Prediction of Energetic Material Properties from Electronic Structure Using 3D Convolutional Neural Networks.

Journal: Journal of chemical information and modeling
Published Date:

Abstract

We develop a convolutional neural network capable of directly parsing the 3D electronic structure of a molecule described by spatial point data for charge density and electrostatic potential represented as a 4D tensor. This method effectively bypasses the need to construct complex representations, or descriptors, of a molecule. This is beneficial because the accuracy of a machine learned model depends on the input representation. Ideally, input descriptors encode the essential physics and chemistry that influence the target property. Thousands of molecular descriptors have been proposed, and proper selection of features requires considerable domain expertise or exhaustive and careful statistical downselection. In contrast, deep learning networks are capable of learning rich data representations. This provides a compelling motivation to use deep learning networks to learn molecular structure-property relations from "raw" data. The convolutional neural network model is jointly trained on over 20,000 molecules that are potentially energetic materials (explosives) to predict dipole moment, total electronic energy, Chapman-Jouguet (C-J) detonation velocity, C-J pressure, C-J temperature, crystal density, HOMO-LUMO gap, and solid phase heat of formation. This work demonstrates the first use of complete 3D electronic structure for machine learning of molecular properties.

Authors

  • Alex D Casey
    School of Mechanical Engineering, Purdue University, West Lafayette, Indiana 47907, United States.
  • Steven F Son
    School of Mechanical Engineering, Purdue University, West Lafayette, Indiana 47907, United States.
  • Ilias Bilionis
    School of Mechanical Engineering, Purdue University, West Lafayette, IN, USA.
  • Brian C Barnes
    Detonation Science and Modeling Branch, CCDC Army Research Laboratory, Aberdeen Proving Ground, Maryland 21005, United States.