Quality-Diversity algorithms are proposed for crystal structure prediction to identify diverse high-performing solutions efficiently, enabling the discovery of novel materials. The approach combines machine-learning surrogate models and neural networks to predict crystal properties and optimize material structures.
The author presents a machine learning interatomic potential for predicting the structure of new 2D hybrid organic-inorganic perovskites, demonstrating accuracy and efficiency in structure prediction.
Multi-Objective Quality-Diversity algorithms can discover a diverse collection of crystal structures that achieve different trade-offs between stability, magnetism, conductivity, and deformation resistance.
기계 학습 상호 원자력 잠재력을 사용한 새로운 2D 하이브리드 유기 무기 페로브스카이트의 정확한 결정 구조 예측
AlphaCrystal-II, a novel deep learning model, can accurately predict the crystal structure of materials solely from their chemical compositions by exploiting the abundant inter-atomic interaction patterns found in known crystal structures.
This paper introduces HTOCSP, an open-source software package that automates the prediction and screening of small organic molecule crystal structures using population-based sampling methods and existing open-source molecular modeling tools.