Publication: Trajectory-based machine learning method and its application to molecular dynamics
Trajectory-based machine learning method and its application to molecular dynamics
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Han, R., & Luber, S. (2020). Trajectory-based machine learning method and its application to molecular dynamics. Molecular Physics, 118(19–20), e1788189. https://doi.org/10.1080/00268976.2020.1788189
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Ab initio molecular dynamics (AIMD) has become a popular simulation technique but long simulation times are often hampered due to its high computational effort. Alternatively, classical molecular dynamics (MD) based on force fields may be used, which, however, has certain shortcomings compared to AIMD. In order to alleviate that situation, a trajectory-based machine learning (TrajML) approach is introduced for the construction of force fields by learning from AIMD trajectories. Only nuclear trajectories are required, which can be obta
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Han, R., & Luber, S. (2020). Trajectory-based machine learning method and its application to molecular dynamics. Molecular Physics, 118(19–20), e1788189. https://doi.org/10.1080/00268976.2020.1788189