Efficient Gaussian process regression for prediction of molecular crystals harmonic free energies

被引:6
|
作者
Krynski, Marcin [1 ,2 ]
Rossi, Mariana [1 ,3 ]
机构
[1] Fritz Haber Inst Max Planck Soc, Faradayweg 4-6, D-14195 Berlin, Germany
[2] Warsaw Univ Technol, Fac Phys, Koszykowa 75, PL-00662 Warsaw, Poland
[3] MPI Struct & Dynam Matter, Luruper Chaussee 149, D-22765 Hamburg, Germany
关键词
BENZENE I; STABILITY; STYRENE;
D O I
10.1038/s41524-021-00638-x
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
We present a method to accurately predict the Helmholtz harmonic free energies of molecular crystals in high-throughput settings. This is achieved by devising a computationally efficient framework that employs a Gaussian Process Regression model based on local atomic environments. The cost to train the model with ab initio potentials is reduced by starting the optimization of the framework parameters, as well as the training and validation sets, with an empirical potential. This is then transferred to train the model based on density-functional theory potentials, including dispersion-corrections. We benchmarked our framework on a set of 444 hydrocarbon crystal structures, comprising 38 polymorphs and 406 crystal structures either measured in different conditions or derived from these polymorphs. Superior performance and high prediction accuracy, with mean absolute deviation below 0.04 kJ mol(-1) per atom at 300 K is achieved by training on as little as 60 crystal structures. Furthermore, we demonstrate the predictive efficiency and accuracy of the developed framework by successfully calculating the thermal lattice expansion of aromatic hydrocarbon crystals within the quasi-harmonic approximation, and predict how lattice expansion affects the polymorph stability ranking.
引用
收藏
页数:10
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