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    Recent Advances and Applications of Machine Learning in Experimental Solid Mechanics: A Review

    Source: Applied Mechanics Reviews:;2023:;volume( 075 ):;issue: 006::page 61001-1
    Author:
    Jin, Hanxun
    ,
    Zhang, Enrui
    ,
    Espinosa, Horacio D.
    DOI: 10.1115/1.4062966
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: For many decades, experimental solid mechanics has played a crucial role in characterizing and understanding the mechanical properties of natural and novel artificial materials. Recent advances in machine learning (ML) provide new opportunities for the field, including experimental design, data analysis, uncertainty quantification, and inverse problems. As the number of papers published in recent years in this emerging field is growing exponentially, it is timely to conduct a comprehensive and up-to-date review of recent ML applications in experimental solid mechanics. Here, we first provide an overview of common ML algorithms and terminologies that are pertinent to this review, with emphasis placed on physics-informed and physics-based ML methods. Then, we provide thorough coverage of recent ML applications in traditional and emerging areas of experimental mechanics, including fracture mechanics, biomechanics, nano- and micromechanics, architected materials, and two-dimensional materials. Finally, we highlight some current challenges of applying ML to multimodality and multifidelity experimental datasets, quantifying the uncertainty of ML predictions, and proposing several future research directions. This review aims to provide valuable insights into the use of ML methods and a variety of examples for researchers in solid mechanics to integrate into their experiments.
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      Recent Advances and Applications of Machine Learning in Experimental Solid Mechanics: A Review

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4294311
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    contributor authorJin, Hanxun
    contributor authorZhang, Enrui
    contributor authorEspinosa, Horacio D.
    date accessioned2023-11-29T18:40:31Z
    date available2023-11-29T18:40:31Z
    date copyright7/28/2023 12:00:00 AM
    date issued7/28/2023 12:00:00 AM
    date issued2023-07-28
    identifier issn0003-6900
    identifier otheramr_075_06_061001.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4294311
    description abstractFor many decades, experimental solid mechanics has played a crucial role in characterizing and understanding the mechanical properties of natural and novel artificial materials. Recent advances in machine learning (ML) provide new opportunities for the field, including experimental design, data analysis, uncertainty quantification, and inverse problems. As the number of papers published in recent years in this emerging field is growing exponentially, it is timely to conduct a comprehensive and up-to-date review of recent ML applications in experimental solid mechanics. Here, we first provide an overview of common ML algorithms and terminologies that are pertinent to this review, with emphasis placed on physics-informed and physics-based ML methods. Then, we provide thorough coverage of recent ML applications in traditional and emerging areas of experimental mechanics, including fracture mechanics, biomechanics, nano- and micromechanics, architected materials, and two-dimensional materials. Finally, we highlight some current challenges of applying ML to multimodality and multifidelity experimental datasets, quantifying the uncertainty of ML predictions, and proposing several future research directions. This review aims to provide valuable insights into the use of ML methods and a variety of examples for researchers in solid mechanics to integrate into their experiments.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleRecent Advances and Applications of Machine Learning in Experimental Solid Mechanics: A Review
    typeJournal Paper
    journal volume75
    journal issue6
    journal titleApplied Mechanics Reviews
    identifier doi10.1115/1.4062966
    journal fristpage61001-1
    journal lastpage61001-24
    page24
    treeApplied Mechanics Reviews:;2023:;volume( 075 ):;issue: 006
    contenttypeFulltext
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