Literature DB >> 31939282

AI-Assisted Exploration of Superionic Glass-Type Li+ Conductors with Aromatic Structures.

Kan Hatakeyama-Sato1, Toshiki Tezuka1, Momoka Umeki1, Kenichi Oyaizu1.   

Abstract

It has long remained challenging to predict the properties of complex chemical systems, such as polymer-based materials and their composites. We have constructed the largest database of lithium-conducting solid polymer electrolytes (104 entries) and employed a transfer-learned graph neural network to accurately predict their conductivity (mean absolute error of less than 1 on a logarithmic scale). The bias-free prediction by the network helped us to find superionic conductors composed of charge-transfer complexes of aromatic polymers (ionic conductivity of around 10-3 S/cm at room temperature). The glassy design was contrary to the traditional concept of rubbery polymer electrolytes, but it was found to be appropriate to achieve fast, decoupled motion of ionic species from polymer chains and to enhance thermal and mechanical stability. The unbiased suggestions generated by machine learning models can help researches to discover unexpected chemical phenomena, which could also induce a paradigm shift of energy-related functional materials.

Entities:  

Year:  2020        PMID: 31939282     DOI: 10.1021/jacs.9b11442

Source DB:  PubMed          Journal:  J Am Chem Soc        ISSN: 0002-7863            Impact factor:   15.419


  3 in total

1.  Accelerating amorphous polymer electrolyte screening by learning to reduce errors in molecular dynamics simulated properties.

Authors:  Tian Xie; Arthur France-Lanord; Yanming Wang; Jeffrey Lopez; Michael A Stolberg; Megan Hill; Graham Michael Leverick; Rafael Gomez-Bombarelli; Jeremiah A Johnson; Yang Shao-Horn; Jeffrey C Grossman
Journal:  Nat Commun       Date:  2022-06-14       Impact factor: 17.694

2.  Preparation and Structure of the Ion-Conducting Mixed Molecular Glass Ga2I3.17.

Authors:  Alfred Amon; M Emre Sener; Alexander Rosu-Finsen; Alex C Hannon; Ben Slater; Christoph G Salzmann
Journal:  Inorg Chem       Date:  2021-04-14       Impact factor: 5.165

3.  Feasibility and application of machine learning enabled fast screening of poly-beta-amino-esters for cartilage therapies.

Authors:  Stefano Perni; Polina Prokopovich
Journal:  Sci Rep       Date:  2022-08-20       Impact factor: 4.996

  3 in total

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