Bulletin of the American Physical Society
APS March Meeting 2022
Volume 67, Number 3
Monday–Friday, March 14–18, 2022; Chicago
Session Q09: Predicting Nonlinear and Complex Systems with Machine Learning III
3:00 PM–5:24 PM,
Wednesday, March 16, 2022
Room: McCormick Place W-180
Sponsoring
Units:
GSNP DSOFT DCOMP
Chair: Ying-Cheng Lai, Arizona State University
Abstract: Q09.00004 : Mechanical memory manipulation using Reinforcement Learning
4:00 PM–4:12 PM
Presenter:
Laura Michel
(PSL)
Authors:
Laura Michel
(PSL)
Frédéric Lechenault
(CNRS)
Théo Jules
(Raymond and Beverly Sackler School of Physics and Astronomy)
Recent progress has been made in the understanding of memory systems, as they are a promising way to obtain materials with programmable properties. Here we introduce a model framework for dynamical memory manipulation based on a multistable chain composed of coupled bistable spring-mass systems. We show that, using a Reinforcement Learning agent, we can control this highly nonlinear system in force, driving it from any stable or random configuration to any other. We also show that the use of Transfer Learning techniques allows to extend this process to a much larger region of parameter space.
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