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http://dx.doi.org/10.5391/JKIIS.2005.15.2.251

Inelastic Constitutive Modeling for Viscoplastcity Using Neural Networks  

Lee, Joon-Seong (Division of Mechanical System Design Engineering, Kyonggi University)
Lee, Yang-Chang (Division of Mechanical System Design Engineering, Kyonggi University)
Furukawa, Tomonari (Dept. of Mechanical Engineering, The Univ. of New South Wales, Sydney)
Publication Information
Journal of the Korean Institute of Intelligent Systems / v.15, no.2, 2005 , pp. 251-256 More about this Journal
Abstract
Up to now, a number of models have been proposed and discussed to describe a wide range of inelastic behaviors of materials. The fetal 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 paper, the authors define the implicit constitutive model and propose an implicit viscoplastic constitutive model using neural networks. In their modeling, inelastic material behaviors are generalized in a state space representation and the state space form is constructed by a neural network using input output data sets. A technique to extract the input-output data from experimental data is also described. The proposed model was first generated from pseudo-experimental data created by one of the widely used constitutive models and was found to replace the model well. Then, having been tested with the actual experimental data, the proposed model resulted in a negligible amount of model errors indicating its superiority to all the existing explicit models in accuracy.
Keywords
Inelastic Behaviors; Viscoplasticity; Implicit Constitutive Model; Multilayer Neural Network; State Space; Explicit Model;
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  • Reference
1 Funahashi, K., 'On the Approximate Realization of Continuous Mapping by Neural Networks', Neural Networks, Vol. 2, pp. 183-192, 1998   DOI   ScienceOn
2 Franklin, G.F., Feedback Control of Dynamic Systems, Addison Sesley, 1991
3 Furukawa, T. and Yagawa. G., 'A Neural Network Constitutive Law Based on Yield and Back Stresses', The 8th Computational Mechanics Conference, Vol. 95-4, pp. 121-122, 1995
4 Chaboche, J.L.,'Constitutive Equations for Cyclic Plasticity', Int. J. of Plasticity, Vol. 5, pp. 247-254, 1990
5 Cailletaud, G. and Pilvin, P., 'Identification and Inverse Problems Related to Material Behavior', Inverse Problems in Engineering Mechanics, pp. 79-86, 1994
6 Ramberg, W. and Osgood, W.R., 'Description of Stress-Strain Curves by Three Parameters', NACA, Technical Note, No. 902, 1943
7 Cernocky, E.P. and Krempl, E., 'A Non-Linear Uniaxial Integral Constitutive Equation Incorporating Rate Effects, Creep and Relaxation', Int. J. of Nonlinear Mechanics, Vol. 14, pp. 183-203, 1989
8 Choboche, J.L. and Rousselier, G., 'On the Plastic and Viscoplastic Equation', Trans. of the ASME, J. of PVT, Vol. 105, pp. 153-164, 1999
9 Bodner, S.R. 'Constitutive Equation for Elastic- Viscoplastic Strain Hardening Materials', J. of Applied Mechanics, Vol. 42, pp. 385-389, 1975   DOI
10 Hishida, H., 'Prediction of Life Time of the First Wall on Thermal Fatigue Based on Viscoplastic Deformation', Trans. of Seismic Isolation Structures, pp. 289-294, 1998
11 Miller, A.K., 'An Inelastic Constitutive Model for Monotonic, Cyclic and Creep Deformation', ASME J. of Eng. Materials, Vol. 98, pp. 97-107, 1986
12 Walker, K.P., 'Representation of Hastelloy-X Behavior at Elevated Temperature with a Functional Theory of Viscoplasticity', ASME/ PVP Century 2 Emerging Technology Conference, 1990
13 Schmit, C.G. and Miller, A.K., 'A Unified Phenomenological Model for Non-Elastic Deformation of Thpe 316 Stainless Steel, Part I : Development of the Model and Calculation of the Material Constants', Research Mechanics, Vol. 3, pp. 109-175, 1997