Predicting unregulated disinfection by-products in small water distribution networks: an empirical modelling framework

被引:0
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作者
Haroon R. Mian
Gyan Chhipi-Shrestha
Kasun Hewage
Manuel J. Rodriguez
Rehan Sadiq
机构
[1] The University of British Columbia Okanagan,School of Engineering
[2] École Supérieure D’aménagement du Territoire et Développement Régional (ESAD),undefined
来源
Environmental Monitoring and Assessment | 2020年 / 192卷
关键词
Predictive modelling; Unregulated disinfection by-products; Water distribution networks; Water quality and monitoring; Contour profiles;
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摘要
Disinfection is used to deactivate pathogens in drinking water. However, disinfectants react with natural organic matter present in water to form disinfection by-products (DBPs). While a few of these DBPs have been studied extensively and are regulated in many countries, new unregulated DBPs (UR-DBPs) have also recently been identified in drinking water. The UR-DBPs are considered to be more toxic than regulated DBPs (R-DBPs). To understand the occurrence of UR-DBPs in a water distribution network (WDN), this research presents an approach to predicting the behaviour of emerging UR-DBPs such as dichloroacetonitrile (DCAN), trichloropropanone (TCP), and trichloronitromethane (TCNM) in WDNs. Water quality data, generated by sampling and laboratory analysis of 12 small communities, was used to develop predictive models. A framework was also proposed alongside the predictive models to estimate the concentration of emerging UR-DBPs under limited water quality sampling information. Moreover, the relationship between emerging UR-DBP concentrations and their identified predictors was further observed and evaluated by developing contour profiles. DCAN and TCP predictive models have coefficient of determination (R2) > 85%, whereas for TCNM model, the R2 was > 65%. Water quality parameters including water temperature, turbidity, conductivity, and dissolved organic carbon concentrations were identified as key predictors. Similarly, trichloroacetic acid and bromodichloromethane were identified as key predictors among DBP families, to predict the occurrence of emerging UR-DBPs. Developed models and relationships between the UR-DBPs and predictors can help water utilities and regulators to manage the occurrence of UR-DBPs in small WDNs.
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