444
    journal fristpage31103-1
    journal lastpage31103-10
    page10
    treeASCE-ASME J Risk and Uncert in Engrg Sys Part B Mech Engrg:;2024:;volume( 010 ):;issue: 003
    contenttypeFulltext
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