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Physics Informed Neural Networks to Solve Forward and Inverse Fluid Flow and Heat Transfer Problems.
紀錄類型:
書目-電子資源 : Monograph/item
正題名/作者:
Physics Informed Neural Networks to Solve Forward and Inverse Fluid Flow and Heat Transfer Problems./
作者:
Aliakbari, Maryam.
面頁冊數:
1 online resource (101 pages)
附註:
Source: Dissertations Abstracts International, Volume: 84-11, Section: B.
Contained By:
Dissertations Abstracts International84-11B.
標題:
Mechanical engineering. -
電子資源:
http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=30490603click for full text (PQDT)
ISBN:
9798379587307
Physics Informed Neural Networks to Solve Forward and Inverse Fluid Flow and Heat Transfer Problems.
Aliakbari, Maryam.
Physics Informed Neural Networks to Solve Forward and Inverse Fluid Flow and Heat Transfer Problems.
- 1 online resource (101 pages)
Source: Dissertations Abstracts International, Volume: 84-11, Section: B.
Thesis (Ph.D.)--Northern Arizona University, 2023.
Includes bibliographical references
This dissertation proposes novel approaches to address challenges in solving fluid flow and transport problems in heterogeneous systems using deep learning methods. The first approach is a multi-fidelity modeling approach that combines data generated by a low-fidelity computational fluid dynamics (CFD) solution strategy and data-free physics-informed neural networks (PINN) to obtain improved accuracy. High-fidelity models of multiphysics fluid flow processes are often computationally expensive. On the other hand, less accurate low-fidelity models could be efficiently executed to provide an approximation to the solution. Multi-fidelity approaches combine high-fidelity and low-fidelity data and/or models to obtain a desirable balance between computational efficiency and accuracy. In the proposed approach, transfer learning based on low-fidelity CFD data is used to initialize PINN, which is then used to obtain the final results without any high-fidelity training data. Several partial differential equations are solved to predict velocity and temperature in different fluid flow, heat transfer, and porous media transport problems. The proposed approach significantly improves the accuracy of low-fidelity CFD data and also improves the convergence speed and accuracy of PINN.The second approach is an ensemble PINN (ePINN) method that is proposed to solve the uniqueness issue of inverse problems. In inverse modeling, measurement data are used to estimate unknown parameters that vary in space. However, due to the spatial variability of these unknown parameters in heterogeneous systems (e.g., permeability or diffusivity), the inverse problem is ill-posed and infinite solutions are possible. PINN has become a popular approach for solving inverse problems but is sensitive to hyperparameters and can produce unrealistic patterns. The ePINN approach uses an ensemble of parallel neural networks that are initialized with a meaningful pattern of the unknown parameter. These parallel networks provide a basis that is fed into a main neural network that is trained using PINN. It is shown that an appropriately selected set of patterns can guide PINN in producing more realistic results that are relevant to the problem of interest. The proposed ePINN approach increases the accuracy in inverse problems and mitigates the challenges associated with non-uniqueness.The third approach is a novel method called ensemble deep operator neural network (eDeepONet), which is designed to solve the solution operators of partial differential equations (PDEs) using deep neural networks. eDeepONet involves training multiple sub-DeepONets on smaller subsets of the dataset, which are then combined in a fully connected neural network to predict the final solution. eDeepONet reduces the complexity of the training process, improves convergence, and provides more accurate solutions compared to the traditional DeepONet approach. Additionally, eDeepONet is designed to handle parametric PDE equations and does not require explicit knowledge of the PDE equation or its boundary conditions, making it more flexible and applicable in a wider range of applications. The effectiveness of eDeepONet in enhancing prediction accuracy and improving convergence is demonstrated on a 2D diffusion problem.Overall, the proposed approaches demonstrate the potential of deep learning methods in solving challenging fluid flow and transport problems in homogeneous and heterogeneous systems. The multi-fidelity approach improves the accuracy of low-fidelity data and reduces computational cost. The ePINN approach mitigates the challenges associated with non- uniqueness in inverse problems. The eDeepONet approach reduces the complexity of the training process, improves convergence, and provides more accurate solutions for PDEs. These advances in deep learning methods have the potential to revolutionize our ability to model and predict fluid flow and transport in a wide range of applications.
Electronic reproduction.
Ann Arbor, Mich. :
ProQuest,
2023
Mode of access: World Wide Web
ISBN: 9798379587307Subjects--Topical Terms:
649730
Mechanical engineering.
Subjects--Index Terms:
Computational fluid dynamicsIndex Terms--Genre/Form:
542853
Electronic books.
Physics Informed Neural Networks to Solve Forward and Inverse Fluid Flow and Heat Transfer Problems.
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