Prediction of the Slag Corrosion of Mgo-C Ladle Refractories by the Use of Artificial Neural Networks
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Date
2004
Authors
Akkurt, Sedat
Journal Title
Journal ISSN
Volume Title
Publisher
Trans Tech Publications
Open Access Color
BRONZE
Green Open Access
Yes
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OpenAIRE Views
Publicly Funded
No
Abstract
A multilayer feed-forward back-propagation learning algorithm was employed as an artificial neural network (ANN) tool to create a model to predict the corrosion of MgO-C ladle refractory bricks based on laboratory slag corrosion test data. The corrosion process occurred by immersion of the rectangular refractory specimens in molten slag-steel bath. An ANN model to predict the amount of corrosion was created by using the training data. The model was also tested with experimentally measured data and relatively low error levels were achieved. This model was then used to predict the response of the slag-corrosion system to different values of the factors affecting the corrosion of bricks at high temperatures. Exposure time, exposure temperature of slag-brick contact and CaO/SiO2 ratio of the slag were the factors used for modelling. Model results provided the potential for selection of the best conditions for avoiding the factor combinations that may accelerate corrosion.
Description
Proceedings of the 8th Conference and Exhibition of the European Ceramic Society; Istanbul; Turkey; 29 June 2003 through 3 July 2003
Keywords
Artificial neural networks, Corrosion, MgO-C refractory, Magnesium compounds, Slag-corrosion systems, Corrosion, Slag-corrosion systems, Artificial neural networks, Magnesium compounds, MgO-C refractory
Fields of Science
0205 materials engineering, 02 engineering and technology, 0210 nano-technology
Citation
Akkurt, S. (2004). Prediction of the slag corrosion of MgO-C ladle refractories by the use of artificial neural networks. Key Engineering Materials, 264-268(III), 1727-1730. doi:10.4028/www.scientific.net/KEM.264-268.1727
WoS Q
Scopus Q
Q4

OpenCitations Citation Count
2
Source
Key Engineering Materials
Volume
264-268
Issue
III
Start Page
1727
End Page
1730
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CrossRef : 2
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4
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4
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758
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784
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