Data di Pubblicazione:
2013
Abstract:
Increasing availability of geo-environmental data has promoted the use of statistical methods to assess
groundwater vulnerability. Nitrate is a widespread anthropogenic contaminant in groundwater and its occurrence
can be used to identify aquifer settings vulnerable to contamination. In this study, multivariate Weights of Evidence
(WofE) and Logistic Regression (LR) methods, where the response variable is binary, were used to evaluate
the role and importance of a number of explanatory variables associated with nitrate sources and occurrence in
groundwater in the Milan District (central part of the Po Plain, Italy). The results of these models have been used
to map the spatial variation of groundwater vulnerability to nitrate in the region, and we compare the similarities
and differences of their spatial patterns and associated explanatory variables. We modify the standard WofE
method used in previous groundwater vulnerability studies to a form analogous to that used in LR; this provides a
framework to compare the results of both models and reduces the effect of sampling bias on the results of the standard
WofE model. In addition, a nonlinear Generalized Additive Model has been used to extend the LR analysis.
Both approaches improved discrimination of the standard WofE and LR models, as measured by the c-statistic.
Groundwater vulnerability probability outputs, based on rank-order classification of the respective model results,
were similar in spatial patterns and identified similar strong explanatory variables associated with nitrate source
(population density as a proxy for sewage systems and septic sources) and nitrate occurrence (groundwater depth).
Tipologia CRIS:
01.01 Articolo in rivista
Elenco autori:
Sterlacchini, Simone
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