Tools based on multivariate statistical analysis for classification of soil and groundwater in Apulian agricultural sites

Environ Sci Pollut Res Int. 2017 Jun;24(16):13967-13978. doi: 10.1007/s11356-016-7944-y. Epub 2016 Oct 29.

Abstract

In this paper, the results obtained from multivariate statistical techniques such as PCA (Principal component analysis) and LDA (Linear discriminant analysis) applied to a wide soil data set are presented. The results have been compared with those obtained on a groundwater data set, whose samples were collected together with soil ones, within the project "Improvement of the Regional Agro-meteorological Monitoring Network (2004-2007)". LDA, applied to soil data, has allowed to distinguish the geographical origin of the sample from either one of the two macroaeras: Bari and Foggia provinces vs Brindisi, Lecce e Taranto provinces, with a percentage of correct prediction in cross validation of 87%. In the case of the groundwater data set, the best classification was obtained when the samples were grouped into three macroareas: Foggia province, Bari province and Brindisi, Lecce and Taranto provinces, by reaching a percentage of correct predictions in cross validation of 84%. The obtained information can be very useful in supporting soil and water resource management, such as the reduction of water consumption and the reduction of energy and chemical (nutrients and pesticides) inputs in agriculture.

Keywords: Agricultural soil; Classification; Groundwater; LDA; Multivariate analysis; PCA; Soil quality.

MeSH terms

  • Agriculture
  • Environmental Monitoring
  • Groundwater*
  • Multivariate Analysis
  • Pesticides
  • Soil
  • Water Pollutants, Chemical*

Substances

  • Pesticides
  • Soil
  • Water Pollutants, Chemical