A deep energy method for finite deformation hyperelasticity

authored by
Vien Minh Nguyen-Thanh, Xiaoying Zhuang, Timon Rabczuk
Abstract

We present a deep energy method for finite deformation hyperelasticitiy using deep neural networks (DNNs). The method avoids entirely a discretization such as FEM. Instead, the potential energy as a loss function of the system is directly minimized. To train the DNNs, a backpropagation dealing with the gradient loss is computed and then the minimization is performed by a standard optimizer. The learning process will yield the neural network's parameters (weights and biases). Once the network is trained, a numerical solution can be obtained much faster compared to a classical approach based on finite elements for instance. The presented approach is very simple to implement and requires only a few lines of code within the open-source machine learning framework such as Tensorflow or Pytorch. Finally, we demonstrate the performance of our DNNs based solution for several benchmark problems, which shows comparable computational efficiency such as FEM solutions.

Organisation(s)
Institute of Continuum Mechanics
External Organisation(s)
Ton Duc Thang University
Type
Article
Journal
European Journal of Mechanics, A/Solids
Volume
80
ISSN
0997-7538
Publication date
03.2020
Publication status
Published
Peer reviewed
Yes
ASJC Scopus subject areas
Materials Science(all), Mechanics of Materials, Mechanical Engineering, Physics and Astronomy(all)
Electronic version(s)
https://doi.org/10.1016/j.euromechsol.2019.103874 (Access: Closed)
 

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