Physics-informed neural networks in support of modal wavenumber estimation

被引:0
|
作者
Yoon, Seunghyun [1 ]
Park, Yongsung [2 ]
Lee, Keunhwa [3 ]
Seong, Woojae [4 ,5 ]
机构
[1] Seoul Natl Univ, Inst Engn Res, Seoul 08826, South Korea
[2] Univ Calif San Diego, Scripps Inst Oceanog, La Jolla, CA 92093 USA
[3] Sejong Univ, Dept Ocean Syst Engn, Seoul 05006, South Korea
[4] Seoul Natl Univ, Dept Naval Architecture & Ocean Engn, Seoul 08826, South Korea
[5] Seoul Natl Univ, Res Inst Marine Syst Engn, Seoul 08826, South Korea
来源
关键词
HIGH-RESOLUTION ALGORITHM; SHALLOW-WATER; GEOACOUSTIC INVERSION; BAYESIAN OPTIMIZATION; DEPTH ESTIMATION; SOUND SPEED; FIELD; EXTRACTION; RANGE; LOCALIZATION;
D O I
10.1121/10.0030461
中图分类号
O42 [声学];
学科分类号
070206 ; 082403 ;
摘要
A physics-informed neural network (PINN) enables the estimation of horizontal modal wavenumbers using ocean pressure data measured at multiple ranges. Mode representations for the ocean acoustic pressure field are derived from the Hankel transform relationship between the depth-dependent Green's function in the horizontal wavenumber domain and the field in the range domain. We obtain wavenumbers by transforming the range samples to the wavenumber domain, and maintaining range coherence of the data is crucial for accurate wavenumber estimation. In the ocean environment, the sensitivity of phase variations in range often leads to degradation in range coherence. To address this, we propose using OceanPINN [Yoon, Park, Gerstoft, and Seong, J. Acoust. Soc. Am. 155(3), 2037-2049 (2024)] to manage spatially non-coherent data. OceanPINN is trained using the magnitude of the data and predicts phase-refined data. Modal wavenumber estimation methods are then applied to this refined data, where the enhanced range coherence results in improved accuracy. Additionally, sparse Bayesian learning, with its high-resolution capability, further improves the modal wavenumber estimation. The effectiveness of the proposed approach is validated through its application to both simulated and SWellEx-96 experimental data.
引用
收藏
页码:2275 / 2286
页数:12
相关论文
共 50 条
  • [1] Physics-Informed Neural Networks for Satellite State Estimation
    Varey, Jacob
    Ruprecht, Jessica D.
    Tierney, Michael
    Sullenberger, Ryan
    2024 IEEE AEROSPACE CONFERENCE, 2024,
  • [2] Physics-informed neural networks for acoustic boundary admittance estimation
    Schmid, Johannes D.
    Bauerschmidt, Philipp
    Gurbuz, Caglar
    Eser, Martin
    Marburg, Steffen
    MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2024, 215
  • [3] Enforcing Dirichlet boundary conditions in physics-informed neural networks and variational physics-informed neural networks
    Berrone, S.
    Canuto, C.
    Pintore, M.
    Sukumar, N.
    HELIYON, 2023, 9 (08)
  • [4] Separable Physics-Informed Neural Networks
    Cho, Junwoo
    Nam, Seungtae
    Yang, Hyunmo
    Yun, Seok-Bae
    Hong, Youngjoon
    Park, Eunbyung
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 36 (NEURIPS 2023), 2023,
  • [5] Quantum Physics-Informed Neural Networks
    Trahan, Corey
    Loveland, Mark
    Dent, Samuel
    ENTROPY, 2024, 26 (08)
  • [6] Physics-Informed Neural Networks for Unmanned Aerial Vehicle System Estimation
    Bianchi, Domenico
    Epicoco, Nicola
    Di Ferdinando, Mario
    Di Gennaro, Stefano
    Pepe, Pierdomenico
    DRONES, 2024, 8 (12)
  • [7] 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
  • [8] 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
  • [9] Physics-informed neural networks for diffraction tomography
    Saba, Amirhossein
    Gigli, Carlo
    Ayoub, Ahmed B.
    Psaltis, Demetri
    ADVANCED PHOTONICS, 2022, 4 (06):
  • [10] 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