Saved in:
Bibliographic Details
Main Authors: Lin, Zichang, Chen, Wenjie, Lin, Yitao, Zhang, Xinxin, Zhang, Yuegang
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.23449
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911374400028672
author Lin, Zichang
Chen, Wenjie
Lin, Yitao
Zhang, Xinxin
Zhang, Yuegang
author_facet Lin, Zichang
Chen, Wenjie
Lin, Yitao
Zhang, Xinxin
Zhang, Yuegang
contents Theoretical simulation is helpful for accurate interpretation of experimental X-ray absorption near-edge structure (XANES) spectra that contain rich atomic and electronic structure information of materials. However, current simulation methods are usually too complex to give the needed accuracy and timeliness when a large amount of data need to be analyzed, such as for in-situ characterization of battery materials. To address these problems, artificial intelligence (AI) models have been developed for XANES prediction. However, instead of using experimental XANES data, the existing models are trained using simulated data, resulting in significant discrepancies between the predicted and experimental spectra. Also, the universality across different elements has not been well studied for such models. In this work, we firstly establish a crystal graph neural network, pre-trained on simulated XANES data covering 48 elements, to achieve universal XANES prediction with a low average relative square error of 0.020223; and then utilize transfer learning to calibrate the model using a small experimental XANES dataset. After calibration, the edge energy misalignment error of the predicted S, Ti and Fe K edge XANES is significantly reduced by about 80%. The method demonstrated in this work opens up a new way to achieve fast, universal, and experiment-calibrated XANES prediction.
format Preprint
id arxiv_https___arxiv_org_abs_2512_23449
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Universal and Experiment-calibrated Prediction of XANES through Crystal Graph Neural Network and Transfer Learning Strategy
Lin, Zichang
Chen, Wenjie
Lin, Yitao
Zhang, Xinxin
Zhang, Yuegang
Materials Science
Theoretical simulation is helpful for accurate interpretation of experimental X-ray absorption near-edge structure (XANES) spectra that contain rich atomic and electronic structure information of materials. However, current simulation methods are usually too complex to give the needed accuracy and timeliness when a large amount of data need to be analyzed, such as for in-situ characterization of battery materials. To address these problems, artificial intelligence (AI) models have been developed for XANES prediction. However, instead of using experimental XANES data, the existing models are trained using simulated data, resulting in significant discrepancies between the predicted and experimental spectra. Also, the universality across different elements has not been well studied for such models. In this work, we firstly establish a crystal graph neural network, pre-trained on simulated XANES data covering 48 elements, to achieve universal XANES prediction with a low average relative square error of 0.020223; and then utilize transfer learning to calibrate the model using a small experimental XANES dataset. After calibration, the edge energy misalignment error of the predicted S, Ti and Fe K edge XANES is significantly reduced by about 80%. The method demonstrated in this work opens up a new way to achieve fast, universal, and experiment-calibrated XANES prediction.
title Universal and Experiment-calibrated Prediction of XANES through Crystal Graph Neural Network and Transfer Learning Strategy
topic Materials Science
url https://arxiv.org/abs/2512.23449