Modelling Slump of Concrete Containing Natural Coarse Aggregate from Bida Environs Using Artificial Neural Network
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Date
2021-05-02
Journal Title
Journal ISSN
Volume Title
Publisher
Journal of Soft Computing in Civil Engineering
Abstract
Consumption of crushed granite as coarse aggregate in
concrete has led to devastating environmental and ecological
consequences. In order to preserve local and urban ecology
therefore, substitute aggregate such as naturally occurring
stone with the propensity of reducing this problem was
studied.
Furthermore,
artificial
Neural Network (ANN)
models have become the preferred modeling approach due to
their accuracy. Thus, in this paper, MATLAB software was
used to develop ANN models for predicting slump of
concrete made using Bida Natural Gravel (BNG). Four
model architectures (5:5:1; 5:10:1; 5:15:1 and 5:20:1) were
tried
using a back-propagation algorithm with a tansig
activation
function.
The performance of the developed
models was examined using Mean Square Error (MSE),
Correlation Coefficient (R) and Nash-Sutcliffe Efficiency
(NSE). Results showed that 5:20:1 model architecture with
MSE of 8.33e-27, R value of 98% and NSE of 0.96 was the
best model. The chosen 5:20:1 ANN model also out
performed Multiple Linear Regression (MLR) model which
recorded MSE of 0.83, R value of 88.68% and NSE of 0.87.
The study concluded that the higher the neuron in hidden
layer of ANN slump model for concrete containing BNG, the
better the model.
Description
Keywords
ANN model, Bida natural gravel, Mean square error, MLR, Slump.