Tell Machine Learning Potentials What They Are Needed For: Simulation-Oriented Training Exemplified for Glycine
Fuchun Ge,
Ran Wang,
Chen Qu
et al.
Abstract:Machine learning potentials (MLPs) are widely applied
as an efficient
alternative way to represent potential energy surfaces (PESs) in many
chemical simulations. The MLPs are often evaluated with the root-mean-square
errors on the test set drawn from the same distribution as the training
data. Here, we systematically investigate the relationship between
such test errors and the simulation accuracy with MLPs on an example
of a full-dimensional, global PES for the glycine amino acid. Our
results show that the er… Show more
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