Up to now, a number of models have been proposed and discussed to describe a wide range of inelastic behaviours of materials. The fatal problem of using such models is however the existence of model errors, and the problem remains inevitably as far as a material model is written explicitly. In this
Neural network based constitutive model for elastomeric foams
โ Scribed by G. Liang; K. Chandrashekhara
- Publisher
- Elsevier Science
- Year
- 2008
- Tongue
- English
- Weight
- 983 KB
- Volume
- 30
- Category
- Article
- ISSN
- 0141-0296
No coin nor oath required. For personal study only.
โฆ Synopsis
Elastomeric foam materials find wide applications for their excellent energy absorption properties. The mechanical property of elastomeric foams is highly nonlinear and it is essential to implement mathematical constitutive models capable of accurate representation of the stress-strain responses of foams. A novel constitutive modeling method of defining hyperfoam strain energy function by a neural network is presented in this work. The architecture of the artificial neural network is described. The calculation of the strain energy and its derivatives by neural network is explained in detail. The preparation of the neural network training data from foam test data is described. Curve fitting results are given to show the effectiveness and accuracy of the neural network approach. A neural network based elastomeric foam constitutive model is implemented in simulation of a plane-strain foam indentation process to demonstrate the application and efficiency of the neural network approach in finite element analysis. Results indicate that the neural network model provides a better representation of the test data than the commonly used Hyperfoam model.
๐ SIMILAR VOLUMES