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    Metamodeling through Deep Learning of High-Dimensional Dynamic Nonlinear Systems Driven by General Stochastic Excitation

    Source: Journal of Structural Engineering:;2022:;Volume ( 148 ):;issue: 011::page 04022186
    Author:
    Bowei Li
    ,
    Seymour M. J. Spence
    DOI: 10.1061/(ASCE)ST.1943-541X.0003499
    Publisher: ASCE
    Abstract: Modern performance evaluation and design procedures for structural systems against severe natural hazards generally require the propagation of uncertainty through the repeated evaluation of high-dimensional nonlinear dynamic systems. This often leads to intractable computational problems. A potential remedy to this situation is to accelerate the evaluation of the dynamic system through leveraging metamodeling techniques. In this work, deep learning is combined with a data-driven model order reduction technique for defining a highly efficient and nonintrusive metamodeling approach for nonlinear dynamic systems subject to general stochastic excitation. Potentially high-dimensional building structures are reduced first through Galerkin projection by leveraging a set of proper orthogonal decomposition bases via singular value decomposition. A long-short term memory deep learning network is subsequently trained to mimic the mapping from the space of the excitation to the responses of the reduced model. In addition, to accelerate the efficiency of the network, wavelet approximations of the reduced excitation and responses are incorporated. The potential of the metamodeling framework is illustrated through the application to both a multi-degree-of-freedom Bouc–Wen system as well as a multi-degree-of-freedom fiber-discretized nonlinear steel moment resisting frame. The calibrated metamodels are shown to be over three orders of magnitude faster than state-of-the-art high-fidelity nonlinear dynamic solvers while preserving remarkable accuracy in reproducing both global and local dynamic response.
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      Metamodeling through Deep Learning of High-Dimensional Dynamic Nonlinear Systems Driven by General Stochastic Excitation

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    contributor authorBowei Li
    contributor authorSeymour M. J. Spence
    date accessioned2023-04-07T00:37:15Z
    date available2023-04-07T00:37:15Z
    date issued2022/11/01
    identifier other%28ASCE%29ST.1943-541X.0003499.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4289408
    description abstractModern performance evaluation and design procedures for structural systems against severe natural hazards generally require the propagation of uncertainty through the repeated evaluation of high-dimensional nonlinear dynamic systems. This often leads to intractable computational problems. A potential remedy to this situation is to accelerate the evaluation of the dynamic system through leveraging metamodeling techniques. In this work, deep learning is combined with a data-driven model order reduction technique for defining a highly efficient and nonintrusive metamodeling approach for nonlinear dynamic systems subject to general stochastic excitation. Potentially high-dimensional building structures are reduced first through Galerkin projection by leveraging a set of proper orthogonal decomposition bases via singular value decomposition. A long-short term memory deep learning network is subsequently trained to mimic the mapping from the space of the excitation to the responses of the reduced model. In addition, to accelerate the efficiency of the network, wavelet approximations of the reduced excitation and responses are incorporated. The potential of the metamodeling framework is illustrated through the application to both a multi-degree-of-freedom Bouc–Wen system as well as a multi-degree-of-freedom fiber-discretized nonlinear steel moment resisting frame. The calibrated metamodels are shown to be over three orders of magnitude faster than state-of-the-art high-fidelity nonlinear dynamic solvers while preserving remarkable accuracy in reproducing both global and local dynamic response.
    publisherASCE
    titleMetamodeling through Deep Learning of High-Dimensional Dynamic Nonlinear Systems Driven by General Stochastic Excitation
    typeJournal Article
    journal volume148
    journal issue11
    journal titleJournal of Structural Engineering
    identifier doi10.1061/(ASCE)ST.1943-541X.0003499
    journal fristpage04022186
    journal lastpage04022186_15
    page15
    treeJournal of Structural Engineering:;2022:;Volume ( 148 ):;issue: 011
    contenttypeFulltext
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