Stabilized neural ordinary differential equations for long-time forecasting of dynamical systems

被引:42
|
作者
Linot, Alec J. [1 ]
Burby, Joshua W. [2 ]
Tang, Qi [2 ]
Balaprakash, Prasanna [3 ]
Graham, Michael D. [1 ]
Maulik, Romit [3 ]
机构
[1] Univ Wisconsin, Dept Chem & Biol Engn, Madison, WI 53706 USA
[2] Los Alamos Natl Lab, Los Alamos, NM 87545 USA
[3] Argonne Natl Lab, Math & Comp Sci Div, Lemont, IL 60439 USA
关键词
Neural ordinary differential equations; Reduced-order models; Partial differential equations; INERTIAL MANIFOLDS; GALERKIN METHOD; IDENTIFICATION;
D O I
10.1016/j.jcp.2022.111838
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
In data-driven modeling of spatiotemporal phenomena careful consideration is needed in capturing the dynamics of the high wavenumbers. This problem becomes especially challenging when the system of interest exhibits shocks or chaotic dynamics. We present a data-driven modeling method that accurately captures shocks and chaotic dynamics by proposing a new architecture, stabilized neural ordinary differential equation (ODE). In our proposed architecture, we learn the right-hand-side (RHS) of an ODE by adding the outputs of two NN together where one learns a linear term and the other a nonlinear term. Specifically, we implement this by training a sparse linear convolutional NN to learn the linear term and a dense fully-connected nonlinear NN to learn the nonlinear term. This contrasts with the standard neural ODE which involves training a single NN for the RHS. We apply this setup to the viscous Burgers equation, which exhibits shocked behavior, and show stabilized neural ODEs provide better short-time tracking, prediction of the energy spectrum, and robustness to noisy initial conditions than standard neural ODEs. We also apply this method to chaotic trajectories of the Kuramoto-Sivashinsky equation. In this case, stabilized neural ODEs keep long-time trajectories on the attractor, and are highly robust to noisy initial conditions, while standard neural ODEs fail at achieving either of these results. We conclude by demonstrating how stabilizing neural ODEs provide a natural extension for use in reduced-order modeling by projecting the dynamics onto the eigenvectors of the learned linear term.
引用
收藏
页数:14
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