Unveiling the potential of machine learning in cost-effective degradation of pharmaceutically active compounds: A stirred photo-reactor study

被引:1
作者
Acosta-Angulo B. [1 ]
Lara-Ramos J. [1 ]
Niño-Vargas A. [1 ]
Diaz-Angulo J. [2 ]
Benavides-Guerrero J. [3 ]
Bhattacharya A. [3 ]
Cloutier S. [3 ]
Machuca-Martínez F. [1 ]
机构
[1] Escuela de Ingeniería Química, Universidad Del Valle, Santiago de, Valle Del Cauca, Cali
[2] Research and Technological Development in Water Treatment, Processes Modelling and Disposal of Residues – GITAM, Cauca
[3] Department of Electrical Engineering, Ecole de Technologia Superieure, 1100 Notre-Dame West, Montreal, H3C 1K3, QC
关键词
D O I
10.1016/j.chemosphere.2024.142222
中图分类号
学科分类号
摘要
In this study, neural networks and support vector regression (SVR) were employed to predict the degradation over three pharmaceutically active compounds (PhACs): Ibuprofen (IBP), diclofenac (DCF), and caffeine (CAF) within a stirred reactor featuring a flotation cell with two non-concentric ultraviolet lamps. A total of 438 datapoints were collected from published works and distributed into 70% training and 30% test datasets while cross-validation was utilized to assess the training reliability. The models incorporated 15 input variables concerning reaction kinetics, molecular properties, hydrodynamic information, presence of radiation, and catalytic properties. It was observed that the Support Vector Regression (SVR) presented a poor performance as the ε hyperparameter ignored large error over low concentration levels. Meanwhile, the Artificial Neural Networks (ANN) model was able to provide rough estimations on the expected degradation of the pollutants without requiring information regarding reaction rate constants. The multi-objective optimization analysis suggested a leading role due to ozone kinetic for a rapid degradation of the contaminants and most of the results required intensification with hydrogen peroxide and Fenton process. Although both models were affected by accuracy limitations, this work provided a lightweight model to evaluate different Advanced Oxidation Processes (AOPs) by providing general information regarding the process operational conditions as well as know molecular and catalytic properties. © 2024 The Authors
引用
收藏
相关论文
共 88 条
[1]  
Acosta-Angulo B., Lara-Ramos J., Diaz-Angulo J., Mueses M.A., Machuca-Martinez F., Mechanistic model and optimization of the diclofenac degradation kinetic for ozonation processes intensification, Water, 13, 13, (2021)
[2]  
Acosta-Herazo R., Valades-Pelayo P.J., Mueses M.A., Pinzon-Cardenas M.H., Arancibia-Bulnes C., Machuca-Martinez F., An optical and energy absorption analysis of the solar compound parabolic collector photoreactor (CPCP): the impact of the radiation distribution on its optimization, Chem. Eng. J., 395, (2020)
[3]  
Adam P., Sam G., Francisco M., Adam L., James B., Gregory C., Trevor K., Lin Z., Natalia G., Luca A., Alban D., Andreas K., Yang E., Zach D., Martin R., Alykhan T., Sasank C., PyTorch C.S., An Imperative Style, High-Performance Deep Learning Library, (2019)
[4]  
Afreen G., Lara-Ramos J.A., Vidwans N.A., Atla V., Kumar V., Vaddiraju S., Machuca-Martinez F., Sunkara M.K., Upadhyayula S., Bulk production of porous TiO2 nanowires by unique solvo-plasma oxidation approach for combating biotic and abiotic water contaminants, J. Mater. Sci. Mater. Electron., 32, pp. 21974-21987, (2021)
[5]  
Air-products industrial oxygen gas cylinders
[6]  
Atkins P.W., De Paula J., Keeler J., Atkins' Physical Chemistry, (2018)
[7]  
Babuponnusami A., Muthukumar K., A review on Fenton and improvements to the Fenton process for wastewater treatment, J. Environ. Chem. Eng., 2, pp. 557-572, (2014)
[8]  
Beltran F.J., Ozone Reaction Kinetics for Water and Wastewater Systems, (2003)
[9]  
Ben Chabchoubi I., Lam S.S., Pane S.E., Ksibi M., Guerriero G., Hentati O., Hazard and health risk assessment of exposure to pharmaceutical active compounds via toxicological evaluation by zebrafish, Environ. Pollut., 324, (2023)
[10]  
Cherian Joel Mathewand Kumar R., Fundamentals of machine learning, A Guide to Applied Machine Learning for Biologists, pp. 147-174, (2023)