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    Physics-Informed Fully Convolutional Networks for Forward Prediction of Temperature Field and Inverse Estimation of Thermal Diffusivity

    Source: Journal of Computing and Information Science in Engineering:;2024:;volume( 024 ):;issue: 011::page 111004-1
    Author:
    Zhu, Tong
    ,
    Zheng, Qiye
    ,
    Lu, Yanglong
    DOI: 10.1115/1.4064555
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: Physics-informed neural networks (PINNs) are a novel approach to solving partial differential equations (PDEs) through deep learning. They offer a unified manner for solving forward and inverse problems, which is beneficial for various engineering problems, including heat transfer analysis. However, traditional PINNs suffer from low accuracy and efficiency due to the fully-connected neural network framework and the method to incorporate physical laws. In this paper, a novel physics-informed learning architecture, named physics-informed fully convolutional networks (PIFCNs), is developed to simultaneously solve forward and inverse problems in thermal conduction. The use of fully convolutional networks (FCNs) significantly reduces the density of connections. Thus, the computational cost is reduced. With the advantage of the nodal-level match between inputs and outputs in FCNs, the output solution can be used directly to formulate discretized PDEs via a finite difference method, which is more accurate and efficient than the traditional approach in PINNs. The results demonstrate that PIFCNs can flexibly implement Dirichlet and Neumann boundary conditions to predict temperature distribution. Remarkably, PIFCNs can also estimate unknown thermal diffusivity with an accuracy exceeding 99%, even with incomplete boundaries and limited sampling data. The results obtained from PIFCNs outperform those obtained from PINNs.
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      Physics-Informed Fully Convolutional Networks for Forward Prediction of Temperature Field and Inverse Estimation of Thermal Diffusivity

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4303187
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    contributor authorZhu, Tong
    contributor authorZheng, Qiye
    contributor authorLu, Yanglong
    date accessioned2024-12-24T19:02:33Z
    date available2024-12-24T19:02:33Z
    date copyright7/22/2024 12:00:00 AM
    date issued2024
    identifier issn1530-9827
    identifier otherjcise_24_11_111004.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4303187
    description abstractPhysics-informed neural networks (PINNs) are a novel approach to solving partial differential equations (PDEs) through deep learning. They offer a unified manner for solving forward and inverse problems, which is beneficial for various engineering problems, including heat transfer analysis. However, traditional PINNs suffer from low accuracy and efficiency due to the fully-connected neural network framework and the method to incorporate physical laws. In this paper, a novel physics-informed learning architecture, named physics-informed fully convolutional networks (PIFCNs), is developed to simultaneously solve forward and inverse problems in thermal conduction. The use of fully convolutional networks (FCNs) significantly reduces the density of connections. Thus, the computational cost is reduced. With the advantage of the nodal-level match between inputs and outputs in FCNs, the output solution can be used directly to formulate discretized PDEs via a finite difference method, which is more accurate and efficient than the traditional approach in PINNs. The results demonstrate that PIFCNs can flexibly implement Dirichlet and Neumann boundary conditions to predict temperature distribution. Remarkably, PIFCNs can also estimate unknown thermal diffusivity with an accuracy exceeding 99%, even with incomplete boundaries and limited sampling data. The results obtained from PIFCNs outperform those obtained from PINNs.
    publisherThe American Society of Mechanical Engineers (ASME)
    titlePhysics-Informed Fully Convolutional Networks for Forward Prediction of Temperature Field and Inverse Estimation of Thermal Diffusivity
    typeJournal Paper
    journal volume24
    journal issue11
    journal titleJournal of Computing and Information Science in Engineering
    identifier doi10.1115/1.4064555
    journal fristpage111004-1
    journal lastpage111004-12
    page12
    treeJournal of Computing and Information Science in Engineering:;2024:;volume( 024 ):;issue: 011
    contenttypeFulltext
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