Title of article :
Long-term deflection of cracked composite beams with nonlinear partial shear interaction — A study using neural networks
Author/Authors :
Sakr، نويسنده , , Mohammed A. and Sakla، نويسنده , , Sherief S.S. Sakla، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Abstract :
A new study of the short- and long-term deflections of simply-supported composite beams using finite element analysis and artificial neural networks (ANNs) is presented. In this study, two ANN models are developed and trained using the results of a finite element model developed by the authors in a companion paper. The finite element model accounted for the nonlinear load–slip relationship of shear connectors as well as the creep, shrinkage, and cracking of concrete slabs. The effects of creep and shrinkage of the concrete slab are considered only for non-cracked concrete. A large database representing a wide range of different design parameters was constructed for the purpose of training and verifying the two ANN models. It was found that the two ANN models were capable of predicting deflections of composite beams not used as part of the training process. The ANN models were then used to evaluate the effects of non-geometric design variables on the short- and long-term deflections of simply-supported composite beams. Finally, the short- and long-term deflections computed based on the approaches given in the AISC specification and Eurocode 4 were assessed using the results of the finite element model. It was found that the AISC approach underestimates short-term deflections and overestimate long-term deflections when compared with the results of the finite element method.
Keywords :
Finite element method , Composite beams , NEURAL NETWORKS , steel , Concrete , Creep , Serviceability , Shrinkage
Journal title :
Engineering Structures
Journal title :
Engineering Structures