Using the Artificial Neural Network to Predict the Axial Strength and Strain of Concrete-Filled Plastic Tube

Abstract
The main purpose of the current study was to formulate an empirical expression for predicting the axial compression capacity and axial strain of concrete-filled plastic tubular specimens (CFPT) using the artificial neural network (ANN). A total of seventy-two experimental test data of CFPT and unconfined concrete were used for training, testing, and validating the ANN models. The ANN axial strength and strain predictions were compared with the...
Paper Details
Title
Using the Artificial Neural Network to Predict the Axial Strength and Strain of Concrete-Filled Plastic Tube
Published Date
Apr 1, 2020
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