Inverse analysis for estimating geotechnical parameters using physics-informed neural networks

被引:0
|
作者
Ito, Shinichi [1 ]
Fukunaga, Ryusei [2 ]
Sako, Kazunari [2 ]
机构
[1] Ritsumeikan Univ, Fac Sci & Engn, Dept Civil & Environm Engn, Tricea 1,1-1-1 Nojihigashi, Kusatsu, Shiga 5258577, Japan
[2] Kagoshima Univ, Dept Engn, Ocean Civil Engn Program, 1-21-40 Korimoto, Kagoshima, Kagoshima 8900065, Japan
关键词
Physics-informed neural networks; Inverse analysis; Coefficient of consolidation; Unsaturated soil hydraulic properties; Soil water retention test; HYDRAULIC CONDUCTIVITY; FLOW;
D O I
10.1016/j.sandf.2024.101533
中图分类号
P5 [地质学];
学科分类号
0709 ; 081803 ;
摘要
Physics -informed neural networks (PINNs) have been proposed for incorporating physical laws into deep learning. PINNs can output solutions that satisfy physical laws by introducing information, such as partial differential equations (PDEs), boundary conditions, and initial conditions, into the loss functions used during the construction of the neural network model. This study presents two cases in which geotechnical parameters were estimated through an inverse analysis of PINNs. PINNs were applied to simulate consolidation and unsaturated seepage processes. The inverse analysis of the PINNs helped estimate the coefficient of consolidation and the parameters related to the unsaturated soil hydraulic properties with sufficient accuracy. The inverse analysis of PINNs for geotechnical parameter estimation was found to be an effective approach that utilizes measurement data.
引用
收藏
页数:11
相关论文
共 50 条
  • [31] Deep fuzzy physics-informed neural networks for forward and inverse PDE problems
    Wu, Wenyuan
    Duan, Siyuan
    Sun, Yuan
    Yu, Yang
    Liu, Dong
    Peng, Dezhong
    NEURAL NETWORKS, 2025, 181
  • [32] Physics-Informed Deep Neural Networks for Transient Electromagnetic Analysis
    Noakoasteen, Oameed
    Wang, Shu
    Peng, Zhen
    Christodoulou, Christos
    IEEE OPEN JOURNAL OF ANTENNAS AND PROPAGATION, 2020, 1 (01): : 404 - 412
  • [33] A unified framework for the error analysis of physics-informed neural networks
    Zeinhofer, Marius
    Masri, Rami
    Mardal, Kent-Andre
    IMA JOURNAL OF NUMERICAL ANALYSIS, 2024,
  • [34] Estimating model inadequacy in ordinary differential equations with physics-informed neural networks
    Viana, Felipe A. C.
    Nascimento, Renato G.
    Dourado, Arinan
    Yucesan, Yigit A.
    COMPUTERS & STRUCTURES, 2021, 245
  • [35] Forecasting Buoy Observations Using Physics-Informed Neural Networks
    Schmidt, Austin B.
    Pokhrel, Pujan
    Abdelguerfi, Mahdi
    Ioup, Elias
    Dobson, David
    IEEE JOURNAL OF OCEANIC ENGINEERING, 2024, 49 (03) : 821 - 840
  • [36] Synthesis of voiced sounds using physics-informed neural networks
    Yokota, Kazuya
    Ogura, Masataka
    Abe, Masajiro
    Acoustical Science and Technology, 45 (06): : 333 - 336
  • [37] Using physics-informed neural networks to compute quasinormal modes
    Cornell, Alan S.
    Ncube, Anele
    Harmsen, Gerhard
    PHYSICAL REVIEW D, 2022, 106 (12)
  • [38] Physics-informed Neural Networks for the Resolution of Analysis Problems in Electromagnetics
    Barmada, S.
    Di Barba, P.
    Formisano, A.
    Mognaschi, M. E.
    Tucci, M.
    APPLIED COMPUTATIONAL ELECTROMAGNETICS SOCIETY JOURNAL, 2023, 38 (11): : 841 - 848
  • [39] Optimal control of PDEs using physics-informed neural networks
    Mowlavi, Saviz
    Nabi, Saleh
    JOURNAL OF COMPUTATIONAL PHYSICS, 2023, 473
  • [40] Structural parameter identification using physics-informed neural networks
    Guo, Xin-Yu
    Fang, Sheng-En
    MEASUREMENT, 2023, 220