Combining Machine Learning Potential and Structure Prediction for Accelerated Materials Design and Discovery

J Phys Chem Lett. 2020 Oct 15;11(20):8710-8720. doi: 10.1021/acs.jpclett.0c02357. Epub 2020 Sep 30.

Abstract

The theoretical structure prediction method via quantum mechanical atomistic simulations such as density functional theory (DFT), based solely on chemical composition, has already become a routine tool to determine the structures of physical and chemical systems, e.g., solids and clusters. However, the application of DFT to more realistic simulations, to a large extent, is impeded because of the unfavorable scaling of the computational cost with respect to the system size. During recent years, the machine learning potential (MLP) method has been rapidly rising as an accurate and efficient tool for atomistic simulations. In this Perspective, we provide an introduction to the basic principles and advantages of the combination of structure prediction and MLP, as well as the challenges and opportunities associated with this promising approach.