Evaluation of Machine Learning Interatomic Potentials for the Properties of Gold Nanoparticles.

Marco Fronzi,Roger D Amos,Rika Kobayashi, Naoki Matsumura, Kenta Watanabe, Rafael K Morizawa

Nanomaterials (Basel, Switzerland)(2022)

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摘要
We have investigated Machine Learning Interatomic Potentials in application to the properties of gold nanoparticles through the DeePMD package, using data generated with the VASP program. Benchmarking was carried out on Au20 nanoclusters against molecular dynamics simulations and show we can achieve similar accuracy with the machine learned potential at far reduced cost using LAMMPS. We have been able to reproduce structures and heat capacities of several isomeric forms. Comparison of our workflow with similar ML-IP studies is discussed and has identified areas for future improvement.
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关键词
gold clusters,heat capacities,machine learning potentials,molecular dynamics,structures
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