Author/Authors :
Speck، F. نويسنده Department of Biotechnology, Manipal Institute of Technology, Manipal, Karnataka, 576104, India , , Raja، Krishnaswami S. نويسنده , , Ramesh، V. نويسنده , , Thivaharan، V. نويسنده Department of Biotechnology, Manipal Institute of Technology, Manipal, Karnataka, 576104, India ,
Abstract :
The predictive ability of Response Surface Methodology (RSM) And Artificial Neural Network
(ANN) in the modelling of photo-Fenton degradation of Rhodamine B (Rh-B) was investigated in the present
study. The dye degradation was studied with respect to four factors viz., initial concentration of dye,
concentration of H2O2 and Fe2+ ions and process time. Central Composite Design (CCD) was used to evaluate
the effect of four factors and a second order regression model was obtained. The optimum degradation of
99.84% Rh-B was obtained when 159 ppm dye, 239 ppm H2O2, 46 ppm Fe2+ were treated for 27 min. The
independent variables were fed as inputs to ANN with the percentage dye degradation as outputs. For the
optimum percentage dye degradation, a three-layered feed-forward network was trained by Levenberg-Marquardt
(LM) algorithm and the optimized topology of 4:10:1 (input neurons: hidden neurons: output neurons) was
developed. A high regression coefficient (R2 = 0.9861) suggested that the developed ANN model was more
accurate and predicted in a better way than the regression model given by RSM (R2 = 0.9112).