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U.S. Department of Energy
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Dataset, Code, and Models for Training Deep Learning Potentials for Low Temperature Plasma-Surface Interactions

Dataset ·
DOI:https://doi.org/10.34770/wq4t-wa25· OSTI ID:2589045

This repository contains datasets, training scripts, and finished models, and test simulations used in the development of DeepREBO— a machine-learned interatomic potential trained to emulate the REBO2 empirical potential. The data was generated to study deep potential development for simulations of plasma-surface interactions. It uses an active learning framework, starting from a minimal dataset and iteratively expanding it. Included are those generated datasets, the trained models, and simulations used to evaluate the performance of the training process. This resource supports reproducibility and provides a reference framework for training deep potentials in plasma-surface interaction studies.

Research Organization:
Princeton Plasma Physics Laboratory
Sponsoring Organization:
United States Department of Energy; United States Department of Energy; United States Department of Energy
DOE Contract Number:
AC02-09CH11466
OSTI ID:
2589045
Country of Publication:
United States
Language:
English

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