Machine learning modelling of removal of reactive orange RO16 by chemical activated carbon in textile wastewater

Author:

Khan Izaz Ullah1,Shah Jehanzeb Ali2,Bilal Muhammad2,Faiza 3,Khan Muhammad Saqib2,Shah Sajid4,Akgül Ali5

Affiliation:

1. Department of Mathematics, COMSATS University Islamabad, Abbottabad Campus, Pakistan

2. Department of Environmental Sciences, COMSATS University Islamabad, Abbottabad Campus, Pakistan

3. Virtual University of Pakistan

4. EIAS Data science and Block Chain Lab, CCIS, Prince Sultan University, Riyadh, Saudi Arabia

5. Department of Computer Science and Mathematics, Lebanese American University, Beirut, Lebanon Department of Mathematics, Arts and Science Faculty, SIIRT University, 56100, SIIRT, Turkey Near East University, Mathematics Research Centre, Department of Mathematics, Nicosia/Mersin-10 Turkey

Abstract

This study develops machine learning model of removal of reactive orange dye (Azo) RO16 from textile wastewater by chemical activated carbon CAC. The study addresses the contamination removal efficiency with respect to changing dynamics of concentration, temperature, time, pH and dose, respectively. Machine learning based learning multiple polynomial regression is implemented to fit a model on the experimental observed data. The machine learns from the data and fit the multiple polynomial regression model for the data. The observed and predicted data are in close agreement with the R-squared value of 92%. The results show that the baseline efficiency of using chemical activated carbon adsorbent for removing RO16 is 76.5%. The most significant input parameter increasing the efficiency by a constant value of 35 units out of 100 is the second order response of the dose. Moreover, four input parameters can considerably increase the efficiency. Furthermore, six input parameters can considerably decrease the efficiency. It is investigated, that the second order response with respect to time has the minute decreasing effect on the removal efficiency. The superior abilities of the modeling are two fold. Firstly, the contamination removal of reactive orange dye (Azo) RO16 with chemical activated carbon adsorbent is studied with respect to five multiple parameters. Secondly, the model exploits the machine learning capability of the renowned Python machine learning module sklearn to fit a multiple polynomial regression model. Thus a robust model is fitted giving twenty-one inputs/output interactions and responses. From the input-target correlation analysis it is clear that the removal efficiency has a strong correlation with the time. It has considerably significant relationship with dose of the CAC and the temperature with values of 18% and 17%, respectively. Moreover, the removal efficiency has inverse relations with pH and Ci, with values of 15% and 12%, respectively.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

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