Abstract In this study, results of parametric effects and optimization of turbidity removal from produced water using response surface methodology (RSM) and artificial neural network (ANN) based on a statistically… Click to show full abstract
Abstract In this study, results of parametric effects and optimization of turbidity removal from produced water using response surface methodology (RSM) and artificial neural network (ANN) based on a statistically designed experimentation via the Box–Behnken design (BBD) are reported. A three-level, three-factor BBD was employed using dosage ( x 1 ), time ( x 2 ) and temperature ( x 3 ) as process variables. A quadratic polynomial model was obtained to predict turbidity removal efficiency. The RSM model predicted an optimal turbidity removal efficiency of 83% at conditions of x 1 (1 g/L), x 2 (16.5 min) and x 3 (45 °C) and validated experimentally as 82.73% with low model lack of fit F value of 0.6 and CV value of 8.22%. The ANN model predicted optimal turbidity removal of 83.01% at conditions of x 1 (1 g/L), x 2 (16.5 min) and x 3 (45 °C) and validated as 82.98%. Both models showed to be effective in describing the parametric effect of the considered operating variables on the turbidity removal from produced water. However, the ANN described the parametric effect more accurately when compared with the RSM model, with a smaller PRE (percentage relative error) and AAD (absolute average deviation) of ±0.0241% and ±0.0139%, respectively.
               
Click one of the above tabs to view related content.