Deep convolutional neural networks for generating atomistic configurations of multi-component macromolecules from coarse-grained models.

Journal: The Journal of chemical physics
Published Date:

Abstract

Despite the modern advances in the available computational resources, the length and time scales of the physical systems that can be studied in full atomic detail, via molecular simulations, are still limited. To overcome such limitations, coarse-grained (CG) models have been developed to reduce the dimensionality of the physical system under study. However, to study such systems at the atomic level, it is necessary to re-introduce the atomistic details into the CG description. Such an ill-posed mathematical problem is typically treated via numerical algorithms, which need to balance accuracy, efficiency, and general applicability. Here, we introduce an efficient and versatile method for backmapping multi-component CG macromolecules of arbitrary microstructures. By utilizing deep learning algorithms, we train a convolutional neural network to learn structural correlations between polymer configurations at the atomistic and their corresponding CG descriptions, obtained from atomistic simulations. The trained model is then utilized to get predictions of atomistic structures from input CG configurations. As an illustrative example, we apply the convolutional neural network to polybutadiene copolymers of various microstructures, in which each monomer microstructure (i.e., cis-1,4, trans-1,4, and vinyl-1,2) is represented as a different CG particle type. The proposed methodology is transferable over molecular weight and various microstructures. Moreover, starting from a specific single CG configuration with a given microstructure, we show that by modifying its chemistry (i.e., CG particle types), we are able to obtain a set of well equilibrated polymer configurations of different microstructures (chemistry) than the one of the original CG configuration.

Authors

  • Eleftherios Christofi
    Computation-based Science and Technology Research Center, The Cyprus Institute, Nicosia 2121, Cyprus.
  • Antonis Chazirakis
    Department of Mathematics and Applied Mathematics, University of Crete, Heraklion GR-71110, Greece.
  • Charalambos Chrysostomou
  • Mihalis A Nicolaou
    Computation-based Science and Technology Research Center, The Cyprus Institute, Nicosia 2121, Cyprus.
  • Wei Li
    Department of Nephrology, The Second Affiliated Hospital of Guangxi Medical University, Nanning, Guangxi, China.
  • Manolis Doxastakis
    Department of Chemical and Biomolecular Engineering, University of Tennessee, Knoxville, Tennessee 37996, USA.
  • Vagelis A Harmandaris
    Computation-based Science and Technology Research Center, The Cyprus Institute, Nicosia 2121, Cyprus.