2022 Annual Meeting
(298e) Manifold Learning Post-Processing Galerkin Algorithms for Dissipative PDEs on Their Approximate Inertial Manifolds
Authors
We propose a data driven nonlinear Galerkin scheme to approximate the AIFs of the KS. The method employs autoencoders and diffusion maps (based both on spectral and POD bases) to parametrize the reduced space. We then use neural networks and geometric harmonics to approximate the functional dependence between determining degrees of freedom and higher order ones. Finally, we reconstruct the full solution exploiting these dependencies, thus constructing a data driven postprocessing Galerkin scheme [2].
[1] Foias, C., Jolly, M. S., Kevrekidis, I. G., & Titi, E. S. (1994). On some dissipative fully discrete nonlinear Galerkin schemes for the Kuramoto-Sivashinsky equation. Physics Letters A, 186(1-2), 87-96.
[2] Foias, C., Jolly, M. S., Kevrekidis, I. G., Sell, G. R., & Titi, E. S. (1988). On the computation of inertial manifolds. Physics Letters A, 131(7-8), 433-436.