4.7 Article Proceedings Paper

Shallow landslides in pyroclastic soils: a distributed modelling approach for hazard assessment

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ENGINEERING GEOLOGY
卷 73, 期 3-4, 页码 277-295

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ELSEVIER
DOI: 10.1016/j.enggeo.2004.01.009

关键词

shallow landslide; debris flow; hydrological models; hazard assessment; GIS; pyroclastic soil

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An effective assessment of shallow landslide hazard requires spatially distributed modelling of triggering processes. This is possible by using physically based models that allow us to simulate the transient hydrological and geotechnical processes responsible for slope instability. Some simplifications are needed to address the lack of data and the difficulty of calibration over complex terrain at the catchment's scale. We applied two simple hydrological models, coupled with the infinite slope stability analysis, to the May 1998 landslide event in Samo, Southern Italy. A quasi-dynamic model (Barling et al., 1994) was used to model the contribution to instability of lateral flow by simulating the time-dependent formation of a groundwater table in response to rainfall. A diffusion model [Water Resour. Res. 36 (2000) 1897] was used to model the role of vertical flux by simulating groundwater pressures that develop in response to heavy rainstorms. The quasi-dynamic model overestimated the slope instability over the whole area (more than 16%) but was able to predict correctly slope instability within zero order basins where landslides occurred and developed into large debris flows. The diffusion model simulated correctly the triggering time of more than 70% of landslides within an unstable area amounting to 7.3% of the study area. These results support the hypothesis that both vertical and lateral fluxes were responsible for landslide triggering during the Samo event, and confirm the utility of such models as tools for hazard planning and land management. (C) 2004 Elsevier B.V. All rights reserved.

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