| Literature DB >> 34342466 |
Gabriel Marques1, Karl Leswing1, Tim Robertson1, David Giesen1, Mathew D Halls2, Alexander Goldberg2, Kyle Marshall3, Joshua Staker3, Tsuguo Morisato4, Hiroyuki Maeshima5, Hideyuki Arai5, Masaru Sasago5, Eiji Fujii5, Nobuyuki N Matsuzawa5.
Abstract
Materials exhibiting higher mobilities than conventional organic semiconducting materials such as fullerenes and fused thiophenes are in high demand for applications in printed electronics. To discover new molecules in the heteroacene family that might show improved hole mobility, three de novo design methods were applied. Machine learning (ML) models were generated based on previously calculated hole reorganization energies of a quarter million examples of heteroacenes, where the energies were calculated by applying density functional theory (DFT) and a massive cloud computing environment. The three generative methods applied were (1) the continuous space method, where molecular structures are converted into continuous variables by applying the variational autoencoder/decoder technique; (2) the method based on reinforcement learning of SMILES strings (the REINVENT method); and (3) the junction tree variational autoencoder method that directly generates molecular graphs. Among the three methods, the second and third methods succeeded in obtaining chemical structures whose DFT-calculated hole reorganization energy was lower than the lowest energy in the training dataset. This suggests that an extrapolative materials design protocol can be developed by applying generative modeling to a quantitative structure-property relationship (QSPR) utility function.Entities:
Year: 2021 PMID: 34342466 DOI: 10.1021/acs.jpca.1c04587
Source DB: PubMed Journal: J Phys Chem A ISSN: 1089-5639 Impact factor: 2.781