Physics-informed regularization and structure preservation for learning stable reduced models from data with operator inference

被引:13
|
作者
Sawant, Nihar [1 ]
Kramer, Boris [2 ]
Peherstorfer, Benjamin [1 ]
机构
[1] NYU, Courant Inst Math Sci, New York, NY 10012 USA
[2] Univ Calif San Diego, Dept Mech & Aerosp Engn, San Diego, CA USA
基金
美国国家科学基金会;
关键词
Model reduction; Non-intrusive methods; Scientific machine learning; Operator inference; Structure preservation; Polynomial models; ORDER REDUCTION; DYNAMICAL-SYSTEMS; INTERPOLATION; DOMAIN; APPROXIMATION; STABILIZATION; OPTIMIZATION; FRAMEWORK; MATRICES;
D O I
10.1016/j.cma.2022.115836
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Operator inference learns low-dimensional dynamical-system models with polynomial nonlinear terms from trajectories of high-dimensional physical systems (non-intrusive model reduction). This work focuses on the large class of physical systems that can be well described by models with quadratic and cubic nonlinear terms and proposes a regularizer for operator inference that induces a stability bias onto learned models. The proposed regularizer is physics informed in the sense that it penalizes higher-order terms with large norms and so explicitly leverages the polynomial model form that is given by the underlying physics. This means that the proposed approach judiciously learns from data and physical insights combined, rather than from either data or physics alone. Additionally, a formulation of operator inference is proposed that enforces model constraints for preserving structure such as symmetry and definiteness in linear terms. Numerical results demonstrate that models learned with operator inference and the proposed regularizer and structure preservation are accurate and stable even in cases where using no regularization and Tikhonov regularization leads to models that are unstable.(c) 2022 Elsevier B.V. All rights reserved.
引用
收藏
页数:24
相关论文
共 50 条
  • [41] Review of physics-informed machine-learning inversion of geophysical data
    Schuster, Gerard T.
    Chen, Yuqing
    Feng, Shihang
    GEOPHYSICS, 2024, 89 (06) : T337 - T356
  • [42] Streamflow Simulation in Data-Scarce Basins Using Bayesian and Physics-Informed Machine Learning Models
    Lu, Dan
    Konapala, Goutam
    Painter, Scott L.
    Kao, Shih-Chieh
    Gangrade, Sudershan
    JOURNAL OF HYDROMETEOROLOGY, 2021, 22 (06) : 1421 - 1438
  • [43] Physics-Informed Deep-Learning Models Improve Forecast Scalability, Reliability
    Carpenter, Chris
    JPT, Journal of Petroleum Technology, 2024, 76 (10): : 90 - 93
  • [44] Physics-informed machine learning approach for augmenting turbulence models: A comprehensive framework
    Wu, Jin-Long
    Xiao, Heng
    Paterson, Eric
    PHYSICAL REVIEW FLUIDS, 2018, 3 (07):
  • [45] Physics-informed machine learning models for predicting the progress of reactive-mixing
    Mudunuru, M. K.
    Karra, S.
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2021, 374 (374)
  • [46] A physics-informed deep learning model to reconstruct turbulent wake from random sparse data
    Xie, Peixing
    Li, Rui
    Chen, Yaoran
    Song, Baiyang
    Chen, Wen-Li
    Zhou, Dai
    Cao, Yong
    PHYSICS OF FLUIDS, 2024, 36 (06)
  • [47] Towards physics-informed explainable machine learning and causal models for materials research
    Ghosh, Ayana
    COMPUTATIONAL MATERIALS SCIENCE, 2024, 233
  • [48] Physics-informed machine learning for fault-leakage reduced-order modeling
    Meguerdijian, Saro
    Pawar, Rajesh J.
    Chen, Bailian
    Gable, Carl W.
    Miller, Terry A.
    Jha, Birendra
    INTERNATIONAL JOURNAL OF GREENHOUSE GAS CONTROL, 2023, 125
  • [49] Seismic Traveltime Simulation for Variable Velocity Models Using Physics-Informed Fourier Neural Operator
    Song, Chao
    Zhao, Tianshuo
    Waheed, Umair Bin
    Liu, Cai
    Tian, You
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2024, 62
  • [50] Data-Enabled Physics-Informed Machine Learning for Reduced-Order Modeling Digital Twin: Application to Nuclear Reactor Physics
    Gong, Helin
    Cheng, Sibo
    Chen, Zhang
    Li, Qing
    NUCLEAR SCIENCE AND ENGINEERING, 2022, 196 (06) : 668 - 693