Reinforcement learning based hybrid bond-order coarse-grained interatomic potentials for exploring mesoscale aggregation in liquid–liquid mixtures

Author:

Chandra Anirban12ORCID,Loeffler Troy12,Chan Henry12ORCID,Wang Xiaoyu3ORCID,Stephenson G. B.4ORCID,Servis Michael J.3ORCID,Sankaranarayanan Subramanian K. R. S.12ORCID

Affiliation:

1. Center for Nanoscale Materials, Argonne National Laboratory 1 , Lemont, Illinois 60439, USA

2. Department of Mechanical and Industrial Engineering, University of Illinois 2 , Chicago, Illinois 60607, USA

3. Chemical Sciences and Engineering Division, Argonne National Laboratory 3 , Lemont, Illinois 60439, USA

4. Materials Science Division, Argonne National Laboratory 4 , Lemont, Illinois 60439, USA

Abstract

Exploring mesoscopic physical phenomena has always been a challenge for brute-force all-atom molecular dynamics simulations. Although recent advances in computing hardware have improved the accessible length scales, reaching mesoscopic timescales is still a significant bottleneck. Coarse-graining of all-atom models allows robust investigation of mesoscale physics with a reduced spatial and temporal resolution but preserves desired structural features of molecules, unlike continuum-based methods. Here, we present a hybrid bond-order coarse-grained forcefield (HyCG) for modeling mesoscale aggregation phenomena in liquid–liquid mixtures. The intuitive hybrid functional form of the potential offers interpretability to our model, unlike many machine learning based interatomic potentials. We parameterize the potential with the continuous action Monte Carlo Tree Search (cMCTS) algorithm, a reinforcement learning (RL) based global optimizing scheme, using training data from all-atom simulations. The resulting RL-HyCG correctly describes mesoscale critical fluctuations in binary liquid–liquid extraction systems. cMCTS, the RL algorithm, accurately captures the mean behavior of various geometrical properties of the molecule of interest, which were excluded from the training set. The developed potential model along with the RL-based training workflow could be applied to explore a variety of other mesoscale physical phenomena that are typically inaccessible to all-atom molecular dynamics simulations.

Publisher

AIP Publishing

Subject

Physical and Theoretical Chemistry,General Physics and Astronomy

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Machine Learning in Soft Matter: From Simulations to Experiments;Advanced Functional Materials;2024-01-31

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