[Crib-list] Computational Research in Boston and Beyond Seminar: Emily Williams (MIT) - October 4, 2024

Yufei An yfa at mit.edu
Mon Sep 23 16:37:00 EDT 2024


Dear all,

Computational Research in Boston and Beyond Seminar

DATE:      Friday, October 4, 2024

TIME:      12:00 PM - 1:00 PM

ZOOM:    https://mit.zoom.us/j/96155042770


SPEAKER: Emily Williams (MIT)

TITLE: Machine-Learning-Based Spectral Methods Toward Reduced-Order Modeling for Partial Differential Equations

ABSTRACT:

Many multiscale physical systems contain too many degrees of freedom to simulate accurately given limited computational resources. Reduced-order modeling techniques reduce the prohibitively large system to a computationally feasible size without sacrificing essential dynamical features. Model reduction which involves coarsening a representation using standard basis functions, e.g. Fourier functions, is well developed. The applicability and effectiveness of spectral methods depend crucially on the choice of basis functions used to expand the solution of a partial differential equation. Deep learning is a strong contender in providing efficient representations of complex functions [Meuris et al., Sci. Rep. 13, 1739, 2023]. Deep neural networks (DNNs) have shown potential in learning continuous operators or complex systems from streams of scattered data. The deep operator network (DeepONet) [Lu et al., Nat. Mach. Intell 3, 2021] consists of a DNN for encoding the discrete input function space (branch net) and another DNN for encoding the domain of the output functions (trunk net). Physics-informed DeepONets [Wang et al., Sci. Adv. 7, 40, 2021] leverage automatic differentiation to impose the underlying physical laws during model training. In this work, we employ physics-informed machine-learning extracted basis functions from DeepONets which are custom-made for the particular system, with the goal of reduced-order modeling with spectral methods for partial differential equations.


For information about the Computational Research in Boston and Beyond Seminar, visit... https://math.mit.edu/crib/

Best regards,

Yufei An
Faculty Support
MIT Mathematics
Phone: (617) 258-6816
Office: 2-106

-------------- next part --------------
An HTML attachment was scrubbed...
URL: <http://mailman.mit.edu/pipermail/crib-list/attachments/20240923/93e83fed/attachment.htm>
-------------- next part --------------
A non-text attachment was scrubbed...
Name: CRIBB_2024_10_04_EmilyWilliams[84].pdf
Type: application/pdf
Size: 214779 bytes
Desc: CRIBB_2024_10_04_EmilyWilliams[84].pdf
URL: <http://mailman.mit.edu/pipermail/crib-list/attachments/20240923/93e83fed/attachment.pdf>


More information about the CRiB-list mailing list