Litcius/Paper detail

Machine learning assisted crystal structure prediction made simple

Chuan-Nan Li, Han‐Pu Liang, Zhao Bai-Qing, Su‐Huai Wei, Xie Zhang

2024Journal of Materials Informatics16 citationsDOIOpen Access PDF

Abstract

Crystal structure prediction (CSP) plays a crucial role in condensed matter physics and materials science, with its importance evident not only in theoretical research but also in the discovery of new materials and the advancement of novel technologies. However, due to the diversity and complexity of crystal structures, trial-and-error experimental synthesis is time-consuming, labor-intensive, and insufficient to meet the increasing demand for new materials. In recent years, machine learning (ML) methods have significantly boosted CSP. In this review, we present a comprehensive review of the ML models applied in CSP. We first introduce the general steps for CSP and highlight the bottlenecks in conventional CSP methods. We further discuss the representation of crystal structures and illustrate how ML-assisted CSP works. In particular, we review the applications of graph neural networks (GNNs) and ML force fields in CSP, which have been demonstrated to significantly speed up structure search and optimization. In addition, we provide an overview of advanced generative models in CSP, including variational autoencoders (VAEs), generative adversarial networks (GANs), and diffusion models. Finally, we discuss the remaining challenges in ML-assisted CSP.

Topics & Concepts

Simple (philosophy)Artificial intelligenceCrystal structure predictionComputer scienceMachine learningMaterials scienceCrystal structureCrystallographyChemistryPhilosophyEpistemologyMachine Learning in Materials ScienceX-ray Diffraction in Crystallography