The prediction and management of water quality are critical to ensure sustainable water resources, particularly in regions like Malaysia, where rivers face increasing pollution from industrialisation, agriculture, and urban expansion. This review aims to provide a comprehensive analysis of machine learning (ML) models and statistical methods applied in forecasting and classification of water quality. A particular focus is given to hybrid models that integrate multiple approaches to improve predictive accuracy and robustness. This study also reviews water quality standards and highlights the environmental context that necessitates advanced predictive tools. Statistical techniques such as residual analysis, principal component analysis (PCA), and feature importance assessment are also explored to enhance model interpretability and reliability. Comparative tables of model performance, strengths, and limitations are presented alongside real-world applications. Despite recent advancements, challenges remain in data quality, model interpretability, and integration of spatio-temporal and fuzzy logic techniques. This review identifies key research gaps and proposes future directions for developing transparent, adaptive, and accurate models. The findings can also guide researchers and policymakers towards the development of smart water quality management systems that enhance decision-making and ecological sustainability.
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Lokman et al. (Mon,) studied this question.
synapsesocial.com/papers/689a093fe6551bb0af8cea31 — DOI: https://doi.org/10.3390/w17152243
Amar Lokman
Universiti Sains Islam Malaysia
Wan Zakiah Wan Ismail
Universiti Sains Islam Malaysia
Nor Azlina Ab. Aziz
Multimedia University
Water
Multimedia University
Universiti Sains Islam Malaysia
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