Learning Nonlinear Projections for Reduced-Order Modeling of Dynamical Systems using Constrained Autoencoders
Samuel E. Otto, Gregory R. Macchio, Clarence W. Rowley

TL;DR
This paper introduces a novel nonlinear projection method using constrained autoencoders for reduced-order modeling of dynamical systems, addressing transient dynamics and fast sensitivities for improved control and forecasting.
Contribution
It proposes a new class of constrained autoencoder architectures with dynamics-aware training for better transient dynamics modeling in reduced-order systems.
Findings
Demonstrated effectiveness on a vortex shedding model with an analytically known slow manifold.
Developed techniques for efficient high-dimensional system modeling.
Introduced sparsity-promoting penalties to enhance computational efficiency.
Abstract
Recently developed reduced-order modeling techniques aim to approximate nonlinear dynamical systems on low-dimensional manifolds learned from data. This is an effective approach for modeling dynamics in a post-transient regime where the effects of initial conditions and other disturbances have decayed. However, modeling transient dynamics near an underlying manifold, as needed for real-time control and forecasting applications, is complicated by the effects of fast dynamics and nonnormal sensitivity mechanisms. To begin to address these issues, we introduce a parametric class of nonlinear projections described by constrained autoencoder neural networks in which both the manifold and the projection fibers are learned from data. Our architecture uses invertible activation functions and biorthogonal weight matrices to ensure that the encoder is a left inverse of the decoder. We also…
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Taxonomy
TopicsModel Reduction and Neural Networks · Fluid Dynamics and Vibration Analysis · Computational Physics and Python Applications
