2024
DOI: 10.35848/1347-4065/ad29d0
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Training dependency of neural network interatomic potential for molecular dynamics simulation of Ru-Si-O mixed system

Shuichiro Hashimoto,
Takanobu Watanabe

Abstract: We investigated training dependency of neural network interatomic potentials for molecular dynamics simulation of Ru-Si-O mixed system. Our neural network interatomic potential was improved by data augmentation technique for training dataset, including data points of reference energies and forces related to reference structures. We demonstrated that data augmentation technique, focusing on lattice expansion coefficient of bulk structures in the training dataset, requires moderation to ensure optimal training o… Show more

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