Data di Pubblicazione:
2018
Abstract:
Floods are frequent and widespread in Italy and pose a severe risk for the population. Local administrations commonly
use flow propagation models to delineate the flood prone areas. These modeling approaches require a detail geoenvironmental data knowledge, intensive calculation and long computational times. Conversely, statistical methods can
be used to asses flood hazard over large areas, or to extend the flood hazard zonation to the portion of the river networks
where hydraulic models have still not been applied or can be applied with difficulties. In this paper, we describe a
statistical approach to prepare flood hazard maps for the whole of Italy. The proposed method is based on a multivariate
machine learning algorithm calibrated using in input flood hazard maps delineated by the local authorities and terrain
elevation data. The preliminary results obtained in several major Italian catchments indicate good performances of
the statistical algorithm in matching the training data. Results are promising giving the possibility to obtain reliable
delineations of flood prone areas obtained in the rest of the Italian territory.
Tipologia CRIS:
04.01 Contributo in Atti di convegno
Keywords:
Flood; DEM; Hazard; Statistical model; Zonation; Machine Learning
Elenco autori:
Sterlacchini, Simone; Rossi, Mauro; Marchesini, Ivan; Salvati, Paola; Donnini, Marco; Guzzetti, Fausto
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