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High-throughput screening of tribological properties of monolayer films using molecular dynamics and machine learning.

Authors :
Quach, Co D.
Gilmer, Justin B.
Pert, Daniel
Mason-Hogans, Akanke
Iacovella, Christopher R.
Cummings, Peter T.
M c Cabe, Clare
Source :
Journal of Chemical Physics. 4/21/2022, Vol. 156 Issue 15, p1-17. 17p.
Publication Year :
2022

Abstract

Monolayer films have shown promise as a lubricating layer to reduce friction and wear of mechanical devices with separations on the nanoscale. These films have a vast design space with many tunable properties that can affect their tribological effectiveness. For example, terminal group chemistry, film composition, and backbone chemistry can all lead to films with significantly different tribological properties. This design space, however, is very difficult to explore without a combinatorial approach and an automatable, reproducible, and extensible workflow to screen for promising candidate films. Using the Molecular Simulation Design Framework (MoSDeF), a combinatorial screening study was performed to explore 9747 unique monolayer films (116 964 total simulations) and a machine learning (ML) model using a random forest regressor, an ensemble learning technique, to explore the role of terminal group chemistry and its effect on tribological effectiveness. The most promising films were found to contain small terminal groups such as cyano and ethylene. The ML model was subsequently applied to screen terminal group candidates identified from the ChEMBL small molecule library. Approximately 193 131 unique film candidates were screened with approximately a five order of magnitude speed-up in analysis compared to simulation alone. The ML model was thus able to be used as a predictive tool to greatly speed up the initial screening of promising candidate films for future simulation studies, suggesting that computational screening in combination with ML can greatly increase the throughput in combinatorial approaches to generate in silico data and then train ML models in a controlled, self-consistent fashion. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00219606
Volume :
156
Issue :
15
Database :
Academic Search Index
Journal :
Journal of Chemical Physics
Publication Type :
Academic Journal
Accession number :
156474522
Full Text :
https://doi.org/10.1063/5.0080838