Parameters Identification of Rubber-like Hyperelastic Material Based on General Regression Neural Network

Materials (Basel). 2022 May 25;15(11):3776. doi: 10.3390/ma15113776.

Abstract

In this study, we present a systematic scheme to identify the material parameters in constitutive model of hyperelastic materials such as rubber. This approach is proposed based on the combined use of general regression neural network, experimental data and finite element analysis. In detail, the finite element analysis is carried out to provide the learning samples of GRNN model, while the results observed from the uniaxial tensile test is set as the target value of GRNN model. A problem involving parameters identification of silicone rubber material is described for validation. The results show that the proposed GRNN-based approach has the characteristics of high universality and good precision, and can be extended to parameters identification of complex rubber-like hyperelastic material constitutive.

Keywords: general regression neural network (GRNN); hyperelastic material model; parameters identification.