Issue 1, 2024

Using a supervised machine learning approach to predict water quality at the Gaza wastewater treatment plant

Abstract

This paper presents the use of four machine learning algorithms including Gaussian process regression (GPR), random forest (FR), extreme gradient boosting (XGB) and light gradient boosting machine (LightGBM) to predict the concentration of total suspended solids (TSS), chemical oxygen demand (COD), and biochemical oxygen demand (BOD) in the effluent of the Gaza wastewater treatment plant one day ahead. Data was collected from 360 wastewater samples taken from the Gaza wastewater treatment plant, and five input parameters were used in the proposed method: pHinf, temperature (Tempinf), BODinf, TSSinf, and CODinf. Four error measures were used to evaluate the prediction accuracy of the models. Results showed that the GPR model in the testing datasets is the best predictive model for predicting the effluent's TSS, COD and BOD with the best accuracy in relation to the correlation coefficient (CC), that is, (0.964–0.950–0.975) against RF (0.932–0.910–0.943), XGB (0.916–0.901–0.954), and LightGBM (0.890–0.892–0.883). The importance of input parameters was assessed, and temperature and pH were found to be the most important parameters in wastewater quality predictions using these four models. The study concluded that GPR is the most representative model. The model may help users in selecting optimal wastewater treatment based on original characteristics and standards.

Graphical abstract: Using a supervised machine learning approach to predict water quality at the Gaza wastewater treatment plant

Article information

Article type
Paper
Submitted
22 iyn 2023
Accepted
01 noy 2023
First published
04 noy 2023
This article is Open Access
Creative Commons BY license

Environ. Sci.: Adv., 2024,3, 132-144

Using a supervised machine learning approach to predict water quality at the Gaza wastewater treatment plant

M. S. Hamada, H. A. Zaqoot and W. A. Sethar, Environ. Sci.: Adv., 2024, 3, 132 DOI: 10.1039/D3VA00170A

This article is licensed under a Creative Commons Attribution 3.0 Unported Licence. You can use material from this article in other publications without requesting further permissions from the RSC, provided that the correct acknowledgement is given.

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