Document detail
ID

oai:arXiv.org:2404.04810

Topic
Condensed Matter - Materials Scien... Computer Science - Machine Learnin...
Author
Song, Yuqi Dong, Rongzhi Wei, Lai Li, Qin Hu, Jianjun
Category

Computer Science

Year

2024

listing date

4/10/2024

Keywords
matrix materials crystal
Metrics

Abstract

Computational prediction of stable crystal structures has a profound impact on the large-scale discovery of novel functional materials.

However, predicting the crystal structure solely from a material's composition or formula is a promising yet challenging task, as traditional ab initio crystal structure prediction (CSP) methods rely on time-consuming global searches and first-principles free energy calculations.

Inspired by the recent success of deep learning approaches in protein structure prediction, which utilize pairwise amino acid interactions to describe 3D structures, we present AlphaCrystal-II, a novel knowledge-based solution that exploits the abundant inter-atomic interaction patterns found in existing known crystal structures.

AlphaCrystal-II predicts the atomic distance matrix of a target crystal material and employs this matrix to reconstruct its 3D crystal structure.

By leveraging the wealth of inter-atomic relationships of known crystal structures, our approach demonstrates remarkable effectiveness and reliability in structure prediction through comprehensive experiments.

This work highlights the potential of data-driven methods in accelerating the discovery and design of new materials with tailored properties.

;Comment: 16 pages

Song, Yuqi,Dong, Rongzhi,Wei, Lai,Li, Qin,Hu, Jianjun, 2024, AlphaCrystal-II: Distance matrix based crystal structure prediction using deep learning

Document

Open

Share

Source

Articles recommended by ES/IODE AI

Should we consider Systemic Inflammatory Response Index (SIRI) as a new diagnostic marker for rectal cancer?
inflammation rectal surgery overall survival complication significantly diagnostic value cancer rectal 38 siri