Published June 26, 2023
| Version v1
Journal article
Open
Learning to learn by using nonequilibrium training protocols for adaptable materials
Creators
- 1. University of Chicago
- 2. Yale University
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.Files
Learning-to-learn-by-using-nonequilibrium-training-protocols-for-adaptable-materials.pdf
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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