Title of article :
Compressive Strength of Confined Concrete in CCFST Columns
Author/Authors :
Kheyroddin، A. نويسنده Faculty of Civil Engineering,Semnan University,Semnan,Iran , , Naderpour، H. نويسنده Faculty of Civil Engineering,Semnan University,Semnan,Iran , , Ahmadi، M. نويسنده Faculty of Civil Engineering,Semnan University,Semnan,Iran ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2014
Pages :
8
From page :
106
To page :
113
Abstract :
This paper presents a new model for predicting the compressive strength of steel-confined concrete on circular concrete filled steel tube (CCFST) stub columns under axial loading condition based on Artificial Neural Networks (ANNs) by using a large wide of experimental investigations. The input parameters were selected based on past studies such as outer diameter of column, compressive strength of unconfined concrete, length of column, wall thickness and tensile yield stress of steel tube. After the learning step, the neural network can be extracted the relationships between the input variables and output parameters. The criteria for stopping the training of the networks are Regression values and Mean Square Error. After constructing networks with constant input neurons but with different number of hidden-layer neurons, the best network was selected. The neural network results are compared with the existing models which showed the results are in good agreement with experiments.
Keywords :
CCFST Columns , Artificial neural network , confined concrete
Journal title :
Journal of Rehabilitation in Civil Engineering
Serial Year :
2014
Journal title :
Journal of Rehabilitation in Civil Engineering
Record number :
2396964
Link To Document :
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