Automated discovery of a robust interatomic potential for aluminum.
Justin S SmithBenjamin T NebgenNithin MathewJie ChenNicholas LubbersLeonid BurakovskySergei TretiakHai Ah NamTimothy C GermannSaryu FensinKipton BarrosPublished in: Nature communications (2021)
Machine learning, trained on quantum mechanics (QM) calculations, is a powerful tool for modeling potential energy surfaces. A critical factor is the quality and diversity of the training dataset. Here we present a highly automated approach to dataset construction and demonstrate the method by building a potential for elemental aluminum (ANI-Al). In our active learning scheme, the ML potential under development is used to drive non-equilibrium molecular dynamics simulations with time-varying applied temperatures. Whenever a configuration is reached for which the ML uncertainty is large, new QM data is collected. The ML model is periodically retrained on all available QM data. The final ANI-Al potential makes very accurate predictions of radial distribution function in melt, liquid-solid coexistence curve, and crystal properties such as defect energies and barriers. We perform a 1.3M atom shock simulation and show that ANI-Al force predictions shine in their agreement with new reference DFT calculations.
Keyphrases
- molecular dynamics simulations
- machine learning
- molecular dynamics
- density functional theory
- high throughput
- human health
- big data
- deep learning
- molecular docking
- small molecule
- high resolution
- artificial intelligence
- single molecule
- mass spectrometry
- risk assessment
- single cell
- quantum dots
- virtual reality
- resistance training
- candida albicans