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Main Authors: Cheng, Mouyang, Yu, Bowen, Fu, Chu-Liang, Andrejevic, Nina, Agne, Matthias T., Hanus, Riley, Wan, Qiwei, Drucker, Nathan C., Nguyen, Thanh, Fluerasu, Andrei, Wiegart, Lutz, Chen, Xiaoqian M, Pajerowski, Daniel, Cheng, Yongqiang, Turner, Joshua J, Snyder, G. Jeffrey, Li, Mingda
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.12194
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author Cheng, Mouyang
Yu, Bowen
Fu, Chu-Liang
Andrejevic, Nina
Agne, Matthias T.
Hanus, Riley
Wan, Qiwei
Drucker, Nathan C.
Nguyen, Thanh
Fluerasu, Andrei
Wiegart, Lutz
Chen, Xiaoqian M
Pajerowski, Daniel
Cheng, Yongqiang
Turner, Joshua J
Snyder, G. Jeffrey
Li, Mingda
author_facet Cheng, Mouyang
Yu, Bowen
Fu, Chu-Liang
Andrejevic, Nina
Agne, Matthias T.
Hanus, Riley
Wan, Qiwei
Drucker, Nathan C.
Nguyen, Thanh
Fluerasu, Andrei
Wiegart, Lutz
Chen, Xiaoqian M
Pajerowski, Daniel
Cheng, Yongqiang
Turner, Joshua J
Snyder, G. Jeffrey
Li, Mingda
contents Grain-boundary (GB) dynamics control the stability, mechanical, and functional response of nanocrystalline materials, but direct experimental access to their slow non-equilibrium motion has been limited. Here we establish X-ray photon correlation spectroscopy (XPCS), combined with domain-adaptive machine learning, as a quantitative probe of GB dynamics. Temperature- and grain-size-dependent two-time XPCS measurements in nanocrystalline silicon reveal pronounced departures from time-translation invariance, showing that GB relaxation can remain far from equilibrium over experimental timescales. However, direct extraction of quantitative physical information from these high-dimensional, noisy fluctuation maps faces a significant challenge. To overcome this barrier, we develop a semi-supervised learning framework that transfers physical parameter labels from continuum simulations to unlabeled experimental XPCS maps through domain-adaptive representation alignment. This AI-augmented approach enables the extraction of key kinetic parameters, including bulk diffusivity, GB stiffness, and effective GB concentration, directly from experimental XPCS measurements. Our results show how machine learning can transform indirect fluctuation signals into quantitative materials dynamics, providing a general route to study non-equilibrium defect motion in solids.
format Preprint
id arxiv_https___arxiv_org_abs_2605_12194
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Probing Non-Equilibrium Grain Boundary Dynamics with XPCS and Domain-Adaptive Machine Learning
Cheng, Mouyang
Yu, Bowen
Fu, Chu-Liang
Andrejevic, Nina
Agne, Matthias T.
Hanus, Riley
Wan, Qiwei
Drucker, Nathan C.
Nguyen, Thanh
Fluerasu, Andrei
Wiegart, Lutz
Chen, Xiaoqian M
Pajerowski, Daniel
Cheng, Yongqiang
Turner, Joshua J
Snyder, G. Jeffrey
Li, Mingda
Materials Science
Machine Learning
Grain-boundary (GB) dynamics control the stability, mechanical, and functional response of nanocrystalline materials, but direct experimental access to their slow non-equilibrium motion has been limited. Here we establish X-ray photon correlation spectroscopy (XPCS), combined with domain-adaptive machine learning, as a quantitative probe of GB dynamics. Temperature- and grain-size-dependent two-time XPCS measurements in nanocrystalline silicon reveal pronounced departures from time-translation invariance, showing that GB relaxation can remain far from equilibrium over experimental timescales. However, direct extraction of quantitative physical information from these high-dimensional, noisy fluctuation maps faces a significant challenge. To overcome this barrier, we develop a semi-supervised learning framework that transfers physical parameter labels from continuum simulations to unlabeled experimental XPCS maps through domain-adaptive representation alignment. This AI-augmented approach enables the extraction of key kinetic parameters, including bulk diffusivity, GB stiffness, and effective GB concentration, directly from experimental XPCS measurements. Our results show how machine learning can transform indirect fluctuation signals into quantitative materials dynamics, providing a general route to study non-equilibrium defect motion in solids.
title Probing Non-Equilibrium Grain Boundary Dynamics with XPCS and Domain-Adaptive Machine Learning
topic Materials Science
Machine Learning
url https://arxiv.org/abs/2605.12194