Sentinel-1 P-SBAS data for the update of the state of activity of national landslide inventory maps

The redaction of landslide inventory is a fundamental task for risk management and territorial planning activities. The availability of synthetic aperture radar imagery, especially after the launch of Sentinel-1 mission, enables to systematically update landslide inventories covering wide areas in a...

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Veröffentlicht in:Landslides 2023-05, Vol.20 (5), p.1083-1097
Hauptverfasser: Confuorto, Pierluigi, Casagli, Nicola, Casu, Francesco, De Luca, Claudio, Del Soldato, Matteo, Festa, Davide, Lanari, Riccardo, Manzo, Mariarosaria, Onorato, Giovanni, Raspini, Federico
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container_issue 5
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container_title Landslides
container_volume 20
creator Confuorto, Pierluigi
Casagli, Nicola
Casu, Francesco
De Luca, Claudio
Del Soldato, Matteo
Festa, Davide
Lanari, Riccardo
Manzo, Mariarosaria
Onorato, Giovanni
Raspini, Federico
description The redaction of landslide inventory is a fundamental task for risk management and territorial planning activities. The availability of synthetic aperture radar imagery, especially after the launch of Sentinel-1 mission, enables to systematically update landslide inventories covering wide areas in a reduced time frame and at different scales of analysis. In this work, SAR data processed from the fully automatic P-SBAS pipeline have been adopted to update the Italian national landslide database. Specifically, a matrix has been introduced by comparing past landslide state of activity obtained with Envisat data (2003–2010) and that computed with Sentinel-1 (2014–2018). The state of activity was defined by obtaining the projected velocity along the slope dip direction. The analysis involved about 56,000 landslides which showed at least one Sentinel-1 measurement point, of which 74% were classified as dormant, having annual average velocity  7 mm/year). Furthermore, a landslide reliability matrix was introduced on the landslide inventory updated with S1 data, using the measurement point (MP) density within each landslide and the standard deviation of the mean V slope value of each landslide. In this case, the analysis revealed that more than 80% of landslides has values of reliability from average to very high. Finally, the 2D horizontal and vertical components were computed to characterize magnitude and direction of every type of landslides included in this work, showing that spreadings, deep-seated gravitation slope deformations, and slow flows showed a main horizontal movement, while complex and translational/rotational slides had more heterogeneity in terms of deformation direction. Hence, the work demonstrated that the application of fast and automatically nationwide Sentinel-1 MTInSAR (multi-temporal interferometry SAR) may provide a fundamental aid for landslide inventory update.
doi_str_mv 10.1007/s10346-022-02024-0
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Furthermore, a landslide reliability matrix was introduced on the landslide inventory updated with S1 data, using the measurement point (MP) density within each landslide and the standard deviation of the mean V slope value of each landslide. In this case, the analysis revealed that more than 80% of landslides has values of reliability from average to very high. Finally, the 2D horizontal and vertical components were computed to characterize magnitude and direction of every type of landslides included in this work, showing that spreadings, deep-seated gravitation slope deformations, and slow flows showed a main horizontal movement, while complex and translational/rotational slides had more heterogeneity in terms of deformation direction. 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subjects Agriculture
Analysis
Average velocity
Civil Engineering
Computation
Deformation
Direction
Dormancy
Earth and Environmental Science
Earth Sciences
Fluid flow
Geography
Gravitation
Heterogeneity
Interferometry
Landslides
Landslides & mudslides
Mean
Measurement
Natural Hazards
Radar imagery
Radar imaging
Reliability
Risk management
SAR (radar)
Slopes
Standard deviation
Synthetic aperture radar
Technical Note
Velocity
title Sentinel-1 P-SBAS data for the update of the state of activity of national landslide inventory maps
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