• 文献标题:   Mechanical properties prediction of various graphene reinforced nanocomposites using transfer learning-based deep neural network
  • 文献类型:   Article, Early Access
  • 作  者:   PASHMFOROUSH F
  • 作者关键词:   machine learning, transfer learning, graphene nanocomposite, mechanical propertie, hyperparameter optimization
  • 出版物名称:   PROCEEDINGS OF THE INSTITUTION OF MECHANICAL ENGINEERS PART EJOURNAL OF PROCESS MECHANICAL ENGINEERING
  • ISSN:   0954-4089 EI 2041-3009
  • 通讯作者地址:  
  • 被引频次:   0
  • DOI:   10.1177/09544089221115306 EA JUL 2022
  • 出版年:   2022

▎ 摘  要

Nowadays, various machine learning (ML) approaches are widely used in different research areas. However, the need for a large training dataset has restricted the attractiveness of ML techniques for industrial applications, since the preparation of a large dataset is very costly and inefficient. To deal with this limitation, an efficient method is required to fill the gap between industry and research. For this purpose, in this study a transfer learning-based deep neural network (TL-DNN) model was developed to predict the mechanical properties of various graphene reinforced nanocomposites. In this respect, a hybrid multi-layer feedforward DNN was designed, containing one source network and one target network. The source DNN was trained to predict the mechanical properties of graphene/graphene oxide nanocomposites with various matrix types including Al, Cu, PMMA, Si3N4, Al2O3, etc. By transferring the acquired knowledge of the source DNN to the target DNN, the mechanical properties of another material (graphene/epoxy nanocomposite) were estimated with high accuracy level, even with limited number of data samples. It should be mentioned that the optimal values of the network hyperparameters were determined using genetic algorithm (GA), simulated annealing (SA) and particle swarm optimization (PSO) algorithms.