Title of article :
The Application of Hybrid RSM/ANN Methodology of an Iron-based Catalyst Performance in Fischer-Tropsch Synthesis
Author/Authors :
razmjooie, a Department of Chemical Engineering - Faculty of Engineering - University of Sistan and Baluchestan , atashi, h Department of Chemical Engineering - Faculty of Engineering - University of Sistan and Baluchestan , shahraki, f Department of Chemical Engineering - Faculty of Engineering - University of Sistan and Baluchestan
Pages :
16
From page :
585
To page :
600
Abstract :
In this research, the performance and kinetics of an iron/manganese oxide catalyst in a fixed-bed reactor by Fischer-Tropsch Synthesis is studied. The range of operating conditions are; P = 1 – 12 bar, T = 513 - 553 K, H2/CO ratio = 1 - 2 and GHSV = 4200 – 7000 ((〖cm〗^3 (STP))/h/g_cat). The effect of these independent variables, on Fischer-Tropsch product were performed by using a statistical model based on experimental data. Two models, response surface methodology and artificial neural network, were applied for modeling and predicting of the experimental points for carbon monoxide conversion (CO% conversion) and catalytic kinetic for the consumption rate of CO (-rco). Some statistical parameters such as correlation coefficient and mean square error were calculated to capability and sensitivity analysis of two models. Results show that two models, have good agreement with experimental data but artificial neural network model was stronger and more accurate than the response surface method model. To achieve the optimum condition, optimization must be done. It was obtained that maximum amount of CO% conversion was achieved in P = 8 bar, T = 559.5 K, H2/CO = 2.5 and GHSV = 7325.2 ((〖cm〗^3 (STP))/h/g_cat) and maximum amount of consumption rate of CO was in P = 8 bar, T= 568 K, H2/CO = 2.5 and GHSV = 2800 ((〖cm〗^3 (STP))/h/g_cat). Finally, all of quadratic equations and optimum conditions for any variable and responses will be concluded.
Keywords :
Fischer-Tropsch synthesis , Catalytic kinetic modeling , Response Surface , Artificial Neural Network , optimization
Journal title :
Physical Chemistry Research
Serial Year :
2017
Record number :
2511683
Link To Document :
بازگشت