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Predicting density and compressive strength of concrete cement paste containing silica fume using Artificial Neural Networks
Rasa, E ; Sharif University of Technology | 2009
997
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- Type of Document: Article
- Publisher: 2009
- Abstract:
- Artificial Neural Networks (ANNs) have recently been introduced as an efficient artificial intelligence modeling technique for applications involving a large, number of variables, especially with highly nonlinear and complex interactions among input/output variables in a system without any prior knowledge about the nature, of these, interactions. Various types of ANN models are developed and used for different problems. In this paper, an artificial neural network of the feed-forward back-propagation type has been applied for the prediction of density and compressive strength properties of the cement paste portion of concrete mixtures. The mechanical properties of concrete are highly influenced by the density and compressive strength of concrete cement paste. Due to the complex non-linear effect of silica fume on concrete cement paste, the ANN model is used to predict density and compressive strength parameters. The density and compressive strength of concrete cement paste are affected by several parameters, viz, watercementitious materials ratio, silica fume unit contents, percentage of super-plasticizer, curing, cement type, etc. The 28-day compressive strength and Saturated Surface Dry (SSD) density values are. considered as the. aim of the prediction. A total of 600 specimens were selected. The system was trained and validated using 350 training pairs chosen randomly from the data set and tested using the remaining 250 pairs. Results indicate that the density and compressive strength of concrete cement paste can be predicted much more accurately using the ANN method compared to existing conventional methods, such as traditional regression analysis, statistical methods, etc. © Sharif University of Technology
- Keywords:
- Cement paste ; Density ; Neural Network ; Silica fume ; Artificial neural network ; Artificial neural networks ; Cement paste ; Cement type ; Complex interaction ; Compressive strength of concrete ; Concrete mixture ; Conventional methods ; Data sets ; Density value ; Feedforward backpropagation ; Highly nonlinear ; Input/output ; Intelligence modeling ; Nonlinear effect ; Prior knowledge ; Saturated surface dries ; Cements ; Density (specific gravity) ; Forecasting ; Mechanical properties ; Neural networks ; Plasticizers ; Regression analysis ; Silica ; Compressive strength ; Artificial intelligence ; Cement ; Concrete ; Numerical model
- Source: Scientia Iranica ; Volume 16, Issue 1 A , 2009 , Pages 33-42 ; 10263098 (ISSN)
- URL: http://scientiairanica.sharif.edu/article_3173.html