TY - JOUR
T1 - Degradation of Fluoxetine using catalytic ozonation in aqueous media in the presence of nano-Γ-alumina catalyst
T2 - Experimental, modeling and optimization study
AU - Aghaeinejad-Meybodi, Abbas
AU - Ebadi, Amanollah
AU - Shafiei, Sirous
AU - Khataee, Alireza
AU - Kiadehi, Afshin Dehghani
N1 - Publisher Copyright:
© 2018 Elsevier B.V.
PY - 2019/3/18
Y1 - 2019/3/18
N2 - Degradation of Fluoxetine antidepressant by Catalytic ozonation in aqueous medium was investigated using nano-γ-alumina catalyst. Catalyst was synthesized via co-precipitation method and was characterized by XRD, FESEM, FTIR and BET Techniques. Controlled precipitation helped to successfully prepare nano-sized γ-alumina particles using sodium carbonate as the precipitating agent and aluminum nitrate as the precursor. Artificial neural network (ANN) and central composite design (CCD) were used to model and optimize degradation of Fluoxetine and results of the two models were compared. Furthermore, impacts of the basic operational variable, i.e. inlet ozone concentration, initial Fluoxetine concentration, nano-γ-alumina dosage and reaction time, were studied. Back-propagation (BP) learning for three-layer feed-forward ANN with topology 4:8:1 and trainscg algorithm was used for development of the ANN model. A considerable agreement was observed between the values predicted by the ANN and CCD models for removal of Fluoxetine and the experimental results. Findings declared superiority of ANNs in describing nonlinear behavior of the catalytic process and accuracy of the ANN model in predicting the efficiency values of Fluoxetine elimination. Pareto analysis demonstrated effectiveness of the all selected factors on efficiency of removal. Results showed that the most effective variable in catalytic ozonation of Fluoxetine is reaction time with 44.97% percentage effect. Maximum removal efficiency of 96.14% was obtained for 30 mg L−1 inlet ozone concentration, 1 g L−1 nano-γ-alumina catalyst dosage, 30 min reaction time and 28.56 mg L−1 initial Fluoxetine concentration in optimum conditions.
AB - Degradation of Fluoxetine antidepressant by Catalytic ozonation in aqueous medium was investigated using nano-γ-alumina catalyst. Catalyst was synthesized via co-precipitation method and was characterized by XRD, FESEM, FTIR and BET Techniques. Controlled precipitation helped to successfully prepare nano-sized γ-alumina particles using sodium carbonate as the precipitating agent and aluminum nitrate as the precursor. Artificial neural network (ANN) and central composite design (CCD) were used to model and optimize degradation of Fluoxetine and results of the two models were compared. Furthermore, impacts of the basic operational variable, i.e. inlet ozone concentration, initial Fluoxetine concentration, nano-γ-alumina dosage and reaction time, were studied. Back-propagation (BP) learning for three-layer feed-forward ANN with topology 4:8:1 and trainscg algorithm was used for development of the ANN model. A considerable agreement was observed between the values predicted by the ANN and CCD models for removal of Fluoxetine and the experimental results. Findings declared superiority of ANNs in describing nonlinear behavior of the catalytic process and accuracy of the ANN model in predicting the efficiency values of Fluoxetine elimination. Pareto analysis demonstrated effectiveness of the all selected factors on efficiency of removal. Results showed that the most effective variable in catalytic ozonation of Fluoxetine is reaction time with 44.97% percentage effect. Maximum removal efficiency of 96.14% was obtained for 30 mg L−1 inlet ozone concentration, 1 g L−1 nano-γ-alumina catalyst dosage, 30 min reaction time and 28.56 mg L−1 initial Fluoxetine concentration in optimum conditions.
KW - Artificial neural networks
KW - Catalytic ozonation
KW - Central composite design
KW - Fluoxetine
KW - Modeling and optimization
UR - http://www.scopus.com/inward/record.url?scp=85055028497&partnerID=8YFLogxK
U2 - 10.1016/j.seppur.2018.10.020
DO - 10.1016/j.seppur.2018.10.020
M3 - Article
AN - SCOPUS:85055028497
SN - 1383-5866
VL - 211
SP - 551
EP - 563
JO - Separation and Purification Technology
JF - Separation and Purification Technology
ER -