Issue 5, 2023

Towards the automated extraction of structural information from X-ray absorption spectra

Abstract

X-ray absorption near-edge structure (XANES) spectroscopy is widely used across the natural sciences to obtain element specific atomic scale insight into the structure of matter. However, despite its increasing use owing to the proliferation of high-brilliance third- and fourth-generation light sources such as synchrotrons and X-ray free-electron lasers, decoding the wealth of information encoded within each spectra can sometimes be challenging and often requires detailed calculations. In this article we introduce a supervised machine learning method which aims at directly extracting structural information from a XANES spectrum. Using a convolutional neural network, trained using theoretical data, our approach performs this direct translation of spectral information and achieves a median error in first coordination shell bond-lengths of 0.1 Å, when applied to experimental spectra. By combining this with the bootstrap resampling approach, our network is also able to quantify the uncertainty expected, providing non-experts with a metric for the reliability of each prediction. This work sets the foundation for future work in delivering techniques that can accurately quantify structural information directly from XANES spectra.

Graphical abstract: Towards the automated extraction of structural information from X-ray absorption spectra

Supplementary files

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Article information

Article type
Paper
Submitted
02 Jun 2023
Accepted
29 Aug 2023
First published
29 Aug 2023
This article is Open Access
Creative Commons BY license

Digital Discovery, 2023,2, 1461-1470

Towards the automated extraction of structural information from X-ray absorption spectra

T. David, N. K. Nik Aznan, K. Garside and T. Penfold, Digital Discovery, 2023, 2, 1461 DOI: 10.1039/D3DD00101F

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