Logistic regression modeling to assess groundwater vulnerability to contamination in Hawaii, USA

J Contam Hydrol. 2013 Oct:153:1-23. doi: 10.1016/j.jconhyd.2013.07.004. Epub 2013 Jul 23.

Abstract

Capture zone analysis combined with a subjective susceptibility index is currently used in Hawaii to assess vulnerability to contamination of drinking water sources derived from groundwater. In this study, we developed an alternative objective approach that combines well capture zones with multiple-variable logistic regression (LR) modeling and applied it to the highly-utilized Pearl Harbor and Honolulu aquifers on the island of Oahu, Hawaii. Input for the LR models utilized explanatory variables based on hydrogeology, land use, and well geometry/location. A suite of 11 target contaminants detected in the region, including elevated nitrate (>1 mg/L), four chlorinated solvents, four agricultural fumigants, and two pesticides, was used to develop the models. We then tested the ability of the new approach to accurately separate groups of wells with low and high vulnerability, and the suitability of nitrate as an indicator of other types of contamination. Our results produced contaminant-specific LR models that accurately identified groups of wells with the lowest/highest reported detections and the lowest/highest nitrate concentrations. Current and former agricultural land uses were identified as significant explanatory variables for eight of the 11 target contaminants, while elevated nitrate was a significant variable for five contaminants. The utility of the combined approach is contingent on the availability of hydrologic and chemical monitoring data for calibrating groundwater and LR models. Application of the approach using a reference site with sufficient data could help identify key variables in areas with similar hydrogeology and land use but limited data. In addition, elevated nitrate may also be a suitable indicator of groundwater contamination in areas with limited data. The objective LR modeling approach developed in this study is flexible enough to address a wide range of contaminants and represents a suitable addition to the current subjective approach.

Keywords: Aquifer vulnerability; Groundwater contamination; Logistic regression; Risk assessment.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Drinking Water
  • Environmental Monitoring / statistics & numerical data*
  • Groundwater / analysis*
  • Hawaii
  • Hydrocarbons, Chlorinated / analysis
  • Logistic Models*
  • Nitrates / analysis
  • Pesticides / analysis
  • Water Pollutants, Chemical / analysis*

Substances

  • Drinking Water
  • Hydrocarbons, Chlorinated
  • Nitrates
  • Pesticides
  • Water Pollutants, Chemical