The Use of Ga-Anns in the Modelling of Compressive Strength of Cement Mortar
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Open Access Color
BRONZE
Green Open Access
Yes
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No
Abstract
In this paper, results of a project aimed at modelling the compressive strength of cement mortar under standard curing conditions are reported. Plant data were collected for 6 months for the chemical and physical properties of the cement that were used in model construction and testing. The training and testing data were separated from the complete original data set by the use of genetic algorithms (GAs). A GA-artificial neural network (ANN) model based on the training data of the cement strength was created. Testing of the model was also done within low average error levels (2.24%). The model was subjected to sensitivity analysis to predict the response of the system to different values of the factors affecting the strength. The plots obtained after sensitivity analysis indicated that increasing the amount of C3S, SO3 and surface area led to increased strength within the limits of the model. C2S decreased the strength whereas C3A decreased or increased the strength depending on the SO3 level. Because of the limited data range used for training, the prediction results were good only within the same range. The utility of the model is in the potential ability to control processing parameters to yield the desired strength levels and in providing information regarding the most favourable experimental conditions to obtain maximum compressive strength.
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Fields of Science
0211 other engineering and technologies, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
Akkurt, S., Özdemir, S., Tayfur, G., and Akyol, B. (2003). The use of GA-ANNs in the modelling of compressive strength of cement mortar. Cement and Concrete Research, 33(7), 973-979. doi:10.1016/S0008-8846(03)00006-1
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Q1
Scopus Q
Q1

OpenCitations Citation Count
133
Source
Cement and Concrete Research
Volume
33
Issue
7
Start Page
973
End Page
979
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Citations
CrossRef : 135
Scopus : 157
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Mendeley Readers : 80
SCOPUS™ Citations
157
checked on Jun 12, 2026
Web of Science™ Citations
135
checked on Jun 12, 2026
Page Views
995
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Downloads
819
checked on Jun 12, 2026
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