Potential and limitations of a pilot-scale drinking water distribution system for bacterial community predictive modelling

Sci Total Environ. 2020 May 15:717:137249. doi: 10.1016/j.scitotenv.2020.137249. Epub 2020 Feb 11.

Abstract

Waterborne disease outbreaks are a persistent and serious threat to public health according to reported incidents across the globe. Online drinking water quality monitoring technologies have evolved substantially and have become more accurate and accessible. However, using online measurements alone is unsuitable for detecting microbial regrowth, potentially including harmful species, ahead of time in the distribution systems. Alternatively, observational data could be collected periodically, e.g. once per week or once per month and it could include a representative set of variables: physicochemical water characteristics, disinfectant concentrations, and bacterial abundances, which would be a valuable source of knowledge for predictive modelling that aims to reveal pathogen-related threats. In this study, we utilised data collected from a pilot-scale drinking water distribution system. A data-driven random forest model was used for predictive modelling and was trained for nowcasting and forecasting abundances of bacterial groups. In all the experiments, we followed the realistic crossline scenario, which means that when training and testing the models the data is collected from different pipelines. In spite of the more accurate results of the nowcasting, the 1-week forecasting still provided accurate predictions of the most abundant bacteria, their rapid increase and decrease. In the future predictive modelling might be used as a tool in designing control measures for opportunistic pathogens which are able to multiply in the favourable conditions in drinking water distribution systems (DWDS). Eventually, the forecasting information will be able to produce practically helpful data for controlling the DWDS regrowth.

Keywords: Absolute read count; Bacterial abundance; Forecasting; Nowcasting; Random forest; Water pipeline.

MeSH terms

  • Bacteria
  • Disease Outbreaks
  • Drinking Water
  • Microbiota
  • Water Microbiology*
  • Water Quality
  • Water Supply

Substances

  • Drinking Water