Integrated AI-driven optimization of Fenton process for the treatment of antibiotic sulfamethoxazole: Insights into mechanistic approach.

Journal: Chemosphere
Published Date:

Abstract

Antibiotics, as a class of environmental pollutants, pose a significant challenge due to their persistent nature and resistance to easy degradation. This study delves into modeling and optimizing conventional Fenton degradation of antibiotic sulfamethoxazole (SMX) and total organic carbon (TOC) under varying levels of HO, Fe concentration, pH, and temperature using statistical and artificial intelligence techniques including Multiple Regression Analysis (MRA), Support Vector Regression (SVR) and Artificial Neural Network (ANN). In statistical metrics, the ANN model demonstrated superior predictive accuracy compared to its counterparts, with lowest RMSE values of 0.986 and 1.173 for SMX and TOC removal, respectively. Sensitivity showcased HO/Fe ratio, time and pH as pivotal for SMX degradation, while in simultaneous SMX and TOC reduction, fine tuning the time, pH, and temperature was essential. Leveraging a Hybrid Genetic Algorithm-Desirability Optimization approach, the trained ANN model revealed an optimal desirability of 0.941 out of 1000 solutions which yielded a 91.18% SMX degradation and 87.90% TOC removal under following specific conditions: treatment time of 48.5 min, Fe: 7.05 mg L, HO: 128.82 mg L, pH: 5.1, initial SMX: 97.6 mg L, and a temperature: 29.8 °C. LC/MS analysis reveals multiple intermediates with higher m/z (242, 270 and 288) and lower m/z (98, 108, 156 and 173) values identified, however no aliphatic hydrocarbon was isolated, because of the low mineralization performance of Fenton process. Furthermore, some inorganic fragments like NH and NO were also determined in solution. This comprehensive research enriches AI modeling for intricate Fenton-based contaminant degradation, advancing sustainable antibiotic removal strategies.

Authors

  • Saima Gul
    Department of Chemistry, Islamia College University Peshawar, KP, Pakistan.
  • Sajjad Hussain
    Faculty of Materials and Chemical Engineering, GIK Institute of Engineering Sciences and Technology, Topi, 23640, KPK, Pakistan; São Carlos Institute of Chemistry, University of São Paulo, Avenida Trabalhador São Carlense 400, 13566-590, São Carlos, SP, Brazil. Electronic address: sajjad.hussain@giki.edu.pk.
  • Hammad Khan
    Faculty of Materials and Chemical Engineering, GIK Institute of Engineering Sciences and Technology, Topi, 23640, KPK, Pakistan.
  • Muhammad Arshad
    Department of Chemical Engineering, College of Engineering, King Khalid University, Abha, Saudi Arabia.
  • Javaid Rabbani Khan
    Faculty of Materials and Chemical Engineering, GIK Institute of Engineering Sciences and Technology, Topi, Pakistan.
  • Artur de Jesus Motheo
    São Carlos Institute of Chemistry, University of São Paulo, Avenida Trabalhador São Carlense 400, 13566-590, SãoCarlos, SP, Brazil.