Machine Learning for Quantitative Structural Information from Infrared Spectra: The Case of Palladium Hydride

被引:4
|
作者
Usoltsev, Oleg [1 ]
Tereshchenko, Andrei [2 ]
Skorynina, Alina [1 ]
Kozyr, Elizaveta [3 ]
Soldatov, Alexander [2 ]
Safonova, Olga [4 ]
Clark, Adam H. [4 ]
Ferri, Davide [4 ]
Nachtegaal, Maarten [4 ]
Bugaev, Aram [4 ]
机构
[1] ALBA Synchrotron, Barcelona 08290, Spain
[2] Southern Fed Univ, Sladkova 178-24, Rostov Na Donu 344090, Russia
[3] Univ Turin, Via Giuria 7, I-10125 Turin, Italy
[4] Paul Scherrer Inst, Forschungsstr 111, CH-5232 Villigen, Switzerland
关键词
drifts; EXAFS; machine learning; palladium hydrides; NANOPARTICLES; SPECTROSCOPY; ABSORPTION; ZEOLITES;
D O I
10.1002/smtd.202301397
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
Infrared spectroscopy (IR) is a widely used technique enabling to identify specific functional groups in the molecule of interest based on their characteristic vibrational modes or the presence of a specific adsorption site based on the characteristic vibrational mode of an adsorbed probe molecule. The interpretation of an IR spectrum is generally carried out within a fingerprint paradigm by comparing the observed spectral features with the features of known references or theoretical calculations. This work demonstrates a method for extracting quantitative structural information beyond this approach by application of machine learning (ML) algorithms. Taking palladium hydride formation as an example, Pd-H pressure-composition isotherms are reconstructed using IR data collected in situ in diffuse reflectance using CO molecule as a probe. To the best of the knowledge, this is the first example of the determination of continuous structural descriptors (such as interatomic distance and stoichiometric coefficient) from the fine structure of vibrational spectra, which opens new possibilities of using IR spectra for structural analysis. A novel approach for quantitative analysis of vibrational spectra by means of machine learning. It is demonstrated how in situ infrared spectra can track the formation of palladium hydride phase in supported palladium nanoparticles, determining the Pd-Pd distances with the precision comparable to X-ray based methods. image
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页数:5
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