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    Symbolic Deep Learning for Structural System Identification

    Source: Journal of Structural Engineering:;2022:;Volume ( 148 ):;issue: 009::page 04022116
    Author:
    Zhao Chen
    ,
    Yang Liu
    ,
    Hao Sun
    DOI: 10.1061/(ASCE)ST.1943-541X.0003405
    Publisher: ASCE
    Abstract: Closed-form model expression is commonly required for parametric data assimilation (e.g., model updating, damage quantification, and so on). However, epistemic bias due to fixing the model class is a challenging issue for structural identification. Furthermore, it is sometimes hard to derive explicit expressions for structural mechanisms such as damping and nonlinear restoring forces. Although existing model class selection methods are beneficial to reduce the model uncertainty, the primary issue lies in their limitation to a small number of predefined model choices. We propose a symbolic deep learning framework that alleviates the constraint of fixed model classes and lets the data more flexibly determine the model type and discover the symbolic invariance of the structural system. A design principle for symbolic neural networks has been developed to leverage domain knowledge and translate data to flexibly symbolic equations of motion with a good predictive capacity for new data. A two-stage model selection strategy is proposed to conduct adaptive pruning on network and equation levels by balancing the model sparsity and the goodness of fit. The proposed method’s expressive strengths and weaknesses have been analyzed in several numerical case studies, including systems with nonlinear damping, restoring force, and chaotic behavior. Results from an experimental case study revealed the potential of the proposed method for flexibly interpreting hidden mechanisms for real-world applications. Finally, we discuss necessary improvements to transfer this computational method for practical applications.
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      Symbolic Deep Learning for Structural System Identification

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4286707
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    contributor authorZhao Chen
    contributor authorYang Liu
    contributor authorHao Sun
    date accessioned2022-08-18T12:29:42Z
    date available2022-08-18T12:29:42Z
    date issued2022/06/24
    identifier other%28ASCE%29ST.1943-541X.0003405.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4286707
    description abstractClosed-form model expression is commonly required for parametric data assimilation (e.g., model updating, damage quantification, and so on). However, epistemic bias due to fixing the model class is a challenging issue for structural identification. Furthermore, it is sometimes hard to derive explicit expressions for structural mechanisms such as damping and nonlinear restoring forces. Although existing model class selection methods are beneficial to reduce the model uncertainty, the primary issue lies in their limitation to a small number of predefined model choices. We propose a symbolic deep learning framework that alleviates the constraint of fixed model classes and lets the data more flexibly determine the model type and discover the symbolic invariance of the structural system. A design principle for symbolic neural networks has been developed to leverage domain knowledge and translate data to flexibly symbolic equations of motion with a good predictive capacity for new data. A two-stage model selection strategy is proposed to conduct adaptive pruning on network and equation levels by balancing the model sparsity and the goodness of fit. The proposed method’s expressive strengths and weaknesses have been analyzed in several numerical case studies, including systems with nonlinear damping, restoring force, and chaotic behavior. Results from an experimental case study revealed the potential of the proposed method for flexibly interpreting hidden mechanisms for real-world applications. Finally, we discuss necessary improvements to transfer this computational method for practical applications.
    publisherASCE
    titleSymbolic Deep Learning for Structural System Identification
    typeJournal Article
    journal volume148
    journal issue9
    journal titleJournal of Structural Engineering
    identifier doi10.1061/(ASCE)ST.1943-541X.0003405
    journal fristpage04022116
    journal lastpage04022116-14
    page14
    treeJournal of Structural Engineering:;2022:;Volume ( 148 ):;issue: 009
    contenttypeFulltext
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