Neural network aided stochastic computations and earthquake engineering

Authors

  • Nikos D. Lagaros National Technical University Zografou Campus
    Greece
  • Manolis Papadrakakis National Technical University Zografou Campus
    Greece
  • Michalis Fragiadakis National Technical University Zografou Campus
    Greece
  • George Stefanou National Technical University Zografou Campus
    Greece
  • Yiannis Tsompanakis Technical University of Crete
    Greece

Abstract

This article presents recent developments in the field of stochastic finite element analysis of structures and earthquake engineering aided by neural computations. The incorporation of Neural Networks (NN) in this type of problems is crucial since it leads to substantial reduction of the excessive computational cost. In particular, a hybrid method is presented for the simulation of homogeneous non-Gaussian stochastic fields with prescribed target marginal distribution and spectral density function. The presented method constitutes an efficient blending of the Deodatis- Micaletti method with a NN based function approximation. Earthquake-resistant design of structures using Probabilistic Safety Analysis (PSA) is an emerging field in structural engineering. It is investigated the efficiency of soft computing methods when incorporated into the solution of computationally intensive earthquake engineering problems.

References

[1] G. Deodatis, R.C. Micaletti. Simulation of highly skewed non-Gaussian stochastic processes. J. Engrg. Mech. (ASCE) 127: 1284-1295,2001.
[2] S. Fahlman. An Empirical Study of Learning Speed in Back-Propagation Networks. Carnegie Mellon: CMU-CS- 88-162, 1988.
[3] M. Grigoriu. Crossings of non-Gaussian translation processes. J. Engrg. Mech. (ASCE), 110: 610-620, 1984.
[4] M. Grigoriu. Simulation of stationary non-Gaussian translation processes. J. Engrg. Mech. (ASCE), 124: 121- 126, 1998.
[5] K.R. Gurley, M. Tognarelli, A. Kareem. Analysis and simulation tools for wind engineering. Prob. Engrg. Mech. , 12: 9- 31 , 1997.

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Published

2022-08-24

Issue

pp. 251-275

Section

Articles

How to Cite

Lagaros, N. D., Papadrakakis, M., Fragiadakis, M., Stefanou, G., & Tsompanakis, Y. (2022). Neural network aided stochastic computations and earthquake engineering. Computer Assisted Methods in Engineering and Science, 14(2), 251-275. https://cames3.ippt.pan.pl/index.php/cames/article/view/830

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