Prediction of Shear Strengthening of RC beams using Embedded Through Section (ETS) Technique Using Artificial Neural Networks (ANN)
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Abstract
Embedded Through-Section (ETS) technique is a relatively recent shear strengthening
strategy for reinforced concrete (RC) beams, and consists on opening holes across the beam
thickness, with the desired inclinations, where bars are introduced and are bonded to the
concrete substrate with adhesive materials. The artificial neural networks (ANN) were used
to develop a number of models in order to predict the ultimate shear strength of reinforced
concrete deep beams shear strengthened with ETS technique for both normal and high
concrete compressive strength. In this research a large number of experimental results
databases will be collected carefully from previous studies. This database will contain
experimental results for normal and high strength respectively. The feed forward back
propagation neural network was used to build up the required model. Using the
trial-anderror technique the topology of the neural networks was obtained.
The ANN model will be employed to predict the ultimate shear strength of deep
beams as well as a FEM using ABAQUS to study this topic and the important affecting factors.
Description
Number of Pages 100
