Author/Authors :
E.M.R. Fairbairn، نويسنده , , N.F.F. Ebecken، نويسنده , , C.N.M. Paz، نويسنده , , F.-J. Ulm، نويسنده ,
Abstract :
The probabilistic approach, based on the Monte Carlo method, has been recently introduced to simulate cracking of concrete in the framework of a finite element analysis [Rossi P, Wu X, le Maou F, Belloc A. Mater Struct 1994;27(172):437–44; Rossi P, Ulm F-J, Hachi F. J Engng Mech ASCE 1996;122(11):1038–43; Rossi P, Richer S. Mater Struct 1987;20(119):334–7; Rossi P, Ulm F-J. Mater Struct 1997;30(198):210–6; Fairbairn EMR, Paz CNM, Alves JLD, Silva RCC. Proceedings of XVIII CILAMCE-Iberian Latin American Congress on Computational Methods in Engineering, Brası́lia, vol. 2, 1997;709–15]. If the uncertainties of the material parameters are assumed to vary spatially following a normal distribution, the samples corresponding to a simulation are function of the mean and the standard deviation that define the Gauss density function. The problem is that these statistical moments are not known, a priori, for the characteristic volume of the finite elements. In this paper, neural networks are used to evaluate the parameters characterizing the statistical distribution for a given response of the structure following an inverse analysis procedure. It is shown that this procedure improves a recently proposed algorithm [Fairbairn EMR, Guedes QM, Ulm F-J. Mater Struct 1999;32(215):9–13], which is able to solve the problem, but is very hard to operate. Finally, the procedure presented in this paper is used to identify the probabilistic parameters of a beam tested at TU-Delft.
Keywords :
Artificial neural networks , Numerical Modeling , probabilistic analysis , Inverse analysis , Concrete