Computers and Concrete
Volume 15, Number 4, 2015, pages 503-514
DOI: 10.12989/cac.2015.15.4.503
Prediction of Hybrid fibre-added concrete strength using artificial neural networks
Ali Demir
Abstract
Fibre-added concretes are frequently used in large site applications such as slab and airports as well as in bearing system elements or prefabricated elements. It is very difficult to determine the mechanical properties of the fibre-added concretes by experimental methods in situ. The purpose of this study is to develop an artificial neural network (ANN) model in order to predict the compressive and bending strengths of hybrid fibre-added and non-added concretes. The strengths have been predicted by means of the data that has been obtained from destructive (DT) and non-destructive tests (NDT) on the samples. NDTs are ultrasonic pulse velocity (UPV) and Rebound Hammer Tests (RH). 105 pieces of cylinder samples with a dimension of 150 X 300 mm, 105 pieces of bending samples with a dimension of 100x100x400 mm have been manufactured. The first set has been manufactured without fibre addition, the second set with the addition of %0.5 polypropylene and %0.5 steel fibre in terms of volume, and the third set with the addition of %0.5 polypropylene, %1 steel fibre. The water/cement (w/c) ratio of samples parametrically varies between 0.3-0.9. The experimentally measured compressive and bending strengths have been compared with predicted results by use of ANN method.
Key Words
fibre-added concrete; hybrid fibre; compressive; bending, non-destructive test; artificial neural network
Address
Ali Demi: Department of Civil Engineering, Celal Bayar University, P.O. 45140, Muradiye, Manisa, Turkey