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    Multifidelity PhysicsConstrained Neural Networks With Minimax Architecture

    Source: Journal of Computing and Information Science in Engineering:;2022:;volume( 023 ):;issue: 003::page 31008
    Author:
    Liu, Dehao;Pusarla, Pranav;Wang, Yan
    DOI: 10.1115/1.4055316
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: Data sparsity is still the main challenge to apply machine learning models to solve complex scientific and engineering problems. The root cause is the “curse of dimensionality” in training these models. Training algorithms need to explore and exploit in a very highdimensional parameter space to search the optimal parameters for complex models. In this study, a new scheme of multifidelity physicsconstrained neural networks with minimax architecture is proposed to improve the data efficiency of training neural networks by incorporating physical knowledge as constraints and sampling data with various fidelities. In this new framework, fully connected neural networks with two levels of fidelities are combined to improve the prediction accuracy. The lowfidelity neural network is used to approximate the lowfidelity data, whereas the highfidelity neural network is adopted to approximate the correlation function between the lowfidelity and highfidelity data. To systematically search the optimal weights of various losses for reducing the training time, the DualDimer algorithm is adopted to search highorder saddle points of the minimax optimization problem. The proposed framework is demonstrated with twodimensional heat transfer, phase transition, and dendritic growth problems, which are fundamental in materials modeling. With the same set of training data, the prediction error of the multifidelity physicsconstrained neural network with minimax architecture can be two orders of magnitude lower than that of the multifidelity neural network with minimax architecture.
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      Multifidelity PhysicsConstrained Neural Networks With Minimax Architecture

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4288708
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    contributor authorLiu, Dehao;Pusarla, Pranav;Wang, Yan
    date accessioned2023-04-06T12:53:22Z
    date available2023-04-06T12:53:22Z
    date copyright12/9/2022 12:00:00 AM
    date issued2022
    identifier issn15309827
    identifier otherjcise_23_3_031008.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4288708
    description abstractData sparsity is still the main challenge to apply machine learning models to solve complex scientific and engineering problems. The root cause is the “curse of dimensionality” in training these models. Training algorithms need to explore and exploit in a very highdimensional parameter space to search the optimal parameters for complex models. In this study, a new scheme of multifidelity physicsconstrained neural networks with minimax architecture is proposed to improve the data efficiency of training neural networks by incorporating physical knowledge as constraints and sampling data with various fidelities. In this new framework, fully connected neural networks with two levels of fidelities are combined to improve the prediction accuracy. The lowfidelity neural network is used to approximate the lowfidelity data, whereas the highfidelity neural network is adopted to approximate the correlation function between the lowfidelity and highfidelity data. To systematically search the optimal weights of various losses for reducing the training time, the DualDimer algorithm is adopted to search highorder saddle points of the minimax optimization problem. The proposed framework is demonstrated with twodimensional heat transfer, phase transition, and dendritic growth problems, which are fundamental in materials modeling. With the same set of training data, the prediction error of the multifidelity physicsconstrained neural network with minimax architecture can be two orders of magnitude lower than that of the multifidelity neural network with minimax architecture.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleMultifidelity PhysicsConstrained Neural Networks With Minimax Architecture
    typeJournal Paper
    journal volume23
    journal issue3
    journal titleJournal of Computing and Information Science in Engineering
    identifier doi10.1115/1.4055316
    journal fristpage31008
    journal lastpage3100810
    page10
    treeJournal of Computing and Information Science in Engineering:;2022:;volume( 023 ):;issue: 003
    contenttypeFulltext
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