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    Deep Learning–Based Surrogates for Efficient Phase-Field Modeling of Stochastic Quasi-Brittle Materials

    Source: ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part A: Civil Engineering:;2025:;Volume ( 011 ):;issue: 003::page 04025039-1
    Author:
    Xing Lin
    ,
    Shixue Liang
    ,
    Siyi Feng
    DOI: 10.1061/AJRUA6.RUENG-1575
    Publisher: American Society of Civil Engineers
    Abstract: The random microstructure of quasi-brittle materials causes significant uncertainty in their macroscopic properties. The stochastic analysis is crucial for understanding issues related to material strength, deformation, and failure. A deep learning surrogate model for the stochastic analysis of quasi-brittle materials is developed to address computational challenges posed by stochastic finite element method (SFEM) and Monte Carlo modeling. Material randomness is first described by using a stochastic harmonic function method to generate random fields. Phase-field models are then integrated with SFEM to reduce the spurious mesh sensitivity. Stress–strain data from phase-field simulations are used to train the deep learning–based surrogate models, which incorporates a convolutional neural network (CNN) and transformer. Through testing, the CNN model is selected as the surrogate model, with an R2 value of 0.9909 for the training set and 0.9884 for the testing set, demonstrating its accuracy in predicting material behavior. It is also demonstrated in the case studies that the proposed deep learning–based surrogate model significantly reduces computational costs when comparing with SFEM in Monte Carlo modeling.
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      Deep Learning–Based Surrogates for Efficient Phase-Field Modeling of Stochastic Quasi-Brittle Materials

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4307181
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    • ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part A: Civil Engineering

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    contributor authorXing Lin
    contributor authorShixue Liang
    contributor authorSiyi Feng
    date accessioned2025-08-17T22:36:24Z
    date available2025-08-17T22:36:24Z
    date copyright9/1/2025 12:00:00 AM
    date issued2025
    identifier otherAJRUA6.RUENG-1575.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4307181
    description abstractThe random microstructure of quasi-brittle materials causes significant uncertainty in their macroscopic properties. The stochastic analysis is crucial for understanding issues related to material strength, deformation, and failure. A deep learning surrogate model for the stochastic analysis of quasi-brittle materials is developed to address computational challenges posed by stochastic finite element method (SFEM) and Monte Carlo modeling. Material randomness is first described by using a stochastic harmonic function method to generate random fields. Phase-field models are then integrated with SFEM to reduce the spurious mesh sensitivity. Stress–strain data from phase-field simulations are used to train the deep learning–based surrogate models, which incorporates a convolutional neural network (CNN) and transformer. Through testing, the CNN model is selected as the surrogate model, with an R2 value of 0.9909 for the training set and 0.9884 for the testing set, demonstrating its accuracy in predicting material behavior. It is also demonstrated in the case studies that the proposed deep learning–based surrogate model significantly reduces computational costs when comparing with SFEM in Monte Carlo modeling.
    publisherAmerican Society of Civil Engineers
    titleDeep Learning–Based Surrogates for Efficient Phase-Field Modeling of Stochastic Quasi-Brittle Materials
    typeJournal Article
    journal volume11
    journal issue3
    journal titleASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part A: Civil Engineering
    identifier doi10.1061/AJRUA6.RUENG-1575
    journal fristpage04025039-1
    journal lastpage04025039-13
    page13
    treeASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part A: Civil Engineering:;2025:;Volume ( 011 ):;issue: 003
    contenttypeFulltext
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