Title of article :
Numerical implementation of a neural network based material model in finite element analysis
Author/Authors :
Y. M. A. Hashash، نويسنده , , S. Jung، نويسنده , , J. Ghaboussi، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
Neural network (NN) based constitutive models can capture non-linear material behaviour. These
models are versatile and have the capacity to continuously learn as additional material response
data becomes available. NN constitutive models are increasingly used within the finite element (FE)
method for the solution of boundary value problems. NN constitutive models, unlike commonly used
plasticity models, do not require special integration procedures for implementation in FE analysis.
NN constitutive model formulation does not use a material stiffness matrix concept in contrast to the
elasto-plastic matrix central to conventional plasticity based models.
This paper addresses numerical implementation issues related to the use of NN constitutive models
in FE analysis. A consistent material stiffness matrix is derived for the NN constitutive model that
leads to efficient convergence of the FE Newton iterations. The proposed stiffness matrix is general
and valid regardless of the material behaviour represented by the NN constitutive model. Two examples
demonstrate the performance of the proposed NN constitutive model implementation
Keywords :
NEURAL NETWORKS , Stiffness matrix , Finite elements , numerical implementation , materialmodels
Journal title :
International Journal for Numerical Methods in Engineering
Journal title :
International Journal for Numerical Methods in Engineering