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

T Xie and A France-Lanord and YM Wang and J Lopez and MA Stolberg and M Hill and GM Leverick and R Gomez-Bombarelli and JA Johnson and Y Shao- Horn and JC Grossman, NATURE COMMUNICATIONS, 13, 3415 (2022).

DOI: 10.1038/s41467-022-30994-1

Polymer electrolytes are promising candidates for the next generation lithium-ion battery technology. Large scale screening of polymer electrolytes is hindered by the significant cost of molecular dynamics (MD) simulation in amorphous systems: the amorphous structure of polymers requires multiple, repeated sampling to reduce noise and the slow relaxation requires long simulation time for convergence. Here, we accelerate the screening with a multi-task graph neural network that learns from a large amount of noisy, unconverged, short MD data and a small number of converged, long MD data. We achieve accurate predictions of 4 different converged properties and screen a space of 6247 polymers that is orders of magnitude larger than previous computational studies. Further, we extract several design principles for polymer electrolytes and provide an open dataset for the community. Our approach could be applicable to a broad class of material discovery problems that involve the simulation of complex, amorphous materials. Screening polymer electrolytes for batteries is extremely expensive due to the complex structures and slow dynamics. Here the authors develop a machine learning scheme to accelerate the screening and explore a space much larger than past studies.

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