Title of article :
MODELING THE COMPRESSIVE STRENGTH OF CONCRETE MADE WITH EXPANDED PERLITE POWDER
Author/Authors :
Pourrostam, D Department of Civil Engineering - Rahman institute of higher education, Ramsar , Mousavi, S. Y Department of Civil Engineering - Faculty of Engineering - Golestan University, Gorgan , Bakhshpoori, T Faculty of Technology and Engineering - Department of Civil Engineering - East of Guilan - University of Guilan, Rudsar-Vajargah , Shabrang, K Department of Civil Engineering - Rahman institute of higher education, Ramsar
Abstract :
In recent years, soft computing and artificial intelligence techniques such as artificial neural
network (ANN) and adaptive neuro-fuzzy inference system (ANFIS) have been effectively
used in various civil engineering applications. This study aims to examine the potential of
ANN and ANFIS for modeling the compressive strength of concrete containing expanded
perlite powder (EPP). For doing this, a total of forty-five EPP incorporated concrete
mixtures were produced and tested for compressive strength at different curing ages of 3, 7,
28, 42 and 90 days. Two different ANN models were developed and the suitable and stable
ANN architecture for each model was considered by calculating various statistical
parameters. For comparative purposes, two ANFIS models with different membership
functions were also trained. According to the results, it can be concluded that the proposed
ANN models relatively give a good degree of accuracy in predicting the compressive
strength of concrete made with EPP, higher than that of observed from ANFIS models.
Keywords :
Concrete , Expanded Perlite Powder , Compressive Strength , Artificial Neural Network , Adaptive Neuro-Fuzzy Inference System