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Prediction of wastewater quality parameters using adaptive and machine learning models: A South African case study

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Published
Nov 01, 2024
Vol/Issue
67
Pages
106185
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Funding
National Research Foundation Award: UID84166
Durban University of Technology
Cite This Article
Abdul Gaffar Sheik, Muneer Ahmad Malla, Chandra Sainadh Srungavarapu, et al. (2024). Prediction of wastewater quality parameters using adaptive and machine learning models: A South African case study. Journal of Water Process Engineering, 67, 106185. https://doi.org/10.1016/j.jwpe.2024.106185