Neural analysis of elastoplastic plane stress problem with unilateral constraints

Authors

  • Ewa Pabisek Cracow University of Technology
    Poland

Keywords:

neural network, finite element method, elastoplastic problem, unilateral constraints

Abstract

The paper is a development and continuation of paper [8] where the Panagiotopoulos approach was extended for the elastoplastic analysis. In case of elastic analysis the parameters of the Hopfield-Tank Neural Network (HTNN) are calibrated only once but the updating of the elastoplastic stiffness matrix needs an iteration of HTNN and FE system. The main problem is the matrix condensation repeated for each iteration step of the Newton-Raphson method. Besides all the improvements proposed in [15], a new interacting program has been implemented which enables a significant decrease of the processing time (number of iterations) in comparison with the time achieved in [8]. The results of the extensive numerical analysis are discussed for a tension perforated strip with a rigid bolt placed frictionlessly in a circular hole in the middle of the strip.

References

[1] A.V. Avdelas et al. Neural networks for computing in the elastoplastic analysis of structures. Mechanica, 30: 1-15, 1995.
[2] G. Engeln-Mullges, F. Uhlig. Numerical Algorithms with C. Springer, Berlin-Heidelberg, 1996.
[3] J . Ghaboussi et al. Knowledge-based modeling of material behavior with neural networks. ASCE J. Engrg. Mech., 117: 132-153, 1991.
[4] Ł. Kaczmarczyk, Z. Waszczyszyn. Neural procedures for the hybrid FEM/NN analysis of elastoplastic plates. Comput. Assisted Mech. Engrg. Sci., 12: 379- 391, 2005.
[5] S. Kortesis, P.G. Panagiotopoulos. Neural networks for computing in structural analysis - methods and prospects of applications. Int. J. Num. Meth. Engrg., 36: 2305-2318, 1993.

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Published

2022-08-18

Issue

pp. 497-507

Section

Articles

How to Cite

Pabisek, E. (2022). Neural analysis of elastoplastic plane stress problem with unilateral constraints. Computer Assisted Methods in Engineering and Science, 14(3), 497-507. https://cames3.ippt.pan.pl/index.php/cames/article/view/819