Active Learning of Uniformly Accurate Inter-atomic Potentials for Materials Simulation
arXiv:1810.11890 · doi:10.1103/PhysRevMaterials.3.023804
Abstract
An active learning procedure called Deep Potential Generator (DP-GEN) is proposed for the construction of accurate and transferable machine learning-based models of the potential energy surface (PES) for the molecular modeling of materials. This procedure consists of three main components: exploration, generation of accurate reference data, and training. Application to the sample systems of Al, Mg and Al-Mg alloys demonstrates that DP-GEN can produce uniformly accurate PES models with a minimal number of reference data.