共 50 条
Utilizing Machine Learning for Efficient Parameterization of Coarse Grained Molecular Force Fields
被引:41
|作者:
McDonagh, James L.
[1
]
Shkurti, Ardita
[2
]
Bray, David J.
[2
]
Anderson, Richard L.
[2
]
Pyzer-Knapp, Edward O.
[1
]
机构:
[1] IBM Res UK, Hartree Ctr, Daresbury WA4 4AD, England
[2] STFC Daresbury Labs, Daresbury WA4 4AD, England
关键词:
ELECTRON CORRELATION ENERGIES;
PARTITION-COEFFICIENTS;
ORGANIC-COMPOUNDS;
N-HEXANE/WATER;
DYNAMICS;
MODELS;
SIMULATION;
PREDICTION;
CHARMM;
EXPLOITATION;
D O I:
10.1021/acs.jcim.9b00646
中图分类号:
R914 [药物化学];
学科分类号:
100701 ;
摘要:
We present a machine learning approach to automated force field development in dissipative particle dynamics (DPD). The approach employs Bayesian optimization to parametrize a DPD force field against experimentally determined partition coefficients. The optimization process covers a discrete space of over 40 000 000 points, where each point represents the set of potentials that jointly forms a force field. We find that Bayesian optimization is capable of reaching a force field of comparable performance to the current state-of-the-art within 40 iterations. The best iteration during the optimization achieves an R-2 of 0.78 and an RMSE of 0.63 log units on the training set of data, these metrics are maintained when a validation set is included, giving R-2 of 0.8 and an RMSE of 0.65 log units. This work hence provides a proof-of-concept, expounding the utility of coupling automated and efficient global optimization with a top down data driven approach to force field parametrization. Compared to commonly employed alternative methods, Bayesian optimization offers global parameter searching and a low time to solution.
引用
收藏
页码:4278 / 4288
页数:11
相关论文