无定形固体
材料科学
人工神经网络
径向分布函数
统计物理学
功能(生物学)
人工智能
工作(物理)
编码
感知器
机器学习
生物系统
计算机科学
分子动力学
物理
热力学
结晶学
基因
生物
进化生物学
化学
量子力学
生物化学
作者
Giulia Janzen,C. Smit,Samantha Visbeek,Vincent E. Debets,Chengjie Luo,Cornelis Storm,Simone Ciarella,Liesbeth M. C. Janssen
标识
DOI:10.1103/physrevmaterials.8.025602
摘要
It is well established that physical aging of amorphous solids is governed by a marked change in dynamical properties as the material becomes older. Conversely, structural properties such as the radial distribution function exhibit only a very weak age dependence, usually deemed negligible with respect to the numerical noise. Here we demonstrate that the extremely weak age-dependent changes in structure are, in fact, sufficient to reliably assess the age of a glass with the support of machine learning. We employ a supervised learning method to predict the age of a glass based on the system's instantaneous radial distribution function. Specifically, we train a multilayer perceptron for a model glass former quenched to different temperatures and find that this neural network can accurately classify the age of our system across at least 4 orders of magnitude in time. Our analysis also reveals which structural features encode the most useful information. Overall, this work shows that through the aid of machine learning, a simple structure-dynamics link can, indeed, be established for physically aged glasses.
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