Author
Listed:
- James P. Horwath
(Argonne National Laboratory)
- Xiao-Min Lin
(Argonne National Laboratory)
- Hongrui He
(Argonne National Laboratory
University of Chicago)
- Qingteng Zhang
(Argonne National Laboratory)
- Eric M. Dufresne
(Argonne National Laboratory)
- Miaoqi Chu
(Argonne National Laboratory)
- Subramanian K.R.S. Sankaranarayanan
(Argonne National Laboratory
University of Illinois)
- Wei Chen
(Argonne National Laboratory
University of Chicago)
- Suresh Narayanan
(Argonne National Laboratory)
- Mathew J. Cherukara
(Argonne National Laboratory)
Abstract
Understanding and interpreting dynamics of functional materials in situ is a grand challenge in physics and materials science due to the difficulty of experimentally probing materials at varied length and time scales. X-ray photon correlation spectroscopy (XPCS) is uniquely well-suited for characterizing materials dynamics over wide-ranging time scales. However, spatial and temporal heterogeneity in material behavior can make interpretation of experimental XPCS data difficult. In this work, we have developed an unsupervised deep learning (DL) framework for automated classification of relaxation dynamics from experimental data without requiring any prior physical knowledge of the system. We demonstrate how this method can be used to accelerate exploration of large datasets to identify samples of interest, and we apply this approach to directly correlate microscopic dynamics with macroscopic properties of a model system. Importantly, this DL framework is material and process agnostic, marking a concrete step towards autonomous materials discovery.
Suggested Citation
James P. Horwath & Xiao-Min Lin & Hongrui He & Qingteng Zhang & Eric M. Dufresne & Miaoqi Chu & Subramanian K.R.S. Sankaranarayanan & Wei Chen & Suresh Narayanan & Mathew J. Cherukara, 2024.
"AI-NERD: Elucidation of relaxation dynamics beyond equilibrium through AI-informed X-ray photon correlation spectroscopy,"
Nature Communications, Nature, vol. 15(1), pages 1-11, December.
Handle:
RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-49381-z
DOI: 10.1038/s41467-024-49381-z
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