CEGAN: Crystal Edge Graph Attention Network for multiscale classification of materials environment

Research Square (Research Square)(2022)

引用 0|浏览5
暂无评分
摘要
Abstract Machine learning models and applications in materials design and discovery typically involve the use of feature representations or “descriptors” followed by a learning algorithm that maps it to a user-desired property of interest. Most popular mathematical formulation-based descriptors are not unique across the atomic environments or suffer from transferability issues across different application domains and/or material classes. In this work, we introduce the Crystal Edge Graph Attention Network (CEGAN) workflow that uses graph attention-based architecture to learn unique feature representations and perform classification of materials across multiple scales (from atomic to mesoscale) and diverse classes ranging from metals, oxides, non-metals and even hierarchical materials such as zeolites. We first demonstrate a case study where the classification is based on a global, structure-level representation such as space group and structural dimensionality (e.g., bulk, clusters, 2D, etc.). Using representative materials such as polycrystals and zeolites, we next demonstrate the transferability of our network in successfully performing local atom level classification tasks, such as grain boundary identification and other heterointerfaces. Finally, we demonstrate classification in (thermal) noisy dynamical environments using a representative example of crystal nucleation and growth of a zeolite polymorph from an amorphous synthesis mixture. Overall, our approach is agnostic to the material type and allows for multiscale classification of features ranging from atomic-scale crystal structures to heterointerfaces to microscale grain boundaries.
更多
查看译文
关键词
multiscale classification,materials environment,attention
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要