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Constructing Grids for Molecular Quantum Dynamics Using an Autoencoder.

Julius P P ZauleckRegina de Vivie-Riedle
Published in: Journal of chemical theory and computation (2017)
A challenge for molecular quantum dynamics (QD) calculations is the curse of dimensionality with respect to the nuclear degrees of freedom. A common approach that works especially well for fast reactive processes is to reduce the dimensionality of the system to a few most relevant coordinates. Identifying these can become a very difficult task, because they often are highly unintuitive. We present a machine learning approach that utilizes an autoencoder that is trained to find a low-dimensional representation of a set of molecular configurations. These configurations are generated by trajectory calculations performed on the reactive molecular systems of interest. The resulting low-dimensional representation can be used to generate a potential energy surface grid in the desired subspace. Using the G-matrix formalism to calculate the kinetic energy operator, QD calculations can be carried out on this grid. In addition to step-by-step instructions for the grid construction, we present the application to a test system.
Keyphrases
  • molecular dynamics
  • machine learning
  • density functional theory
  • monte carlo
  • molecular dynamics simulations
  • single molecule
  • artificial intelligence
  • high intensity
  • neural network
  • body composition