Predicting of ultrafiltration performances by advanced data analysis

Water Res. 2018 Feb 1:129:365-374. doi: 10.1016/j.watres.2017.11.023. Epub 2017 Nov 9.

Abstract

In order to optimize drinking water production operation, membrane users can use several analytical tools that help membrane fouling prediction and alleviate fouling by a proper feed water resource selection. However, during strong fouling event, membrane decision-makers still face short-term deadline to decide between different options (e.g. optimization of pretreatment or change in feed water quality). Hence, statistical approach might help to better select the most relevant analytical parameter related to fouling potential of a specific resource in order to speed-up decision taking. In this study, the physical and chemical properties and the filtration performances (at lab-scale) of five ground water resources, selected as potential resources of a large drinking production site of Paris (France), was evaluated through one year. Principal component analysis emphasizes the strong link between waters' organic matrix and fouling propensity. Cluster analysis of filtration performances allowed classifying the water samples into three groups exhibiting strong, low and intermediate fouling. Finally, multiple linear regressions performed on all collected data indicated that strong fouling events were related to a combined increase of carbon content and protein like-substances while intermediate fouling might only be anticipated by an increase of fluorescence signal associated to protein like-substances. This study demonstrates that advanced data analysis might be a powerful tool to better manage water resources selection used for drinking water production and to forecast filtration performances in a context of water quality degradation.

Keywords: ARIMA model; Cluster analysis; Fluorescence excitation emission matrix; Karst area; Principal component analysis; Ultrafiltration.

MeSH terms

  • Carbon
  • Cluster Analysis
  • Decision Making
  • Drinking Water / chemistry
  • Membranes, Artificial*
  • Paris
  • Principal Component Analysis
  • Proteins
  • Regression Analysis
  • Spectrometry, Fluorescence
  • Ultrafiltration / statistics & numerical data
  • Water Purification / instrumentation*
  • Water Purification / statistics & numerical data*
  • Water Quality

Substances

  • Drinking Water
  • Membranes, Artificial
  • Proteins
  • Carbon