NN-OpInf: an operator inference approach using structure-preserving composable neural networks
AI 摘要
提出一种基于神经网络的结构保持算子推断方法,用于动力系统的降阶建模。
主要贡献
- 提出NN-OpInf框架,结构保持且可组合。
- 学习隐空间动力学,强制局部算子结构。
- 在非多项式动力学问题上表现出更好的精度和鲁棒性。
方法论
利用神经网络学习动力系统的算子,通过强制算子结构来提升模型的精度和稳定性。
原文摘要
We propose neural network operator inference (NN-OpInf): a structure-preserving, composable, and minimally restrictive operator inference framework for the non-intrusive reduced-order modeling of dynamical systems. The approach learns latent dynamics from snapshot data, enforcing local operator structure such as skew-symmetry, (semi-)positive definiteness, and gradient preservation, while also reflecting complex dynamics by supporting additive compositions of heterogeneous operators. We present practical training strategies and analyze computational costs relative to linear and quadratic polynomial OpInf (P-OpInf). Numerical experiments across several nonlinear and parametric problems demonstrate improved accuracy, stability, and robustness over P-OpInf and prior NN-ROM formulations, particularly when the dynamics are not well represented by polynomial models. These results suggest that NN-OpInf can serve as an effective drop-in replacement for P-OpInf when the dynamics to be modeled contain non-polynomial nonlinearities, offering potential gains in accuracy and out-of-distribution performance at the expense of higher training computational costs and a more difficult, non-convex learning problem.