Predicting Heavy Metal Concentrations in Shallow Aquifer Systems Based on Low-Cost Physiochemical Parameters Using Machine Learning Techniques

Int J Environ Res Public Health. 2022 Sep 26;19(19):12180. doi: 10.3390/ijerph191912180.

Abstract

Monitoring ex-situ water parameters, namely heavy metals, needs time and laboratory work for water sampling and analytical processes, which can retard the response to ongoing pollution events. Previous studies have successfully applied fast modeling techniques such as artificial intelligence algorithms to predict heavy metals. However, neither low-cost feature predictability nor explainability assessments have been considered in the modeling process. This study proposes a reliable and explainable framework to find an effective model and feature set to predict heavy metals in groundwater. The integrated assessment framework has four steps: model selection uncertainty, feature selection uncertainty, predictive uncertainty, and model interpretability. The results show that Random Forest is the most suitable model, and quick-measure parameters can be used as predictors for arsenic (As), iron (Fe), and manganese (Mn). Although the model performance is auspicious, it likely produces significant uncertainties. The findings also demonstrate that arsenic is related to nutrients and spatial distribution, while Fe and Mn are affected by spatial distribution and salinity. Some limitations and suggestions are also discussed to improve the prediction accuracy and interpretability.

Keywords: Random Forest; explainable artificial intelligence (XAI); groundwater quality; heavy metals; prediction intervals.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Arsenic* / analysis
  • Artificial Intelligence
  • Environmental Monitoring / methods
  • Groundwater*
  • Iron
  • Machine Learning
  • Manganese
  • Metals, Heavy* / analysis
  • Water
  • Water Pollutants, Chemical* / analysis

Substances

  • Metals, Heavy
  • Water Pollutants, Chemical
  • Water
  • Manganese
  • Iron
  • Arsenic

Grants and funding

This work was partially supported by the Ministry of Science and Technology, the Republic of China, under grants MOST 107-2116-M-008-003-MY2, MOST 109-2621-M-008-003, MOST 109-2625-M-008-006, MOST 111-2410-H-019-006-MY3, MOST 111-2622-H-019-001, MOST 110-2116-M-008-006, and MOST 111-2116-M-008-008.