Chemometric Assessment of Soil Pollution and Pollution Source Apportionment for an Industrially Impacted Region around a Non-Ferrous Metal Smelter in Bulgaria

Molecules. 2019 Mar 2;24(5):883. doi: 10.3390/molecules24050883.

Abstract

The present study deals with the assessment of pollution caused by a large industrial facility using multivariate statistical methods. The primary goal is to classify specific pollution sources and to apportion their involvement in the formation of the total concentration of the chemical parameters being monitored. This aim is accomplished by intelligent data analysis based on cluster analysis, principal component analysis and principal component regression analysis. Five latent factors are found to explain over 80% of the total variance of the system being conditionally named "organic", "non-ferrous smelter", "acidic", "secondary anthropogenic contribution" and "natural" factor. The apportionment models designate the contribution of the identified sources quantitatively and help in the interpretation of risk assessment and management actions. Since the study takes into account pollution uptake from soil to a cabbage plant, the data interpretation could help in introducing biomonitoring aspects of the assessment. The chemometric expertise helps in revealing hidden relationships between the objects and the variables involved to achieve a better understanding of specific pollution events in the soil of a severely industrially impacted region.

Keywords: biomonitoring; multivariate statistics; pollution source identification; trace metals; transfer factor.

MeSH terms

  • Bulgaria
  • Cluster Analysis
  • Environmental Monitoring*
  • Environmental Pollution / statistics & numerical data*
  • Humans
  • Industry
  • Metals, Heavy / adverse effects*
  • Metals, Heavy / chemistry
  • Principal Component Analysis
  • Risk Assessment
  • Soil Pollutants / adverse effects*
  • Soil Pollutants / chemistry

Substances

  • Metals, Heavy
  • Soil Pollutants