Title of article
Artificial neural network model to predict slag viscosity over a broad range of temperatures and slag compositions
Author/Authors
Duchesne، نويسنده , , Marc A. and Macchi، نويسنده , , Arturo and Lu، نويسنده , , Dennis Y. and Hughes، نويسنده , , Robin W. and McCalden، نويسنده , , David K. Anthony، نويسنده , , Edward J.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
6
From page
831
To page
836
Abstract
Threshold slag viscosity heuristics are often used for the initial assessment of coal gasification projects. Slag viscosity predictions are also required for advanced combustion and gasification models. Due to unsatisfactory performance of theoretical equations, an artificial neural network model was developed to predict slag viscosity over a broad range of temperatures and slag compositions. This model outperforms other slag viscosity models, resulting in an average error factor of 5.05 which is lower than the best obtained with other available models. Genesee coal ash viscosity predictions were made to investigate the effect of adding Canadian limestone and dolomite. The results indicate that magnesium in the fluxing agent provides a greater viscosity reduction than calcium for the threshold slag tapping temperature range.
Keywords
Slag , VISCOSITY , Artificial neural network , model
Journal title
Fuel Processing Technology
Serial Year
2010
Journal title
Fuel Processing Technology
Record number
1509221
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