GIS-based 3D modelling for landslide hazard assessment:

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GIS-based 3D modelling for landslide hazard assessment:. Séverine Bilgot Aurèle Parriaux. Increasing the objectivity of hazard maps. . Introduction. 6% of the Swiss territory affected by landslides Occurrences and potential damages always increasing - PowerPoint PPT Presentation

Transcript of GIS-based 3D modelling for landslide hazard assessment:

GIS-based 3D modelling forlandslide hazard assessment:

Séverine BilgotAurèle Parriaux

Increasing the objectivity of hazard maps.

2

Introduction

6% of the Swiss territory affected by landslides

Occurrences and potential damages always increasing

Necessity to have objective and easy to update hazard maps

3

Identification of susceptibility factors

Intrinsic factors: Resisting forces

Cohesion Friction (depends on g, a,

j) g, c, j

For rock material: =f(geotype, grade, D, GSI)

For loose material: =f(granulometry, plasticity)

4

Identification of susceptibility factors

Intrinsic factors: Resisting forces

Cohesion Friction (depends on g, a,

j)

Driving forces Gravity (depends on g, a) Percolation (depends on i)

i= grad h

Measured piezometric level (boreholes, springs, etc)

Spatial distribution of K

5

Identification of susceptibility factors

Extrinsic factors: Vegetation

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Identification of susceptibility factors

Extrinsic factors: Vegetation

Permafrost melting Depending on:

Location (altitude, aspect)

Susceptibility of the formation =f(granulometry, plasticity)

7

Identification of susceptibility factors

Extrinsic factors: Vegetation

Permafrost melting

Anthropic impact

8

Methodology

Factor of safety

Hazard map

Pre-existingdata

Fielddata+

Hydraulicgradient

Predisposition map

3D parametersmodel

9

Methodology

Hazard map

Pre-existingdata

Fielddata+

Hydraulicgradient

Predisposition mapFactor of

safety

3D parametersmodel

10

Integration of pre-existing data

Collecting datafrom previous

projects

Integrating them in a geodatabase

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Field mapping Phenomena Geology

Discontinuities Formations Fracturation, grade and GSI Granulometry and plasticity

Hydrology Springs and wet areas Supposed associated aquifer

Vegetation Structures

12

Methodology

3D parametersmodel

Hazard map

Pre-existingdata

Fielddata+

Hydraulicgradient

Predisposition mapFactor of

safety

13

3D parameters model

Determination of the 3D limits of the structural units

Kriging of the dips and strikes in each structural units

Modelling the rock formations with respect to field observation, boreholes information, profiles and dip and strike interpolation

Modelling the loose formations with respect to field observation, boreholes information, profiles and modelled rock formations

Kriging of the parameters inside each polygone or using the database

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3D parameters model

15

Methodology

Hazard map

Pre-existingdata

Fielddata+

Hydraulicgradient

Predisposition mapFactor of

safety

3D parametersmodel

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Hydraulic gradient evaluation

Connecting each piezometric level, spring or wet area to the corresponding aquifer

Evaluating the geometry of each aquifer according to the repartition of K in the model

Interpolating the hydraulic head in each aquifer

Calculating the hydraulic gradient

17

Methodology

Hazard map

Pre-existingdata

Fielddata+

Hydraulicgradient

Predisposition mapFactor of

safety

3D parametersmodel

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3D factor of safety calculation

Calculation of the FoS at each sliding level indicated on boreholes

For each (x,y) couple, calculation of the FoS at each intersection with faults

For each (x,y) without calculated FoS < 1, calculation of the FoS at each z step, keeping the lowest value

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Methodology

Predisposition map

Hazard map

Pre-existingdata

Fielddata+

Hydraulicgradient

Factor of safety

3D parametersmodel

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Predisposition map

Applying bayesian probability model to evaluate the weight of frozen soil, vegetation and anthropic infrastructures in the susceptibility to landslides

Calculating the predisposition map

Verifying the coherence of the predisposition map with respect to the map of phenomena

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Methodology

Hazard map

Pre-existingdata

Fielddata+

Hydraulicgradient

Predisposition mapFactor of

safety

3D parametersmodel

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Hazard map

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Conclusion: at local scale

Applicable on most of instable areas (already tested on 10 sites in Switzerland and 2 in Kyrgyzstan)

Allows full transparency of the results and easy updates Data can be easily re-used (high interoperability) Only one common software to use Toolboxes can be used separately in other domains

(natural resources management, tunnel engineering, etc)

In order to reduce the costs and to provide better results, development of equivalent plugins for GRASS (in progress)

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Indicative maps

Data infrastructure and standardize process allows to change the scale easily

Methodology applicable at larger scale with simple Quaternary structures (without lenses): Using boreholes data and databases to evaluate the

parameters Using geoportals and aerial photographies for maps

of phenomena, vegetation and anthropic impact

Thank you for your

attention!

severine.bilgot@epfl.ch