Predicting water quality using quantum machine learning: The case of the umgeni catchment (U20A) study region
Document Type
Article
Source of Publication
Ain Shams Engineering Journal
Publication Date
2-1-2026
Abstract
The assessment of water quality has become increasingly vital for maintaining the ecological balance and ensuring public safety across global water systems. This study examines the application of Quantum Machine Learning (QML) techniques in a real-world setting to predict water quality in the U20A region of the Umgeni Catchment, Durban, South Africa. We implemented the Quantum Support Vector Classifier (QSVC) and Quantum Neural Network (QNN) on a field-collected dataset. Our results demonstrate that the QSVC is more practical to implement and yields superior performance, achieving 75 % accuracy with polynomial and radial basis function kernels. In contrast, the QNN encountered persistent convergence issues, including the “dead neuron” problem, despite various optimization strategies. The findings provide a pragmatic framework for environmental monitoring applications, suggesting that QSVC offers a more viable near-term quantum approach for water quality classification tasks with imbalanced, real-world data.
DOI Link
ISSN
Publisher
Elsevier BV
Volume
17
Issue
2
Disciplines
Computer Sciences | Engineering
Keywords
Quantum machine learning, Quantum neural network, Quantum support vector classifier, Umgeni catchment, Water quality prediction
Scopus ID
Creative Commons License

This work is licensed under a Creative Commons Attribution-NonCommercial-No Derivative Works 4.0 International License.
Recommended Citation
Al-Karaki, Jamal; Khan, Muhammad Al Zafar; Gawanmeh, Amjad; and Omar, Marwan, "Predicting water quality using quantum machine learning: The case of the umgeni catchment (U20A) study region" (2026). All Works. 7757.
https://zuscholars.zu.ac.ae/works/7757
Indexed in Scopus
yes
Open Access
yes
Open Access Type
Gold: This publication is openly available in an open access journal/series