A Priori Knowledge-Based Physics-Informed Neural Networks for Electromagnetic Inverse Scattering

被引:1
|
作者
Hu, Yi-Di [1 ]
Wang, Xiao-Hua [1 ]
Zhou, Hui [1 ]
Wang, Lei [1 ]
机构
[1] Univ Elect Sci & Technol China, Sch Phys, Chengdu 611731, Peoples R China
来源
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING | 2024年 / 62卷
基金
中国国家自然科学基金;
关键词
Deep learning; electromagnetic inverse scattering; full-wave inversion; physics-informed neural network (PINN); QUALITY;
D O I
10.1109/TGRS.2024.3371528
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Based on the physics-informed neural network (PINN) method, a two-step inverse scattering method is proposed to improve the efficiency and accuracy of the inversion in this work. The first step is to calculate the total fields and the initial solution of permittivity distribution in the domain of interest (DoI) by a traditional inversion algorithm, the distorted finite-difference-frequency-domain-based iterative method (DFIM), as a priori information for the cascaded PINNs. The second step is to use the calculated a priori information as additional parts of the data loss term in the proposed PINN framework for network training. Several typical numerical examples and one experimental example are considered to validate the proposed method. Inversion results show that the proposed method has good accuracy, efficiency, and robustness to noise. Compared with the data-driven deep learning methods in electromagnetic inversion, the proposed method belongs to an unsupervised learning framework and can handle more general problems. Compared with the traditional inverse algorithms, it is more efficient and accurate. In general, the proposed two-step method inherits the advantages of both traditional deep learning methods and inverse scattering methods. Importantly, it also establishes the bridge between traditional inverse scattering algorithms and deep learning methods.
引用
收藏
页码:1 / 9
页数:9
相关论文
共 50 条
  • [31] A Compact Memristor Model Based on Physics-Informed Neural Networks
    Lee, Younghyun
    Kim, Kyeongmin
    Lee, Jonghwan
    MICROMACHINES, 2024, 15 (02)
  • [32] Physics-informed neural networks based cascade loss model
    Feng Y.
    Song X.
    Yuan W.
    Lu H.
    Hangkong Dongli Xuebao/Journal of Aerospace Power, 2023, 38 (07): : 845 - 855
  • [33] Enhanced physics-informed neural networks for hyperelasticity
    Abueidda, Diab W.
    Koric, Seid
    Guleryuz, Erman
    Sobh, Nahil A.
    INTERNATIONAL JOURNAL FOR NUMERICAL METHODS IN ENGINEERING, 2023, 124 (07) : 1585 - 1601
  • [34] SOBOLEV TRAINING FOR PHYSICS-INFORMED NEURAL NETWORKS
    Son, Hwijae
    Jang, Jin woo
    Han, Woo jin
    Hwang, Hyung ju
    COMMUNICATIONS IN MATHEMATICAL SCIENCES, 2023, 21 (06) : 1679 - 1705
  • [35] Physics-informed neural networks for diffraction tomography
    Saba, Amirhossein
    Gigli, Carlo
    Ayoub, Ahmed B.
    Psaltis, Demetri
    ADVANCED PHOTONICS, 2022, 4 (06):
  • [36] Comparison of physics-informed neural networks in solving electromagnetic interior scattering problems including a relativistic beam current
    Fujita, Kazuhiro
    JOURNAL OF ADVANCED SIMULATION IN SCIENCE AND ENGINEERING, 2024, 11 (01): : 73 - 82
  • [37] Physics-informed neural networks for consolidation of soils
    Zhang, Sheng
    Lan, Peng
    Li, Hai-Chao
    Tong, Chen-Xi
    Sheng, Daichao
    ENGINEERING COMPUTATIONS, 2022, 39 (07) : 2845 - 2865
  • [38] Physics-informed neural networks for diffraction tomography
    Amirhossein Saba
    Carlo Gigli
    Ahmed B.Ayoub
    Demetri Psaltis
    Advanced Photonics, 2022, 4 (06) : 48 - 59
  • [39] Physics-Informed Neural Networks for Quantum Control
    Norambuena, Ariel
    Mattheakis, Marios
    Gonzalez, Francisco J.
    Coto, Raul
    PHYSICAL REVIEW LETTERS, 2024, 132 (01)
  • [40] Robust Variational Physics-Informed Neural Networks
    Rojas, Sergio
    Maczuga, Pawel
    Munoz-Matute, Judit
    Pardo, David
    Paszynski, Maciej
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2024, 425