Bulletin of the American Physical Society
2024 APS March Meeting
Monday–Friday, March 4–8, 2024; Minneapolis & Virtual
Session G18: Machine Learning for Materials Science II
11:30 AM–2:30 PM,
Tuesday, March 5, 2024
Room: M100I
Sponsoring
Unit:
GDS
Chair: Antonia Statt, University of Illinois at Urbana-Champaign
Abstract: G18.00001 : Representation learning for data-driven analysis of soft matter simulations
11:30 AM–12:06 PM
Presenter:
Wesley F Reinhart
(Penn State)
Author:
Wesley F Reinhart
(Penn State)
I demonstrate the methods on colloidal crystallization, ice crystals, binary mesophases, and copolymer aggregates to illustrate its broad applicability. I also show that the spatiotemporal evolution of systems in the learned latent space is smooth and continuous, despite being derived from isolated snapshots rather than dynamic trajectories. In each case, the learned collective variables can give insight into the physical nature of the system at hand, without extensive parameter tuning or development of new functional forms. Finally, the learned collective variables are used in a supervised learning context to predict the relation between design variables and self-assembled structure. A systematic analysis of surrogate model architecture is considered and the merits of each are explored. These predictive models are then used to successfully select candidates that yield targeted structure. I will conclude with new developments and future work in the use of unsupervised and self-supervised learning for soft matter design.
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