Space–time prediction of residual chlorine in a water distribution network using artificial intelligence and the EPANET hydraulic model
Date
2024-09-10
Journal Title
Journal ISSN
Volume Title
Publisher
Water Practice & Technology
Abstract
Insufficient knowledge of physical models and difficulty in fitting statistical models impair the choice of models to regulate
residual chlorine in water distribution. This paper compared the performance of physical and statistical models in predicting
residual chlorine concentrations in drinking water distribution. Drinking water was sampled from the downstream 128 water
points water pipeline. Online chlorine concentrations were determined at water draw-off points. EPANET, the physical
model, was used because of its efficiency in tracking dissolved chemicals. Statistical models used were regression, decision
tree, random forest and artificial neural network. In the whole distribution network, the artificial neural network performed
at R2 of 94%, multi-linear regression (62%), random forest (55%), decision tree (41%), and EPANET (24%). However, EPANET
yielded improved performance with R2 above 70% when separately applied to individual sub-distribution networks; hence, is
recommended for secondary chlorination in small distribution networks. For modelling large distribution networks, statistical
models, especially an artificial neural network, are recommended. However, such cases still need support from confirmatory
systems of interpretable parametric or hydraulic models that can achieve good performance with R2 80%. Water utilities
can use these results to deploy model(s) for managing residual chlorine within safe limits of residual chlorine concentration
in water distribution practice.
Description
P. (1-13) ;
Keywords
Artificial intelligence, EPANET, Residual chlorine decay, Water quality modelling
Citation
Kwio-Tamale, J. C. & Onyutha, C. (2024). Space–time prediction of residual chlorine in a water distribution network using artificial intelligence and the EPANET hydraulic model. Water Practice & Technology. https://doi.org/10.2166/wpt.2024.231.