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Predicting quality parameters of wastewater treatment plants using artificial intelligence techniques

Aghdam, Ehsan; Mohandes, Saeed Reza; Manu, Patrick; Cheung, Clara; Yunusa-Kaltungo, Akilu; Zayed, Tarek

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Authors

Ehsan Aghdam

Saeed Reza Mohandes

Patrick Manu Patrick.Manu@uwe.ac.uk
Professor of Innovative Construction and Project Management

Clara Cheung

Akilu Yunusa-Kaltungo

Tarek Zayed



Abstract

Estimating wastewater treatment plants’ (WWTPs) influent parameters such as 5-day biological oxygen demand (BOD5) and chemical oxygen demand (COD) is vital for optimizing electricity and energy consumption. Against this backdrop, the existing body of knowledge is bereft of a study employing Artificial Intelligence-based techniques for the prediction of BOD5 and COD. Thus, in this study, Gene expression programming (GEP), multilayer perception neural networks, multi-linear regression, k-nearest neighbors, gradient boosting, and regression trees -based models were trained for predicting BOD5 and COD, using monthly data collected from the inflow of 7 WWTPs over a three-year period in Hong Kong. Based on different statistical parameters, GEP provides more accurate estimations, with R2 values of 0.784 and 0.861 for BOD5 and COD respectively. Furthermore, results of sensitivity analysis undertaken by monte Carlo simulation revealed that both BOD5 and COD were mostly affected by concentrations of total suspended solids, and a 10% increase in the value of TSS resulted in a 7.94 % and 7.92% increase in the values of BOD5 and COD, respectively. It is seen that the GEP modeling results complied with the fundamental chemistry of the wastewater quality parameters and can be further applied on other sewage sources such as industrial sewage and leachate. The promising results obtained pave the way for forecasting the operational parameters during sludge processing, leading to an extensive energy savings during the wastewater treatment processes.

Journal Article Type Article
Acceptance Date Mar 28, 2023
Online Publication Date Mar 31, 2023
Publication Date Jun 15, 2023
Deposit Date Jun 8, 2023
Publicly Available Date Jun 12, 2023
Journal Journal of Cleaner Production
Print ISSN 0959-6526
Electronic ISSN 1879-1786
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 405
Article Number 137019
Keywords Gene expression programming; AI models; Wastewater quality parameters; Artificial neural networks; Monte Carlo simulation
Public URL https://uwe-repository.worktribe.com/output/10848860
Publisher URL https://www.sciencedirect.com/science/article/pii/S0959652623011770

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