Using Artificial Neural Networks Approach to Estimate Compressive Strength for Rubberized Concrete
Loading...
Date
Journal Title
Journal ISSN
Volume Title
Publisher
Periodica Polytechnica Civil Engineering
Abstract
Artificial neural network (ANN) is a soft computing technique that has been used to predict with accuracy compressive strength known for its high variability of values. ANN is
used to develop a model that can predict compressive strength
of rubberized concrete where natural aggregate such as fine
and coarse aggregate are replaced by crumb rubber and tire
chips. The main idea in this study is to build a model using
ANN with three parameters that are: water/cement ratio,
Superplasticizer, granular squeleton. Furthermore, the data
used in the model has been taken from various literatures and
are arranged in a format of three input parameters: water/
cement ratio, superplasticizer, granular squeleton that gathers fine aggregates, coarse aggregates, crumb rubber, tire
chips and output parameter which is compressive strength.
The performance of the model has been judged by using correlation coefficient, mean square error, mean absolute error
and adopted as the comparative measures against the experimental results obtained from literature. The results indicate
that artificial neural network has the ability to predict compressive strength of rubberized concrete with an acceptable
degree of accuracy using new parameters.
