A Theory-Guided Deep Neural Network for Time Domain Electromagnetic Simulation and Inversion Using a Differentiable Programming Platform

被引:15
|
作者
Hu, Yanyan [1 ]
Jin, Yuchen [1 ]
Wu, Xuqing [2 ]
Chen, Jiefu [1 ]
机构
[1] Univ Houston, Dept Elect & Comp Engn, Houston, TX 77004 USA
[2] Univ Houston, Dept Informat & Logist Technol, Houston, TX 77004 USA
关键词
Matlab; Time-domain analysis; Finite difference methods; Mathematical model; Computational modeling; Receivers; Programming; Differentiable programming platform; finite-difference-time-domain (FDTD) method; PyTorch; recurrent neural network (RNN); theory-guided deep learning;
D O I
10.1109/TAP.2021.3098585
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
In this communication, a trainable theory-guided recurrent neural network (RNN) equivalent to the finite-difference-time-domain (FDTD) method is exploited to formulate electromagnetic propagation, solve Maxwell's equations, and the inverse problem on differentiable programming platform Pytorch. For forward modeling, the computation efficiency is substantially improved compared to conventional FDTD implemented on MATLAB. Gradient computation becomes more precise and faster than the traditional finite difference method benefiting from the accurate and efficient automatic differentiation on the differentiable programming platform. Moreover, by setting the trainable weights of RNN as the material-related parameters, an inverse problem can be solved by training the network. Numerical results demonstrate the effectiveness and efficiency of the method for forward and inverse electromagnetic modeling.
引用
收藏
页码:767 / 772
页数:6
相关论文
共 32 条
  • [1] Solving Time Domain Electromagnetic Problems using a Differentiable Programming Platform
    Hu, Yanyan
    Jin, Yuchen
    Wu, Xuqing
    Chen, Jiefu
    [J]. 2020 IEEE USNC-CNC-URSI NORTH AMERICAN RADIO SCIENCE MEETING (JOINT WITH AP-S SYMPOSIUM), 2020, : 181 - 182
  • [2] Deep learning of subsurface flow via theory-guided neural network
    Wang, Nanzhe
    Zhang, Dongxiao
    Chang, Haibin
    Li, Heng
    [J]. JOURNAL OF HYDROLOGY, 2020, 584
  • [3] A Lagrangian dual-based theory-guided deep neural network
    Rong, Miao
    Zhang, Dongxiao
    Wang, Nanzhe
    [J]. COMPLEX & INTELLIGENT SYSTEMS, 2022, 8 (06) : 4849 - 4862
  • [4] A Lagrangian dual-based theory-guided deep neural network
    Miao Rong
    Dongxiao Zhang
    Nanzhe Wang
    [J]. Complex & Intelligent Systems, 2022, 8 : 4849 - 4862
  • [5] Deep Learning in Sheet Metal Bending With a Novel Theory-Guided Deep Neural Network
    Shiming Liu
    Yifan Xia
    Zhusheng Shi
    Hui Yu
    Zhiqiang Li
    Jianguo Lin
    [J]. IEEE/CAA Journal of Automatica Sinica, 2021, 8 (03) : 565 - 581
  • [6] Deep Learning in Sheet Metal Bending With a Novel Theory-Guided Deep Neural Network
    Liu, Shiming
    Xia, Yifan
    Shi, Zhusheng
    Yu, Hui
    Li, Zhiqiang
    Lin, Jianguo
    [J]. IEEE-CAA JOURNAL OF AUTOMATICA SINICA, 2021, 8 (03) : 565 - 581
  • [7] Theory-guided deep neural network for boiler 3-D NOx concentration distribution prediction
    Tang, Zhenhao
    Sui, Mengxuan
    Wang, Xu
    Xue, Wenyuan
    Yang, Yuan
    Wang, Zhi
    Ouyang, Tinghui
    [J]. ENERGY, 2024, 299
  • [8] Deep-learning-based upscaling method for geologic models via theory-guided convolutional neural network
    Wang, Nanzhe
    Liao, Qinzhuo
    Chang, Haibin
    Zhang, Dongxiao
    [J]. COMPUTATIONAL GEOSCIENCES, 2023, 27 (06) : 913 - 938
  • [9] Deep-learning-based upscaling method for geologic models via theory-guided convolutional neural network
    Nanzhe Wang
    Qinzhuo Liao
    Haibin Chang
    Dongxiao Zhang
    [J]. Computational Geosciences, 2023, 27 : 913 - 938
  • [10] Knock Detection in Combustion Engine Time Series Using a Theory-Guided 1-D Convolutional Neural Network Approach
    Ofner, Andreas Benjamin
    Kefalas, Achilles
    Posch, Stefan
    Geiger, Bernhard Claus
    [J]. IEEE-ASME TRANSACTIONS ON MECHATRONICS, 2022, 27 (05) : 4101 - 4111