Statistical and spatial assessment of soil heavy metal contamination in areas of poorly recorded, complex sources of pollution Part 2: Canonical correlation analysis and GIS for the assessment of contamination sources

Authors
Citation
A. Korre, Statistical and spatial assessment of soil heavy metal contamination in areas of poorly recorded, complex sources of pollution Part 2: Canonical correlation analysis and GIS for the assessment of contamination sources, STOCH ENV R, 13(4), 1999, pp. 288-316
Citations number
34
Categorie Soggetti
Environmental Engineering & Energy
Journal title
STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT
ISSN journal
14363240 → ACNP
Volume
13
Issue
4
Year of publication
1999
Pages
288 - 316
Database
ISI
SICI code
1436-3240(199908)13:4<288:SASAOS>2.0.ZU;2-M
Abstract
In recent years, soil contamination assessment studies have aimed to quanti fy the extent and identify its sources. However, the quantification of the contributions to pollution from different sources still represents a seriou s challenge to the environmental scientists and engineers. Statistical and spatial analysis tools have been used successfully to assess the volume and spread of soil contamination. The techniques suggested so far require good historical record of the study area in addition to the large amounts of so il quality data that need to be collected. Furthermore, they are only able to identify/provide a qualitative description of the pollution sources and do not guaranty convincing results in cases of complex or poorly recorded c ontamination. Research described in this paper has developed a methodology that combines statistical and geostatistical analysis tools with geographic information systems for the quantitative and spatial assessment of contami nation sources. In a previous paper, principal component and factor analysis tools where sh own to successfully explore the physical processes behind pollution. This i nformation is proven invaluable in the design of canonical correlation anal ysis for the soil contamination data, so that distinctive pollution sources are separated quantitatively. The geostatistical analysis tools in conjunc tion with geographic information systems address the spatial dimension of t he data and the pollution sources. The practical aspects of the methodology are illustrated using soil contamination data from Lavrio old mine site in Greece.