Articles | Volume 13, issue 3
https://doi.org/10.5194/nhess-13-771-2013
© Author(s) 2013. This work is distributed under
the Creative Commons Attribution 3.0 License.
the Creative Commons Attribution 3.0 License.
https://doi.org/10.5194/nhess-13-771-2013
© Author(s) 2013. This work is distributed under
the Creative Commons Attribution 3.0 License.
the Creative Commons Attribution 3.0 License.
Brief communication "A prototype forecasting chain for rainfall induced shallow landslides"
P. Mercogliano
Italian Aerospace Research Center (C.I.R.A.), Meteo System & Instrumentation Laboratory, Capua (CE), 81043, Italy
Euro Mediterranean Centre For Climate Changes (C.M.C.C.), Impacts on Ground and Coast (ISC) Division, Via Augusto Imperatore 16, 73100, Lecce, Italy
S. Segoni
University of Firenze, Department of Earth Sciences, Via la Pira 4, 50121, Firenze, Italy
G. Rossi
University of Firenze, Department of Earth Sciences, Via la Pira 4, 50121, Firenze, Italy
B. Sikorsky
Italian Aerospace Research Center (C.I.R.A.), Meteo System & Instrumentation Laboratory, Capua (CE), 81043, Italy
Euro Mediterranean Centre For Climate Changes (C.M.C.C.), Impacts on Ground and Coast (ISC) Division, Via Augusto Imperatore 16, 73100, Lecce, Italy
V. Tofani
University of Firenze, Department of Earth Sciences, Via la Pira 4, 50121, Firenze, Italy
P. Schiano
Italian Aerospace Research Center (C.I.R.A.), Meteo System & Instrumentation Laboratory, Capua (CE), 81043, Italy
Euro Mediterranean Centre For Climate Changes (C.M.C.C.), Impacts on Ground and Coast (ISC) Division, Via Augusto Imperatore 16, 73100, Lecce, Italy
F. Catani
University of Firenze, Department of Earth Sciences, Via la Pira 4, 50121, Firenze, Italy
N. Casagli
University of Firenze, Department of Earth Sciences, Via la Pira 4, 50121, Firenze, Italy
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G. Rossi, F. Catani, L. Leoni, S. Segoni, and V. Tofani
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