DESIGN AND OPTIMIZATION OF ELECTROCHEMICAL OXIDATION INTEGRATED WITH MACHINE LEARNING IN THE ELIMINATION OF PARACETAMOL POLLUTANTS
The electro-Fenton process has been a promising method in pharmaceutical wastewater treatment, especially to remove Paracetamol, a pharmaceutical compound that is often found in aquatic environments and is potentially harmful. This study evaluates the efficiency of electro-Fenton in the degradati...
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Format: | Final Project |
Language: | Indonesia |
Subjects: | |
Online Access: | https://digilib.itb.ac.id/gdl/view/87467 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | The electro-Fenton process has been a promising method in pharmaceutical wastewater
treatment, especially to remove Paracetamol, a pharmaceutical compound that is often found
in aquatic environments and is potentially harmful. This study evaluates the efficiency of
electro-Fenton in the degradation of Paracetamol using the Platinized Mesh electrode as the
anode and the Carbon Graphite Plate as the cathode and the Fe²? ion source as the catalyst.
Key operational parameters, such as pH, Fe²? concentration, and reaction time, are optimized
to achieve maximum degradation. The results showed that the electro-Fenton method was able
to remove 70.35% of Paracetamol within 50 minutes under optimal conditions. The
degradation of Paracetamol was confirmed through Total Organic Carbon (TOC)
measurements and intermediate product identification by High Performance Liquid
Chromatography (HPLC). To obtain an optimal design, it is necessary to analyze using
machine learning modeling by including datasets from references and experiments and
analyzed using Random Forest, Partial Least Square, and k-Nearest Neighbors models, and
the optimal model based on RMSE, R2
, and MAE values, namely the Random Forest model
with an RMSE of 7.3800247, an R2
value of 0.6722403, and an MAE of 6.2235160.
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