Adversarial reverse mapping of equilibrated condensed-phase molecular structures
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| Publication date | 12-2020 |
| Journal | Machine Learning: Science and Technology |
| Article number | 045014 |
| Volume | Issue number | 1 | 4 |
| Number of pages | 14 |
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| Abstract |
A tight and consistent link between resolutions is crucial to further expand the impact of multiscale modeling for complex materials. We herein tackle the generation of condensed molecular structures as a refinement—backmapping—of a coarse-grained (CG) structure. Traditional schemes start from a rough coarse-to-fine mapping and perform further energy minimization and molecular dynamics simulations to equilibrate the system. In this study we introduce DeepBackmap: A deep neural network based approach to directly predict equilibrated molecular structures for condensed-phase systems. We use generative adversarial networks to learn the Boltzmann distribution from training data and realize reverse mapping by using the CG structure as a conditional input. We apply our method to a challenging condensed-phase polymeric system. We observe that the model trained in a melt has remarkable transferability to the crystalline phase. The combination of data-driven and physics-based aspects of our architecture help reach temperature transferability with only limited training data. |
| Document type | Article |
| Language | English |
| Published at | https://doi.org/10.1088/2632-2153/abb6d4 |
| Other links | https://www.scopus.com/pages/publications/85116074616 |
| Downloads |
Stieffenhofer_2020_Mach._Learn. _Sci._Technol._1_045014
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