Physics-informed genetic programming for discovery of partial differential equations from scarce and noisy data

被引:1
|
作者
Cohen, Benjamin G. [1 ]
Beykal, Burcu [1 ,2 ]
Bollas, George M. [1 ]
机构
[1] Univ Connecticut, Dept Chem & Biomol Engn, Storrs, CT 06269 USA
[2] Univ Connecticut, Ctr Clean Energy Engn, Storrs, CT 06269 USA
基金
美国国家卫生研究院;
关键词
Model discovery; Symbolic regression; Partial differential equations; Genetic programming; SYMBOLIC REGRESSION; SYSTEMS;
D O I
10.1016/j.jcp.2024.113261
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
A novel framework is proposed that utilizes symbolic regression via genetic programming to identify free-form partial differential equations from scarce and noisy data. The framework successfully identified ground truth models for four synthetic systems (an isothermal plug flow reactor, a continuously stirred tank reactor, a nonisothermal reactor, and viscous flow governed by Burgers' equation) from time-variant data collected at one location. A comparative analysis against the so-called weak Sparse Identification of Nonlinear Dynamics (SINDy) demonstrated the proposed framework's superior ability to identify meaningful partial differential equation (PDE) models when data was scarce. The framework was further tested for robustness to noise and scarcity, showing successful model recovery from as few as eight time series data points collected at a single point in space with 50% noise. These results emphasize the potential of the proposed framework for the discovery of PDE models when data collection is expensive or otherwise difficult.
引用
收藏
页数:15
相关论文
共 50 条
  • [31] Structural identification with physics-informed neural ordinary differential equations
    Lai, Zhilu
    Mylonas, Charilaos
    Nagarajaiah, Satish
    Chatzi, Eleni
    JOURNAL OF SOUND AND VIBRATION, 2021, 508
  • [32] PHYSICS-INFORMED GENERATIVE ADVERSARIAL NETWORKS FOR STOCHASTIC DIFFERENTIAL EQUATIONS
    Yang, Liu
    Zhang, Dongkun
    Karniadakis, George Em
    SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2020, 42 (01): : A292 - A317
  • [33] Data-driven discovery of turbulent flow equations using physics-informed neural networks
    Yazdani, Shirindokht
    Tahani, Mojtaba
    PHYSICS OF FLUIDS, 2024, 36 (03)
  • [34] Physics-informed and data-driven discovery of governing equations for complex phenomena in heterogeneous media
    Sahimi, Muhammad
    PHYSICAL REVIEW E, 2024, 109 (04)
  • [35] Physics-informed boundary integral networks (PIBI-Nets): A data-driven approach for solving partial differential equations
    Nagy-Huber, Monika
    Roth, Volker
    JOURNAL OF COMPUTATIONAL SCIENCE, 2024, 81
  • [36] ST-PINN: A Self-Training Physics-Informed Neural Network for Partial Differential Equations
    Yan, Junjun
    Chen, Xinhai
    Wang, Zhichao
    Zhoui, Enqiang
    Liu, Jie
    2023 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS, IJCNN, 2023,
  • [37] Feature-adjacent multi-fidelity physics-informed machine learning for partial differential equations
    Chen, Wenqian
    Stinis, Panos
    arXiv, 2023,
  • [38] Multi-Net strategy: Accelerating physics-informed neural networks for solving partial differential equations
    Wang, Yunzhuo
    Li, Jianfeng
    Zhou, Liangying
    Sun, Jingwei
    Sun, Guangzhong
    SOFTWARE-PRACTICE & EXPERIENCE, 2022, 52 (12): : 2513 - 2536
  • [39] Boundary constrained Gaussian processes for robust physics-informed machine learning of linear partial differential equations
    Dalton, David
    Lazarus, Alan
    Gao, Gao
    Husmeier, Dirk
    JOURNAL OF MACHINE LEARNING RESEARCH, 2024, 25 : 1 - 61
  • [40] A certified wavelet-based physics-informed neural network for the solution of parameterized partial differential equations
    Ernst, Lewin
    Urban, Karsten
    IMA JOURNAL OF NUMERICAL ANALYSIS, 2024, 45 (01) : 494 - 515