Title of article :
Neural network approach for prediction of deflection of clamped beams struck by a mass
Author/Authors :
Hosseini، نويسنده , , M. and Abbas، نويسنده , , H.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
The purpose of this work is to establish an empirical relationship and neural network for the prediction of deflection of clamped metallic beams struck by mass and causing large inelastic deformations. A multivariable power series was selected as the form of the regression model to develop the empirical relationship. Material properties and geometry of both the striker and beam were selected as the independent variables of this model to predict the deflection in beam. Good agreement between the experimental results and the prediction of maximum deflections for various impact energies has been obtained. The data used in the development of statistical model was reanalyzed for the prediction of maximum deflection by employing the technique of neural networks with a view towards seeing if better predictions are possible. The neural network models resulted in very low errors and high correlation coefficients as compared to the regression based models.
Keywords :
neural network , Beam , Regression , Impact , deflection
Journal title :
Thin-Walled Structures
Journal title :
Thin-Walled Structures