A CNN-based surrogate model of isogeometric analysis in nonlocal flexoelectric problems

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Authors

  • Qimin Wang
  • Xiaoying Zhuang
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Details

Original languageEnglish
Pages (from-to)943-958
Number of pages16
JournalEngineering with Computers
Volume39
Issue number1
Early online date25 Aug 2022
Publication statusPublished - Feb 2023

Abstract

We proposed a convolutional neural network (CNN)-based surrogate model to predict the nonlocal response for flexoelectric structures with complex topologies. The input, i.e. the binary images, for the CNN is obtained by converting geometries into pixels, while the output comes from simulations of an isogeometric (IGA) flexoelectric model, which in turn exploits the higher-order continuity of the underlying non-uniform rational B-splines (NURBS) basis functions to fast computing of flexoelectric parameters, e.g., electric gradient, mechanical displacement, strain, and strain gradient. To generate the dataset of porous flexoelectric cantilevers, we developed a NURBS trimming technique based on the IGA model. As for CNN construction, the key factors were optimized based on the IGA dataset, including activation functions, dropout layers, and optimizers. Then the cross-validation was conducted to test the CNN’s generalization ability. Last but not least, the potential of the CNN performance has been explored under different model output sizes and the corresponding possible optimal model layout is proposed. The results can be instructive for studies on deep learning of other nonlocal mech-physical simulations.

Keywords

    Convolutional neural network, Isogeometric analysis, Nonlocal flexoelectricity, NURBS trimming technique

ASJC Scopus subject areas

Cite this

A CNN-based surrogate model of isogeometric analysis in nonlocal flexoelectric problems. / Wang, Qimin; Zhuang, Xiaoying.
In: Engineering with Computers, Vol. 39, No. 1, 02.2023, p. 943-958.

Research output: Contribution to journalArticleResearchpeer review

Wang Q, Zhuang X. A CNN-based surrogate model of isogeometric analysis in nonlocal flexoelectric problems. Engineering with Computers. 2023 Feb;39(1):943-958. Epub 2022 Aug 25. doi: 10.1007/s00366-022-01717-3
Wang, Qimin ; Zhuang, Xiaoying. / A CNN-based surrogate model of isogeometric analysis in nonlocal flexoelectric problems. In: Engineering with Computers. 2023 ; Vol. 39, No. 1. pp. 943-958.
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