Abstract
Abstract. When floods hit inhabited areas, great losses are usually registered in terms of both impacts on people (i.e., fatalities and injuries) and economic impacts on urban areas, commercial and productive sites, infrastructures, and agriculture. To properly assess these, several parameters are needed, among which flood depth is one of the most important as it governs the models used to compute damages in economic terms. This paper presents a simple yet effective semiautomatic approach for deriving very precise inundation depth. First, precise flood extent is derived employing a change detection approach based on the normalized difference flood index computed from high-resolution synthetic aperture radar imagery. Second, by means of a high-resolution lidar digital elevation model, water surface elevation is estimated through a statistical analysis of terrain elevation along the boundary lines of the identified flooded areas. Experimental results and quality assessment are given for the flood that occurred in the Veneto region, northeastern Italy, in 2010. In particular, the method proved fast and robust and, compared to hydrodynamic models, it requires sensibly less input information.
Subject
General Earth and Planetary Sciences
Reference49 articles.
1. Amadio, M., Mysiak, J., Carrera, L., and Koks, E.: Improving flood damage
assessment models in Italy, Nat. Hazards, 82, 1–14, https://doi.org/10.1007/s11069-016-2286-0, 2016.
2. ArcPy: “What is ArcPy?”,
http://pro.arcgis.com/en/pro-app/arcpy/get-started/what-is-arcpy-.htm,
last access: 15 November 2018.
3. ARPAV: Report of the “Agenzia Regionale Per la Prevenzione e Protezione
Ambientale del Veneto” (ARPAV), Scheda Evento “Pluvio”, (Figura 2), Veneto
Region, 1–16, 2010.
4. Brown, K. M. and Brownett, J. M.: Progress in operational flood mapping using
satellite synthetic aperture radar (SAR) and airborne light detection and
ranging (LiDAR) data, 40, 196–214, https://doi.org/10.1177/0309133316633570, 2016.
5. Brisco, B., Schmitt, A., Murnaghan, K., Kaya, S., and Roth, A.: SAR
polarimetric change detection for flooded vegetation, Int. J. Digit. Earth,
6, 1–12, 2011.
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