A quadratic decoder approach to nonintrusive reduced-order modeling of nonlinear dynamical systems
A quadratic decoder approach to nonintrusive reduced-order modeling of nonlinear dynamical systems
Linear projection schemes like Proper Orthogonal Decomposition can efficiently reduce the dimensions of dynamical systems but are naturally limited, e.g., for convection-dominated problems. Nonlinear approaches have shown to outperform linear methods in terms of dimension reduction versus accuracy but, typically, come with a large computational overhead. In this work, we consider a quadratic reduction scheme which induces nonlinear structures that are well accessible to tensorized linear algebra routines. We discuss that nonintrusive approaches can be used to simultaneously reduce the complexity in the equations and propose an operator inference formulation that respects dynamics on nonlinear manifolds.
Peter Benner、Jan Heiland、Pawan Goyal、Igor Pontes
计算技术、计算机技术数学自动化基础理论
Peter Benner,Jan Heiland,Pawan Goyal,Igor Pontes.A quadratic decoder approach to nonintrusive reduced-order modeling of nonlinear dynamical systems[EB/OL].(2022-09-30)[2025-08-27].https://arxiv.org/abs/2209.15412.点此复制
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