粒度
互易晶格
体积模量
互惠的
人工神经网络
图形
计算机科学
材料科学
统计物理学
衍射
物理
理论计算机科学
凝聚态物理
人工智能
量子力学
操作系统
哲学
语言学
作者
Bin Cao,Daniel R. Anderson,Luke K. Davis
标识
DOI:10.1107/s1600576724011336
摘要
Material properties can often be derived directly from fundamental equations governing electron behavior. In this study, we present an open-source asymmetric-unit-based graph neural network designed to capture atomic patterns and their corresponding electron distributions. By coarse-graining sites belonging to conjugate subgroups and analyzing reciprocal space through powder X-ray diffraction patterns, our model predicts key physical properties, including formation energy, band gap, bulk modulus and metal/non-metal classification. Our method demonstrates exceptional predictive accuracy for properties calculated using density functional theory across the Materials Project dataset. Our approach is compared with state-of-the-art models and exhibits impressively low error rates in zero-shot predictions.
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