Non intrusive reduced order modeling of parametrized PDEs by kernel POD and neural networks

被引:28
|
作者
Salvador, M. [1 ]
Dede, L. [1 ]
Manzoni, A. [1 ]
机构
[1] Politecn Milan, MOX Dipartimento Matemat, Pzza Leonardo da Vinci 32, I-20133 Milan, Italy
关键词
Reduced order modeling; Kernel proper orthogonal decomposition; Proper orthogonal decomposition; Neural networks; Parametrized PDEs; APPROXIMATION; EQUATIONS;
D O I
10.1016/j.camwa.2021.11.001
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial differential equations (PDEs), exploiting kernel proper orthogonal decomposition (KPOD) for the generation of a reduced order space and neural networks for the evaluation of the reduced order approximation. In particular, we use KPOD in place of the more classical POD, on a set of high-fidelity solutions of the problem at hand to extract a reduced basis. This method provides a more accurate approximation of the snapshots' set featuring a lower dimension, while maintaining the same efficiency as POD. A neural network (NN) is then used to find the coefficients of the reduced basis by following a supervised learning paradigm and shown to be effective in learning the map between the time/parameter values and the projection of the high-fidelity snapshots onto the reduced space. In this NN, both the number of hidden layers and the number of neurons vary according to the intrinsic dimension of the differential problem at hand and the size of the reduced space. This adaptively built NN attains good performances in both the learning and the testing phases. Our approach is then tested on two benchmark problems, a one-dimensional wave equation and a two-dimensional nonlinear lid-driven cavity problem. We finally compare the proposed KPOD-NN technique with a POD-NN strategy, showing that KPOD allows a reduction of the number of modes that must be retained to reach a given accuracy in the reduced basis approximation. For this reason, the NN built to find the coefficients of the KPOD expansion is smaller, easier and less computationally demanding to train than the one used in the POD-NN strategy.
引用
收藏
页码:1 / 13
页数:13
相关论文
共 50 条
  • [1] On the latent dimension of deep autoencoders for reduced order modeling of PDEs parametrized by random fields
    Franco, Nicola Rares
    Fraulin, Daniel
    Manzoni, Andrea
    Zunino, Paolo
    ADVANCES IN COMPUTATIONAL MATHEMATICS, 2024, 50 (05)
  • [2] Non-intrusive reduced order modeling of nonlinear problems using neural networks
    Hesthaven, J. S.
    Ubbiali, S.
    JOURNAL OF COMPUTATIONAL PHYSICS, 2018, 363 : 55 - 78
  • [3] Error estimates for POD-DL-ROMs: a deep learning framework for reduced order modeling of nonlinear parametrized PDEs enhanced by proper orthogonal decomposition
    Brivio, Simone
    Fresca, Stefania
    Franco, Nicola Rares
    Manzoni, Andrea
    ADVANCES IN COMPUTATIONAL MATHEMATICS, 2024, 50 (03)
  • [4] POD-DL-ROM: Enhancing deep learning-based reduced order models for nonlinear parametrized PDEs by proper orthogonal decomposition
    Fresca, Stefania
    Manzoni, Andrea
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2022, 388
  • [5] Non-intrusive reduced order modeling for flowfield reconstruction based on residual neural network
    Ma, Wenjun
    Zhang, Jun
    Yu, Jian
    ACTA ASTRONAUTICA, 2021, 183 : 346 - 362
  • [6] Non-Intrusive Reduced-Order Modeling Based on Parametrized Proper Orthogonal Decomposition
    Li, Teng
    Pan, Tianyu
    Zhou, Xiangxin
    Zhang, Kun
    Yao, Jianyao
    ENERGIES, 2024, 17 (01)
  • [7] Non-intrusive reduced order modeling of unsteady flows using artificial neural networks with application to a combustion problem
    Wang, Qian
    Hesthaven, Jan S.
    Ray, Deep
    JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 384 : 289 - 307
  • [8] A Comprehensive Deep Learning-Based Approach to Reduced Order Modeling of Nonlinear Time-Dependent Parametrized PDEs
    Fresca, Stefania
    Dede', Luca
    Manzoni, Andrea
    JOURNAL OF SCIENTIFIC COMPUTING, 2021, 87 (02)
  • [9] A Comprehensive Deep Learning-Based Approach to Reduced Order Modeling of Nonlinear Time-Dependent Parametrized PDEs
    Stefania Fresca
    Luca Dede’
    Andrea Manzoni
    Journal of Scientific Computing, 2021, 87
  • [10] Adaptive non-intrusive reduced order modeling for compressible flows
    Yu, Jian
    Yan, Chao
    Jiang, Zhenhua
    Yuan, Wu
    Chen, Shusheng
    JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 397