(510b) Deep Learning for Recreating Chaotic Dynamics of Partial Differential Equations with a Minimal Representation | AIChE

(510b) Deep Learning for Recreating Chaotic Dynamics of Partial Differential Equations with a Minimal Representation

Authors 

Graham, M., University of Wisconsin-Madison
We describe a method of reduced order modeling for systems with high-dimensional chaotic dynamics in which we map data to an “exact” minimal representation called an inertial manifold and evolve trajectories forward in time with this representation. The mapping is learned by training an undercomplete autoencoder where we vary the dimension of the minimal representation. Once we reach the dimension of the inertial manifold there is a drastic drop in recreation error. For the Kuramoto-Sivashinsky equation (KSE), we validate this conclusion against known estimates of the dimension and make predictions for larger domain sizes. Next, we show the time evolution can be performed on data represented with the inertial manifold coordinates in a data-driven manner using neural networks or using knowledge of the equations with a nonlinear Galerkin method. For the KSE, both methods show excellent short- and long-time predictive capabilities when using the correct number of dimensions and a significant drop in performance with too few dimensions. Finally, we apply this method to direct numerical simulations of turbulent plane Couette flow in a minimal flow unit domain.

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