Al-DeMat: A web-based expert system platform for computationally expensive models in materials design

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Autoren

  • Bokai Liu
  • Nam Vu-Bac
  • Xiaoying Zhuang
  • Weizhuo Lu
  • Xiaolong Fu
  • Timon Rabczuk

Organisationseinheiten

Externe Organisationen

  • Bauhaus-Universität Weimar
  • Universität Umeå
  • Xi'an Modern Chemistry Research Institute
Forschungs-netzwerk anzeigen

Details

OriginalspracheEnglisch
Aufsatznummer103398
FachzeitschriftAdvances in engineering software
Jahrgang176
Frühes Online-Datum24 Dez. 2022
PublikationsstatusVeröffentlicht - Feb. 2023

Abstract

We present a web-based framework based on the R shiny package with functional back-end server in machine learning methods. A 4-tiers architecture is programmed to achieve users’ interactive design and visualization via a web browser. Many data-driven methods are integrated into this framework, namely Random Forest, Gradient Boosting Machine, Artificial and Deep neural networks. Moreover, a robust gradient-free optimization technique, the Particle Swarm Optimization, is used to search optimal values in hyper-parameters tuning. K-fold Cross Validation is applied to avoid over-fitting. R2 and RMSE are considered as two key factors to evaluate the trained models. The contributions to the expert system in materials design are: (1) A systematic framework that can be applied in materials prediction with machine learning approaches, (2) A user-friendly web-based platform that is easy and flexible to use and (3) integrated optimization and visualization into the framework with pre set algorithms. This computational framework is designed for researchers and materials engineers who would like to do the preliminary designs before experimental studies. Finally, we demonstrate the performance of the web-based framework through 2 case studies.

ASJC Scopus Sachgebiete

Zitieren

Al-DeMat: A web-based expert system platform for computationally expensive models in materials design. / Liu, Bokai; Vu-Bac, Nam; Zhuang, Xiaoying et al.
in: Advances in engineering software, Jahrgang 176, 103398, 02.2023.

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Liu B, Vu-Bac N, Zhuang X, Lu W, Fu X, Rabczuk T. Al-DeMat: A web-based expert system platform for computationally expensive models in materials design. Advances in engineering software. 2023 Feb;176:103398. Epub 2022 Dez 24. doi: 10.1016/j.advengsoft.2022.103398
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abstract = "We present a web-based framework based on the R shiny package with functional back-end server in machine learning methods. A 4-tiers architecture is programmed to achieve users{\textquoteright} interactive design and visualization via a web browser. Many data-driven methods are integrated into this framework, namely Random Forest, Gradient Boosting Machine, Artificial and Deep neural networks. Moreover, a robust gradient-free optimization technique, the Particle Swarm Optimization, is used to search optimal values in hyper-parameters tuning. K-fold Cross Validation is applied to avoid over-fitting. R2 and RMSE are considered as two key factors to evaluate the trained models. The contributions to the expert system in materials design are: (1) A systematic framework that can be applied in materials prediction with machine learning approaches, (2) A user-friendly web-based platform that is easy and flexible to use and (3) integrated optimization and visualization into the framework with pre set algorithms. This computational framework is designed for researchers and materials engineers who would like to do the preliminary designs before experimental studies. Finally, we demonstrate the performance of the web-based framework through 2 case studies.",
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AU - Liu, Bokai

AU - Vu-Bac, Nam

AU - Zhuang, Xiaoying

AU - Lu, Weizhuo

AU - Fu, Xiaolong

AU - Rabczuk, Timon

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