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  • Learning to Discretize: Solving 1D Scalar Conservation Laws via Deep Reinforcement Learning

    Yufei Wang, Ziju Shen, Zichao Long, Bin Dong
    2020-11-18
    62322 3419 Pages:2158-2179
  • Accurate Adaptive Deep Learning Method for Solving Elliptic Problems

    Jinyong Ying, Yaqi Xie, Jiao Li, Hongqiao Wang
    2025-09-02
    367 59 Pages:849-876
  • Deep Learning-Based Computational Method for Soft Matter Dynamics: Deep Onsager-Machlup Method

    Zhihao Li, Boyi Zou, Haiqin Wang, Jian Su, Dong Wang, Xinpeng Xu
    2025-09-02
    263 68 Pages:353-382
  • DL-PDE: Deep-Learning Based Data-Driven Discovery of Partial Differential Equations from Discrete and Noisy Data

    Hao Xu, Haibin Chang, Dongxiao Zhang
    2021-01-13
    54997 3468 Pages:698-728
  • An Augmented Lagrangian Deep Learning Method for Variational Problems with Essential Boundary Conditions

    Jianguo Huang, Haoqin Wang, Tao Zhou
    2022-03-03
    50442 3265 Pages:966-986
  • Convergence Analysis for Over-Parameterized Deep Learning

    Yuling Jiao, Xiliang Lu, Peiying Wu, Jerry Zhijian Yang
    2024-07-29
    157 147 Pages:71-103
  • Generalization Error in the Deep Ritz Method with Smooth Activation Functions

    Janne Siipola
    2024-04-10
    24120 2222 Pages:761-815 Open-access
  • Convergence Rate Analysis for Deep Ritz Method

    Chenguang Duan, Yuling Jiao, Yanming Lai, Dingwei Li, Xiliang Lu, Jerry Zhijian Yang
    2022-03-30
    58803 3318 Pages:1020-1048
  • Physics-Driven Learning of the Steady Navier-Stokes Equations Using Deep Convolutional Neural Networks

    Hao Ma, Yuxuan Zhang, Nils Thuerey, Xiangyu Hu, Oskar J. Haidn
    2022-09-29
    42625 3275 Pages:715-736
  • Newton’s Method and Its Hybrid with Machine Learning for Navier-Stokes Darcy Models Discretized by Mixed Element Methods

    Jianguo Huang, Hui Peng, Haohao Wu
    2025-01-22
    187 97 Pages:30-60
  • Data Generation-Based Operator Learning for Solving Partial Differential Equations on Unbounded Domains

    Jihong Wang, Xin Wang, Jing Li, Bin Liu
    2025-05-29
    194 50 Pages:1383-1416
  • Deep Nitsche Method: Deep Ritz Method with Essential Boundary Conditions

    Yulei Liao, Pingbing Ming
    2021-03-24
    53158 3424 Pages:1365-1384
  • Ensemble Gradient for Learning Turbulence Models from Indirect Observations

    Carlos A. Michelén Ströfer, Xin-Lei Zhang, Heng Xiao
    2021-10-26
    80569 3686 Pages:1269-1289
  • A Deep Learning Modeling Framework to Capture Mixing Patterns in Reactive-Transport Systems

    N. V. Jagtap, M. K. Mudunuru, K. B. Nakshatrala
    2021-12-06
    49247 3959 Pages:188-223
  • Deep Unfitted Nitsche Method for Elliptic Interface Problems

    Hailong Guo, Xu Yang
    2022-03-30
    52499 3243 Pages:1162-1179
  • Dirichlet-Neumann Learning Algorithm for Solving Elliptic Interface Problems

    Qi Sun, Xuejun Xu, Haotian Yi
    2025-07-11
    5086 463 Pages:248-284
  • Extended Physics-Informed Neural Networks (XPINNs): A Generalized Space-Time Domain Decomposition Based Deep Learning Framework for Nonlinear Partial Differential Equations

    Ameya D. Jagtap, George Em Karniadakis
    2020-11-18
    147761 6053 Pages:2002-2041
  • Frequency Principle: Fourier Analysis Sheds Light on Deep Neural Networks

    Zhi-Qin John Xu, Yaoyu Zhang, Tao Luo, Yanyang Xiao, Zheng Ma
    2020-11-18
    85482 4069 Pages:1746-1767
  • Learning Specialized Activation Functions for Physics-Informed Neural Networks

    Honghui Wang, Lu Lu, Shiji Song, Gao Huang
    2023-11-08
    34363 2783 Pages:869-906
  • AutoAMG($θ$): An Auto-Tuned AMG Method Based on Deep Learning for Strong Threshold

    Haifeng Zou, Xiaowen Xu, Chen-Song Zhang, Zeyao Mo
    2024-07-29
    155 138 Pages:200-220
  • Butterfly-Net: Optimal Function Representation Based on Convolutional Neural Networks

    Yingzhou Li, Xiuyuan Cheng, Jianfeng Lu
    2020-11-18
    63549 3432 Pages:1838-1885
  • Continuous-Variable Deep Quantum Neural Networks for Flexible Learning of Structured Classical Information

    Jasvith Raj Basani, Aranya Bhattacherjee
    2021-08-10
    46112 2967 Pages:1216-1231
  • Multi-Scale Deep Neural Network (MscaleDNN) Methods for Oscillatory Stokes Flows in Complex Domains

    Bo Wang, Wenzhong Zhang, Wei Cai
    2020-11-18
    64184 3294 Pages:2139-2157
  • A Variational Neural Network Approach for Glacier Modelling with Nonlinear Rheology

    Tiangang Cui, Zhongjian Wang, Zhiwen Zhang
    2023-11-08
    30734 2548 Pages:934-954
  • Deep Potential: A General Representation of a Many-Body Potential Energy Surface

    Jiequn Han, Linfeng Zhang, Roberto Car & Weinan E
    2018-08-21
    94494 6411 Pages:629-639 Open-access
  • VPVnet: A Velocity-Pressure-Vorticity Neural Network Method for the Stokes’ Equations under Reduced Regularity

    Yujie Liu, Chao Yang
    2022-03-03
    45431 3205 Pages:739-770
  • A Deep Spatio-Temporal Forecasting Model for Multi-Site Weather Prediction Post-Processing

    Wenjia Kong, Haochen Li, Chen Yu, Jiangjiang Xia, Yanyan Kang, Pingwen Zhang
    2021-12-06
    53419 4553 Pages:131-153
1 - 27 of 42 items
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