4.6 Article

REDUCED OPERATOR INFERENCE FOR NONLINEAR PARTIAL DIFFERENTIAL EQUATIONS

期刊

SIAM JOURNAL ON SCIENTIFIC COMPUTING
卷 44, 期 4, 页码 A1934-A1959

出版社

SIAM PUBLICATIONS
DOI: 10.1137/21M1393972

关键词

nonintrusive model reduction; scientific machine learning; operator learning; data-driven modeling; nonlinear partial differential equations

资金

  1. National Science Foundation Graduate Research Fellowship Program
  2. Fannie and John Hertz Foundation
  3. US Air Force Center of Excellence on Multi-Fidelity Modeling of Rocket Combustor Dynamics award [FA9550-17-1-0195]
  4. Air Force Office of Scientific Research MURI program [FA9550-15-1-0038, FA9550-18-1-0023, FA9550-21-1-0084]
  5. US Department of Energy Applied Mathematics MMICC Program [DESC0019303]
  6. SUTD-MIT International Design Centre

向作者/读者索取更多资源

We propose a new scientific machine learning method that learns from data to predict the evolution of a system governed by a time-dependent nonlinear partial differential equation. The method combines projection-based model reduction with supervised machine learning tools to reduce the computational cost of the model, achieving accurate predictions in test cases.
We present a new scientific machine learning method that learns from data a computationally inexpensive surrogate model for predicting the evolution of a system governed by a time-dependent nonlinear partial differential equation (PDE), an enabling technology for many computational algorithms used in engineering settings. Our formulation generalizes to the function space PDE setting the Operator Inference method previously developed in [B. Peherstorfer and K. Willcox, Comput. Methods Appl. Mech. Engrg., 306 (2016), pp. 196-215] for systems governed by ordinary differential equations. The method brings together two main elements. First, ideas from projection-based model reduction are used to explicitly parametrize the learned model by low-dimensional polynomial operators which reflect the known form of the governing PDE. Second, supervised machine learning tools are used to infer from data the reduced operators of this physics-informed parametrization. For systems whose governing PDEs contain more general (nonpolynomial) nonlinearities, the learned model performance can be improved through the use of lifting variable transformations, which expose polynomial structure in the PDE. The proposed method is demonstrated on two examples: a heat equation model problem that demonstrates the benefits of the function space formulation in terms of consistency with the underlying continuous truth, and a three-dimensional combustion simulation with over 18 million degrees of freedom, for which the learned reduced models achieve accurate predictions with a dimension reduction of five orders of magnitude and model runtime reduction of up to nine orders of magnitude.

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