Validation of moment tensor potentials for fcc and bcc metals using EXAFS spectra

Machine-learning potentials for materials, namely the moment tensor potentials (MTPs), were validated using experimental EXAFS spectra for the first time. The MTPs for four metals (bcc W and Mo, fcc Cu and Ni) were obtained by the active learning algorithm of fitting to the results of the calculatio...

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Veröffentlicht in:Computational materials science 2022-07, Vol.210, p.111028, Article 111028
Hauptverfasser: Shapeev, Alexander V., Bocharov, Dmitry, Kuzmin, Alexei
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Sprache:eng
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Zusammenfassung:Machine-learning potentials for materials, namely the moment tensor potentials (MTPs), were validated using experimental EXAFS spectra for the first time. The MTPs for four metals (bcc W and Mo, fcc Cu and Ni) were obtained by the active learning algorithm of fitting to the results of the calculations using density functional theory (DFT). The MTP accuracy was assessed by comparing metal K-edge EXAFS spectra obtained experimentally and computed from the results of molecular dynamics (MD) simulations. The sensitivity of the method to various aspects of the MD and DFT models was demonstrated using Ni as an example. Good agreement was found for W, Mo and Cu using the recommended PAW pseudopotentials, whereas a more accurate pseudopotential with 18 valence electrons was required for Ni to achieve a similar agreement. The use of EXAFS spectra allows one to estimate the MTP ability in reproducing both average and dynamic atomic structures. [Display omitted] •Moment Tensor Potentials (MTPs) for four metals (W, Mo, Cu and Ni) were obtained.•MTPs were determined by the active learning algorithm of fitting to the DFT results.•MTPs were validated using experimental K-edge EXAFS spectra.
ISSN:0927-0256
1879-0801
DOI:10.1016/j.commatsci.2021.111028