过冷
可转让性
统计物理学
计算机科学
点(几何)
玻璃化转变
人工神经网络
人工智能
机器学习
物理
几何学
数学
热力学
罗伊特
核磁共振
聚合物
作者
Gerhard Jung,Giulio Biroli,Ludovic Berthier
标识
DOI:10.1103/physrevlett.130.238202
摘要
We introduce GlassMLP, a machine learning framework using physics-inspired structural input to predict the long-time dynamics in deeply supercooled liquids. We apply this deep neural network to atomistic models in 2D and 3D. Its performance is better than the state of the art while being more parsimonious in terms of training data and fitting parameters. GlassMLP quantitatively predicts four-point dynamic correlations and the geometry of dynamic heterogeneity. Transferability across system sizes allows us to efficiently probe the temperature evolution of spatial dynamic correlations, revealing a profound change with temperature in the geometry of rearranging regions.
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