Data di Pubblicazione:
2011
Abstract:
Statistical methods are widely used in environmental studies to evaluate natural hazards. Within
groundwater vulnerability in particular, statistical methods are used to support decisions about environmental
planning and management. The production of vulnerability maps obtained by statistical
methods can greatly help decision making. One of the key points in all of these studies is the validation of
the model outputs, which is performed through the application of various techniques to analyze the
quality and reliability of the final results and to evaluate the model having the best performance. In this
study, a groundwater vulnerability assessment to nitrate contamination was performed for the shallow
aquifer located in the Province of Milan (Italy). The Weights of Evidence modeling technique was used to
generate six model outputs, each one with a different number of input predictive factors. Considering
that a vulnerability map is meaningful and useful only if it represents the study area through a limited
number of classes with different degrees of vulnerability, the spatial agreement of different reclassified
maps has been evaluated through the kappa statistics and a series of validation procedures has been
proposed and applied to evaluate the reliability of the reclassified maps. Results show that performance
is not directly related to the number of input predictor factors and that is possible to identify, among
apparently similar maps, those best representing groundwater vulnerability in the study area. Thus,
vulnerability maps generated using statistical modeling techniques have to be carefully handled before
they are disseminated. Indeed, the results may appear to be excellent and final maps may perform quite
well when, in fact, the depicted spatial distribution of vulnerability is greatly different from the actual
one. For this reason, it is necessary to carefully evaluate the obtained results using multiple statistical
techniques that are capable of providing quantitative insight into the analysis of the results. This evaluation
should be done at least to reduce the questionability of the results and so to limit the number of
potential choices.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Groundwater vulnerability; Statistical methods; Land use management; Spatial agreement; Validation procedure
Elenco autori:
Sterlacchini, Simone
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