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Numerical Accuracy Matters: Applications of Machine Learned Potential Energy Surfaces.

Silvan KäserMarkus Meuwly
Published in: The journal of physical chemistry letters (2024)
The role of numerical accuracy in training and evaluating neural network-based potential energy surfaces is examined for different experimental observables. For observables that require third- and fourth-order derivatives of the potential energy with respect to Cartesian coordinates single-precision arithmetics as is typically used in ML-based approaches is insufficient and leads to roughness of the underlying PES as is explicitly demonstrated. Increasing the numerical accuracy to double-precision gives a smooth PES with higher-order derivatives that are numerically stable and yield meaningful anharmonic frequencies and tunneling splitting as is demonstrated for H 2 CO and malonaldehyde. For molecular dynamics simulations, which only require first-order derivatives, single-precision arithmetics appears to be sufficient, though.
Keyphrases
  • molecular dynamics simulations
  • neural network
  • human health
  • molecular docking
  • staphylococcus aureus
  • structure activity relationship
  • cystic fibrosis