Published June 26, 2023 | Version v1
Journal article Open

Learning to learn by using nonequilibrium training protocols for adaptable materials

Description

Evolution in time-varying environments naturally leads to adaptable biological systems that can easily switch functionalities. Advances in the synthesis of environmentally responsive materials therefore open up the possibility of creating a wide range of synthetic materials which can also be trained for adaptability. We consider high-dimensional inverse problems for materials where any particular functionality can be realized by numerous equivalent choices of design parameters. By periodically switching targets in a given design algorithm, we can teach a material to perform incompatible functionalities with minimal changes in design parameters. We exhibit this learning strategy for adaptability in two simulated settings: elastic networks that are designed to switch deformation modes with minimal bond changes and heteropolymers whose folding pathway selections are controlled by a minimal set of monomer affinities. The resulting designs can reveal physical principles, such as nucleation-controlled folding, that enable such adaptability.

Data availability

Code for each set of tasks has been deposited in Github (allostery: https://github.com/jiayiwus1x/build-soft-modes-of-networks; Poisson's ratio: https://github.com/AyannaMatthews/AdaptableTraining-Auxetics; heteropolymers: https://github.com/falkma/AdaptableTraining-Heteropolymers). Data to reproduce main figure results can be found on Zenodo (https://doi.org/10.5281/zenodo.8019474). Any additional codes and datasets are available from the authors upon request.

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Additional details

Identifiers

DOI
10.1073/pnas.2219558120
Other
oai:uchicago.tind.io:6568

Funding

National Science Foundation
DMR-2011854
National Science Foundation
DMR-2215605
University of Chicago
Biophysics Training Grant
Simons Foundation
Department of Energy
Basic Energy Sciences Grant

UChicago Information

Division(s)
Physical Sciences Division, Pritzker School of Molecular Engineering
Department(s)
Biophysical Sciences, Physics
Center(s) or Institute(s)
Institute for Biophysical Dynamics, James Franck Institute