Benchmarking Structural Evolution Methods for Training of Machine Learned Interatomic Potentials
Michael J. Waters,
James M. Rondinelli
Abstract:When creating training data for machine-learned interatomic potentials (MLIPs), it is common to create initial structures and evolve them using molecular dynamics to sample a larger configuration space. We benchmark two other modalities of evolving structures, contour exploration and dimer-method searches against molecular dynamics for their ability to produce diverse and robust training density functional theory data sets for MLIPs. We also discuss the generation of initial structures which are either from kn… Show more
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