open access publication

Article, 2023

Reinforcement learning-based design of shape-changing metamaterials

Journal of Materials Chemistry A, ISSN 2050-7488, 2050-7496, Volume 11, 39, Pages 21036-21045, 10.1039/d3ta03119e

Contributors

Oliva, Sergi Bernaus [1] Bölle, Felix Tim [1] Las, A T [1] Xia, Xiaoxing 0000-0003-1255-3289 [2] Castelli, Ivano Eligio 0000-0001-5880-5045 [1]

Affiliations

  1. [1] Technical University of Denmark
  2. [NORA names: DTU Technical University of Denmark; University; Denmark; Europe, EU; Nordic; OECD];
  3. [2] Lawrence Livermore National Laboratory
  4. [NORA names: United States; America, North; OECD]

Abstract

We have implemented a new reinforcement learning method able to rationally design unique metamaterial structures, which change shape during operational conditions. We have applied this to design nanostructured silicon anodes for Li-ion batteries. During the last decade, artificially architected materials have been designed to obtain properties unreachable by naturally occurring materials, whose properties are determined by their atomic structure and chemical composition. In this work, we implement a new reinforcement learning (RL) method able to rationally design unique metamaterial structures at the nano-, micro-, and macroscale, which change shape during operational conditions. As an example, we apply this method to design nanostructured silicon anodes for Li-ion batteries (LIBs). The RL model is designed to apply different actions and predict change during operational conditions. The multi-component reward function comprises an increase in the total storage capacity of the resulting battery electrode and structural parameters, such as the minimum distance between the individual components of the nanostructure. Upon experimental validation using a polymer-based 3D printing technique, we expect that the newly discovered structures improve the current Si-based LIB anodes state-of-the-art by almost three times and almost ten times the current commercial LIB based on a graphitic anode. This RL-based optimization method opens up vast design space for other responsive metamaterials with tailored properties and pre-programmed structural transformation.

Keywords

Artificial, Li-ion, Li-ion batteries, RL model, action, anode, architected materials, atomic structure, battery, battery electrodes, capacity, chemical, chemical composition, commercial Li-ion batteries, components, composition, conditions, distance, electrode, experimental validation, function, graphite anode, increase, individual components, learning, learning methods, macroscale, materials, metamaterial structure, metamaterials, method, micro-, minimum distance, model, nano, nanostructured silicon anodes, nanostructures, occurring materials, operating conditions, optimization method, parameters, printing technique, properties, reinforcement, reinforcement learning, reinforcement learning method, reward function, shape, silicon anodes, state-of-the-art, storage, storage capacity, structural parameters, structural transformation, structure, tailored properties, technique, transformation, validity

Funders

  • National Nuclear Security Administration
  • Danish Agency for Science and Higher Education
  • Lawrence Livermore National Laboratory
  • United States Department of Energy

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