Title of article :
Efficiency of Neural Networks for Estimating the Patch Load Resistance of Plate Girders with a Focus on Uncertainties in Material and Geometrical Properties
Author/Authors :
Shahabian، F. نويسنده Associate Professor, Civil Engineering Department, Faculty of Engineering, Ferdowsi University of Mashhad, Mashhad, Iran. Shahabian, F. , Elachachi، S.M نويسنده Professor, University of Bordeaux1, I2M-GCE, 33405 Talence, France. Elachachi, S.M , Breysse، D. نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی 0 سال 2014
Pages :
14
From page :
29
To page :
42
Abstract :
In this paper, a sensitivity analysis of artificial neural networks (NNs) is presented and employed for estimating the patch load resistance of plate girders subjected to patch loading. To evaluate the accuracy of the proposed NN model, the results are compared with the previously proposed empirical models, so that we can estimate the resistance of plate girders subjected to patch loading. The empirical models are calibrated, for improving the formulae, with experimental data set which was collected from the corresponding literature. NNs models are later trained and validated through using the existing experimental data. In this process several NNs architectures are taken into account. A set of good NNs models are selected and then analyzed regarding their robustness when confronted with the test data set and regarding their ability to reproduce the effect of uncertainty on the data. A sensitivity analysis is conducted herein in order to investigate the effect of variability in material and geometrical properties of plate girders. Thereafter, several estimates measuring the efficiency and the quality of the NN model and the calibrated models are obtained and discussed.
Journal title :
Civil Engineering Infrastructures Journal (CEIJ
Serial Year :
2014
Journal title :
Civil Engineering Infrastructures Journal (CEIJ
Record number :
1339010
Link To Document :
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