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Assessing shallow landslide hazards using the TRIGRS and SHALSTAB models,Serra do Mar,Brazil
Authors:Bianca Carvalho Vieira  Nelson Ferreira Fernandes  Oswaldo Augusto Filho  Tiago Damas Martins  David R Montgomery
Institution:1.Department of Geography,University of S?o Paulo,S?o Paulo,Brazil;2.Department of Geography,Federal University of Rio de Janeiro,Rio de Janeiro, Ilha do Fund?o,Brazil;3.S?o Carlos School of Engineering,University of S?o Paulo,S?o Paulo,Brazil;4.Cities Institute,Federal University of S?o Paulo,Itaquera, S?o Paulo,Brazil;5.Department of Earth and Space Science,University of Washington, Johnson Hall,Seattle,USA
Abstract:The hillslopes of the Serra do Mar, a system of escarpments and mountains that extend more than 1500 km along the southern and southeastern Brazilian coast, are regularly affected by heavy rainfall that generates widespread mass movements, causing large numbers of casualties and economic losses. This paper evaluates the efficiency of susceptibility mapping for shallow translational landslides in one basin in the Serra do Mar, using the physically based landslide susceptibility models SHALSTAB and TRIGRS. Two groups of scenarios were simulated using different geotechnical and hydrological soil parameters, and for each group of scenarios (A and B), three subgroups were created using soil thickness values of 1, 2, and 3 m. Simulation results were compared to the locations of 356 landslide scars from the 1985 event. The susceptibility maps for scenarios A1, A2, and A3 were similar between the models regarding the spatial distribution of susceptibility classes. Changes in soil cohesion and specific weight parameters caused changes in the area of predicted instability in the B scenarios. Both models were effective in predicting areas susceptible to shallow landslides through comparison of areas predicted to be unstable and locations of mapped landslides. Such models can be used to reduce costs or to define potentially unstable areas in regions like the Serra do Mar where field data are costly and difficult to obtain.
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