MULTI-FIDELITY PHYSICS-CONSTRAINED NEURAL NETWORKS WITH MINIMAX ARCHITECTURE FOR MATERIALS MODELING

被引:0
|
作者
Liu, Dehao [1 ]
Pusarla, Pranav [2 ]
Wang, Yan [2 ]
机构
[1] SUNY Binghamton, Binghamton, NY 13902 USA
[2] Georgia Inst Technol, Atlanta, GA 30332 USA
关键词
Machine learning; Physics-constrained neural networks; Multi-fidelity metamodeling; Minimax optimization; Partial differential equations; NUMERICAL-SOLUTION; APPROXIMATIONS;
D O I
暂无
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Data sparsity is still the main challenge to apply machine learning models to solve complex scientific and engineering problems. The root cause is the "curse of dimensionality" in training these models. Training algorithms need to explore and exploit in a very high dimensional parameter space to search the optimal parameters for complex models. In this work, a new scheme of multi-fidelity physics-constrained neural networks with minimax architecture is proposed to improve the data efficiency of training neural networks by incorporating physical knowledge as constraints and sampling data with various fidelities. In this new framework, fully-connected neural networks with two levels of fidelities are combined to improve the prediction accuracy. The low-fidelity neural network is used to approximate the low-fidelity data, whereas the high-fidelity neural network is adopted to approximate the correlation function between the low-fidelity and high-fidelity data. To systematically search the optimal weights of various losses for reducing the training time, the Dual-Dimer algorithm is adopted to search high-order saddle points of the minimax optimization problem. The proposed framework is demonstrated with two-dimensional heat transfer, phase transition, and dendritic growth problems, which are fundamental in materials modeling. With the same set of training data, the prediction error of the multi-fidelity physics-constrained neural network with minimax architecture can be two orders of magnitude lower than that of the multi-fidelity neural network with minimax architecture.
引用
收藏
页数:10
相关论文
共 50 条
  • [21] Physics-constrained Automatic Feature Engineering for Predictive Modeling in Materials Science
    Xiang, Ziyu
    Fan, Mingzhou
    Tovar, Guillermo Vazquez
    Trehem, William
    Yoon, Byung-Jun
    Qian, Xiaofeng
    Arroyave, Raymundo
    Qian, Xiaoning
    THIRTY-FIFTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, THIRTY-THIRD CONFERENCE ON INNOVATIVE APPLICATIONS OF ARTIFICIAL INTELLIGENCE AND THE ELEVENTH SYMPOSIUM ON EDUCATIONAL ADVANCES IN ARTIFICIAL INTELLIGENCE, 2021, 35 : 10414 - 10421
  • [22] A BAYESIAN NEURAL NETWORK APPROACH TO MULTI-FIDELITY SURROGATE MODELING
    Kerleguer, Baptiste
    Cannamela, Claire
    Garnier, Josselin
    INTERNATIONAL JOURNAL FOR UNCERTAINTY QUANTIFICATION, 2024, 14 (01) : 43 - 60
  • [23] Multi-Fidelity Bayesian Optimization via Deep Neural Networks
    Li, Shibo
    Xing, Wei
    Kirby, Robert M.
    Zhe, Shandian
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 33, NEURIPS 2020, 2020, 33
  • [24] Partial-physics-informed multi-fidelity modeling of manufacturing processes
    Cleeman, Jeremy
    Agrawala, Kian
    Nastarowicz, Evan
    Malhotra, Rajiv
    JOURNAL OF MATERIALS PROCESSING TECHNOLOGY, 2023, 320
  • [25] Multi-fidelity Gaussian process surrogate modeling for regression problems in physics
    Ravi, Kislaya
    Fediukov, Vladyslav
    Dietrich, Felix
    Neckel, Tobias
    Buse, Fabian
    Bergmann, Michael
    Bungartz, Hans-Joachim
    MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2024, 5 (04):
  • [26] A physics-constrained neural network for multiphase flows
    Zheng, Haoyang
    Huang, Ziyang
    Lin, Guang
    PHYSICS OF FLUIDS, 2022, 34 (10)
  • [27] Multi-fidelity Data Aggregation using Convolutional Neural Networks
    Chen, Jie
    Gao, Yi
    Liu, Yongming
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2022, 391
  • [28] Deep autoencoders for physics-constrained data-driven nonlinear materials modeling
    He, Xiaolong
    He, Qizhi
    Chen, Jiun-Shyan
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2021, 385
  • [29] Multi-fidelity Surrogate Modeling for Application/Architecture Co-design
    Zhang, Yiming
    Neelakantan, Aravind
    Kumar, Nalini
    Park, Chanyoung
    Haftka, Raphael T.
    Kim, Nam H.
    Lam, Herman
    HIGH PERFORMANCE COMPUTING SYSTEMS: PERFORMANCE MODELING, BENCHMARKING, AND SIMULATION (PMBS 2017), 2018, 10724 : 179 - 196
  • [30] Physics-constrained neural networks as multi-material Riemann solvers for compressible two-gas simulations
    Xu, Liang
    Liu, Ziyan
    Feng, Yiwei
    Liu, Tiegang
    JOURNAL OF COMPUTATIONAL SCIENCE, 2024, 78