4.7 Article

Data-driven flood hazard zonation of Italy

期刊

JOURNAL OF ENVIRONMENTAL MANAGEMENT
卷 294, 期 -, 页码 -

出版社

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.jenvman.2021.112986

关键词

Inundation; Statistical modelling; Hazard zoning; Hydro-morphometry

资金

  1. Fondazione Assicurazioni Generali as part of the national project Economic Evaluation of Natural Disasters

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The study introduces a data-driven and statistically-based procedure, Flood-SHE, for delineating potential areas of river floods. Results demonstrate that Flood-SHE accurately identifies potentially inundated areas, delineating larger areas compared to physically-based models, depending on the quality of flood information. This new data-driven approach shows promise for predicting flood risk and could be used where traditional hydrological models are not available.
We present Flood-SHE, a data-driven, statistically-based procedure for the delineation of areas expected to be inundated by river floods. We applied Flood-SHE in the 23 River Basin Authorities (RBAs) in Italy using information on the presence or absence of inundations obtained from existing flood zonings as the dependent variable, and six hydro-morphometric variables computed from a 10 m x 10 m DEM as covariates. We trained 96 models for each RBA using 32 combinations of the hydro-morphometric covariates for the three return periods, for a total of 2208 models, which we validated using 32 model sets for each of the covariate combinations and return periods, for a total of 3072 validation models. In all the RBAs, Flood-SHE delineated accurately potentially inundated areas that matched closely the corresponding flood zonings defined by physically-based hydro-dynamic flood routing and inundation models. Flood-SHE delineated larger to much larger areas as potentially subject of being inundated than the physically-based models, depending on the quality of the flood information. Analysis of the sites with flood human consequences revealed that the new data-driven inundation zones are good predictors of flood risk to the population of Italy. Our experiment confirmed that a small number of hydromorphometric terrain variables is sufficient to delineate accurate inundation zonings in a variety of physiographical settings, opening to the possibility of using Flood-SHE in other areas. We expect the new data-driven inundation zonings to be useful where flood zonings built on hydrological modelling are not available, and to decide where improved flood hazard zoning is needed.

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