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Learning to learn by using nonequilibrium training protocols for adaptable materials.

Martin J FalkJiayi WuAyanna MatthewsVedant SachdevaNidhi PashineMargaret L GardelSidney R NagelArvind Murugan
Published in: Proceedings of the National Academy of Sciences of the United States of America (2023)
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.
Keyphrases
  • mental health
  • machine learning
  • molecular dynamics simulations
  • body composition
  • resistance training
  • mass spectrometry