Characterizing nonlinear piezoelectric dynamics through deep neural operator learning

Abhishek Chandra (Corresponding author), Taniya Kapoor, Mitrofan Curti, Koen Tiels, Elena A. Lomonova

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Abstract

Nonlinear hysteresis modeling is essential for estimating, controlling, and characterizing the behavior of piezoelectric material-based devices. However, current deep-learning approaches face challenges in generalizing effectively to previously unseen voltage profiles. This Letter tackles the limitation of generalization by introducing the notion of neural operators for modeling the nonlinear constitutive laws governing inverse piezoelectric hysteresis, specifically focusing on the relationship between voltage inputs and displacement responses. The study utilizes two neural operators—Fourier neural operator and the deep operator network—to predict material responses to unseen voltage profiles that are not part of the training data. Numerical experiments, including butterfly-shaped hysteresis curves, show that in accuracy and generalization to unseen voltage profiles, neural operators outperform traditional recurrent neural network-based models, including conventional gated networks. The findings highlight the potential of neural operators for modeling hysteresis in piezoelectric materials, offering advantages over existing methods in varying voltage scenarios.
Original languageEnglish
Article number262902
Number of pages6
JournalApplied Physics Letters
Volume125
Issue number26
DOIs
Publication statusPublished - 23 Dec 2024

Keywords

  • Deep learning
  • machine learning
  • Piezoelectric materials
  • Constitutive relations
  • hysteresis

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