A physics-informed deep neural network for surrogate modeling in classical elasto-plasticity

被引:14
|
作者
Eghbalian, Mahdad [1 ]
Pouragha, Mehdi [2 ]
Wan, Richard [1 ]
机构
[1] Univ Calgary, Dept Civil Engn, Calgary, AB, Canada
[2] Carleton Univ, Dept Civil & Environm Engn, Ottawa, ON, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
Physics-informed Neural Network (PINN); Artificial Neural Network; Deep learning; Constitutive modeling; Elasto-plasticity; CONSTITUTIVE MODEL;
D O I
10.1016/j.compgeo.2023.105472
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
In this work, we present a deep neural network architecture that can efficiently surrogate classical elasto-plastic constitutive relations. The network is enriched with crucial physics aspects of classical elasto-plasticity, including additive decomposition of strains into elastic and plastic parts, and nonlinear incremental elasticity. This leads to a Physics-Informed Neural Network (PINN) surrogate model named here as Elasto-Plastic Neural Network (EPNN). Detailed analyses show that embedding these physics into the architecture of the neural network facilitates a more efficient training of the network with less training data, while also enhancing the extrapolation capability for loading regimes outside the training data. The architecture of EPNN is model and material-independent; it can be adapted to a wide range of elasto-plastic material types, including geomaterials; and experimental data can potentially be directly used in training the network. To demonstrate the robustness of the proposed architecture, we adapt its general framework to the elasto-plastic behavior of sands. We use synthetic data generated from material point simulations based on a relatively advanced dilatancy-based constitutive model for granular materials to train the neural network. The superiority of EPNN over regular neural network architectures is demonstrated through predicting unseen strain-controlled loading paths for sands with different initial densities.
引用
收藏
页数:27
相关论文
共 50 条
  • [1] Physics-informed deep neural network for modeling the chloride diffusion in concrete
    Shaban, Wafaa Mohamed
    Elbaz, Khalid
    Zhou, Annan
    Shen, Shui-Long
    [J]. ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2023, 125
  • [2] Physics-informed deep neural network for image denoising
    Xypakis, Emmanouil
    De Turris, Valeria
    Gala, Fabrizio
    Ruocco, Giancarlo
    Leonetti, Marco
    [J]. OPTICS EXPRESS, 2023, 31 (26): : 43838 - 43849
  • [3] Surrogate modeling for radiative heat transfer using physics-informed deep neural operator networks
    Lu, Xiaoyi
    Wang, Yi
    [J]. PROCEEDINGS OF THE COMBUSTION INSTITUTE, 2024, 40 (1-4)
  • [4] A Physics-Informed Recurrent Neural Network for RRAM Modeling
    Sha, Yanliang
    Lan, Jun
    Li, Yida
    Chen, Quan
    [J]. ELECTRONICS, 2023, 12 (13)
  • [5] Physics-informed Neural Network for Quadrotor Dynamical Modeling
    Gu, Weibin
    Primatesta, Stefano
    Rizzo, Alessandro
    [J]. ROBOTICS AND AUTONOMOUS SYSTEMS, 2024, 171
  • [6] Surrogate modeling for physical fields of heat transfer processes based on physics-informed neural network
    Lu, Zhibin
    Qu, Jinghui
    Liu, Hua
    He, Chang
    Zhang, Bingjian
    Chen, Qinglin
    [J]. Huagong Xuebao/CIESC Journal, 2021, 72 (03): : 1496 - 1503
  • [7] Modeling finite-strain plasticity using physics-informed neural network and assessment of the network performance
    Niu, Sijun
    Zhang, Enrui
    Bazilevs, Yuri
    Srivastava, Vikas
    [J]. JOURNAL OF THE MECHANICS AND PHYSICS OF SOLIDS, 2023, 172
  • [8] Surrogate modeling for Bayesian inverse problems based on physics-informed neural networks
    Li, Yongchao
    Wang, Yanyan
    Yan, Liang
    [J]. JOURNAL OF COMPUTATIONAL PHYSICS, 2023, 475
  • [9] A physics-informed deep learning framework for inversion and surrogate modeling in solid mechanics
    Haghighat, Ehsan
    Raissi, Maziar
    Moure, Adrian
    Gomez, Hector
    Juanes, Ruben
    [J]. COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2021, 379
  • [10] History of Computational Classical Elasto-Plasticity
    Stein, Erwin
    [J]. ADVANCES IN COMPUTATIONAL PLASTICITY: A BOOK IN HONOUR OF D. ROGER J. OWEN, 2018, 46 : 357 - 379