短期波动下过冷液体结构松弛的无监督学习

IF 9.1 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Yunrui Qiu, Inhyuk Jang, Xuhui Huang, Arun Yethiraj
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引用次数: 0

摘要

揭示过冷液体的结构信息与动力学性质之间的关系是物理学的重大挑战之一。以粒子倾向为特征的动态非均质性常被用作动态慢化的代表。多年来,人们做出了巨大的努力来捕捉与过冷液体的动态非均质性有关的结构变化。在这项工作中,我们提出了一种基于滞后典型相关分析或滞后自编码器的创新无监督机器学习协议,以自主识别kobo - andersen玻璃前体非晶结构的关键顺序参数(OP)。OP由多个经典结构描述符整合而成,在比松弛时间短数千倍的时间尺度上表示具有最强短期相关性的分量。引人注目的是,该OP在长时间内显示出与倾向的显著相关性,显著优于传统的无监督模型和有监督模型。这表明结构描述符的波动包含了关于长期动态异质性的足够信息。最重要的结构特征是中程密度分布。因此,OP在捕获宽温度范围内的动态非均质性方面也表现出出色的可转移性,极大地促进了描述符重要性的评估,突出了其在其他玻璃体系中的更广泛应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised learning of structural relaxation in supercooled liquids from short-term fluctuations
Unraveling the relationship between structural information and the dynamic properties of supercooled liquids is one of the great challenges of physics. Dynamic heterogeneity, characterized by the propensity of particles, is often used as a proxy for dynamic slowing. Over the years, significant efforts have been made to capture the structural variations linked to dynamic heterogeneity in supercooled liquids. In this work, we present an innovative unsupervised machine learning protocol based on time-lagged canonical correlation analysis or time-lagged autoencoder to autonomously identify a key order parameter (OP) for the amorphous structures of the Kob-Andersen glass former. The OP is constructed by integrating numerous classical structural descriptors and represents the component with the strongest short-term correlation on a timescale thousands of times shorter than the relaxation time. Strikingly, this OP demonstrates a remarkable correlation with the propensity at long times, significantly outperforming traditional unsupervised models and rivaling supervised models. This demonstrates that fluctuations of structural descriptors contain sufficient information about the long-time dynamic heterogeneity. The most important structural features are the density distributions at mid-range. As a consequence, the OP also exhibits excellent transferability in capturing dynamic heterogeneity across a wide temperature range and greatly facilitates the evaluation of descriptor importance, highlighting its potential for broader application to other glassy systems.
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来源期刊
CiteScore
19.00
自引率
0.90%
发文量
3575
审稿时长
2.5 months
期刊介绍: The Proceedings of the National Academy of Sciences (PNAS), a peer-reviewed journal of the National Academy of Sciences (NAS), serves as an authoritative source for high-impact, original research across the biological, physical, and social sciences. With a global scope, the journal welcomes submissions from researchers worldwide, making it an inclusive platform for advancing scientific knowledge.
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