Journal of Advanced Ceramics (Sep 2023)

Machine learning assisted prediction of dielectric temperature spectrum of ferroelectrics

  • Jingjin He,
  • Changxin Wang,
  • Junjie Li,
  • Chuanbao Liu,
  • Dezhen Xue,
  • Jiangli Cao,
  • Yanjing Su,
  • Lijie Qiao,
  • Turab Lookman,
  • Yang Bai

DOI
https://doi.org/10.26599/JAC.2023.9220788
Journal volume & issue
Vol. 12, no. 9
pp. 1793 – 1804

Abstract

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In material science and engineering, obtaining a spectrum from a measurement is often time-consuming and its accurate prediction using data mining can also be difficult. In this work, we propose a machine learning strategy based on a deep neural network model to accurately predict the dielectric temperature spectrum for a typical multi-component ferroelectric system, i.e., (Ba1−x−yCaxSry)(Ti1−u−v−wZruSnvHfw)O3. The deep neural network model uses physical features as inputs and directly outputs the full spectrum, in addition to yielding the octahedral factor, Matyonov–Batsanov electronegativity, ratio of valence electron to nuclear charge, and core electron distance (Schubert) as four key descriptors. Owing to the physically meaningful features, our model exhibits better performance and generalization ability in the broader composition space of BaTiO3-based solid solutions. And the prediction accuracy is superior to traditional machine learning models that predict dielectric permittivity values at each temperature. Furthermore, the transition temperature and the degree of dispersion of the ferroelectric phase transition are easily extracted from the predicted spectra to provide richer physical information. The prediction is also experimentally validated by typical samples of (Ba0.85Ca0.15)(Ti0.98–xZrxHf0.02)O3. This work provides insights for accelerating spectra predictions and extracting ferroelectric phase transition information.

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