ACTIVE OPERATOR INFERENCE FOR LEARNING LOW-DIMENSIONAL DYNAMICAL-SYSTEM MODELS FROM NOISY DATA

被引:4
|
作者
Uy, Wayne Isaac Tan [1 ]
Wang, Yuepeng [1 ]
Wen, Yuxiao [1 ]
Peherstorfer, Benjamin [1 ]
机构
[1] NYU, Courant Inst Math Sci, New York, NY 10012 USA
来源
SIAM JOURNAL ON SCIENTIFIC COMPUTING | 2023年 / 45卷 / 04期
基金
美国国家科学基金会;
关键词
scientific machine learning; nonintrusive model reduction; operator inference; design of experiments; reduced models; noise; EIGENSYSTEM REALIZATION-ALGORITHM; DISCRETE EMPIRICAL INTERPOLATION; IDENTIFICATION; REDUCTION; APPROXIMATION; DECOMPOSITION; FREQUENCY;
D O I
10.1137/21M1439729
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Noise poses a challenge for learning dynamical-system models because already small variations can distort the dynamics described by trajectory data. This work builds on operator inference from scientific machine learning to infer low-dimensional models from high-dimensional state trajectories polluted with noise. The presented analysis shows that, under certain conditions, the inferred operators are unbiased estimators of the well-studied projection-based reduced operators from traditional model reduction. Furthermore, the connection between operator inference , projection-based model reduction enables bounding the mean-squared errors of predictions made with the learned models with respect to traditional reduced models. The analysis also motivates an active operator inference approach that judiciously samples high-dimensional trajectories with the aim of achieving a low mean-squared error by reducing the effect of noise. Numerical experiments with high-dimensional linear and nonlinear state dynamics demonstrate that predictions obtained with active operator inference have orders of magnitude lower mean-squared errors than operator inference with traditional, equidistantly sampled trajectory data.
引用
收藏
页码:A1462 / A1490
页数:29
相关论文
共 50 条
  • [1] LEARNING LOW-DIMENSIONAL NONLINEAR STRUCTURES FROM HIGH-DIMENSIONAL NOISY DATA: AN INTEGRAL OPERATOR APPROACH
    Ding, Xiucai
    Ma, Rong
    ANNALS OF STATISTICS, 2023, 51 (04): : 1744 - 1769
  • [2] OPERATOR INFERENCE AND PHYSICS-INFORMED LEARNING OF LOW-DIMENSIONAL MODELS FOR INCOMPRESSIBLE FLOWS
    Benner, Peter
    Goyal, Pawan
    Heiland, Jan
    Duff, Igor Pontes
    ELECTRONIC TRANSACTIONS ON NUMERICAL ANALYSIS, 2022, 56 : 28 - 51
  • [3] OPERATOR INFERENCE AND PHYSICS-INFORMED LEARNING OF LOW-DIMENSIONAL MODELS FOR INCOMPRESSIBLE FLOWS
    Benner P.
    Goyal P.
    Heiland J.
    Duff I.P.
    Electronic Transactions on Numerical Analysis, 2021, 56 : 28 - 51
  • [4] SAMPLING LOW-DIMENSIONAL MARKOVIAN DYNAMICS FOR PREASYMPTOTICALLY RECOVERING REDUCED MODELS FROM DATA WITH OPERATOR INFERENCE
    Peherstorfer, Benjamin
    SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2020, 42 (05): : A3489 - A3515
  • [5] Deep kernel learning of dynamical models from high-dimensional noisy data
    Nicolò Botteghi
    Mengwu Guo
    Christoph Brune
    Scientific Reports, 12
  • [6] Deep kernel learning of dynamical models from high-dimensional noisy data
    Botteghi, Nicolo
    Guo, Mengwu
    Brune, Christoph
    SCIENTIFIC REPORTS, 2022, 12 (01)
  • [7] Learning Nonlinear Reduced Models from Data with Operator Inference
    Kramer, Boris
    Peherstorfer, Benjamin
    Willcox, Karen E.
    ANNUAL REVIEW OF FLUID MECHANICS, 2024, 56 : 521 - 548
  • [8] Learning Low-Dimensional Models of Microscopes
    Debarnot, Valentin
    Escande, Paul
    Mangeat, Thomas
    Weiss, Pierre
    IEEE TRANSACTIONS ON COMPUTATIONAL IMAGING, 2021, 7 (07) : 178 - 190
  • [9] Learning Low-Dimensional Signal Models
    Carin, Lawrence
    Baraniuk, Richard G.
    Cevher, Volkan
    Dunson, David
    Jordan, Michael I.
    Sapiro, Guillermo
    Wakin, Michael B.
    IEEE SIGNAL PROCESSING MAGAZINE, 2011, 28 (02) : 39 - 51
  • [10] A low-dimensional dynamical system for tripole formation
    Kloosterziel, RC
    Carnevale, GF
    NONLINEAR PROCESSES IN GEOPHYSICAL FLUID DYNAMICS: A TRIBUTE TO THE SCIENTIFIC WORK OF PEDRO RIPA, 2003, : 355 - 374