LiDAR Data and HRSI to Evaluate the Mitigating Effect of Forests into Rockfall Risk Analysis Using SOM: <i>Mt San Liberatore</i> Case Study

The aim of our work is to develop a methodology to identify the areas most prone to natural rockfall retention through the integrated use of remote sensing data. The area chosen as a case study is located in Campania (Italy) nearby <i>Mount San Liberatore</i>. In this area, which is itse...

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Main Authors: Antonella Ambrosino, Alessandro Di Benedetto, Margherita Fiani
Format: Article
Language:English
Published: MDPI AG 2023-09-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/15/18/4523
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author Antonella Ambrosino
Alessandro Di Benedetto
Margherita Fiani
author_facet Antonella Ambrosino
Alessandro Di Benedetto
Margherita Fiani
author_sort Antonella Ambrosino
collection DOAJ
description The aim of our work is to develop a methodology to identify the areas most prone to natural rockfall retention through the integrated use of remote sensing data. The area chosen as a case study is located in Campania (Italy) nearby <i>Mount San Liberatore</i>. In this area, which is itself geomorphologically predisposed to landslide risk, there are several rockfall risk hotspots, so defined because of the high exposed value constituted by an articulated infrastructure network located along the northwest slope of the mountain. The area is largely covered by dense vegetation, of which holm oak is the most representative type, characterized by a taproot apparatus that, giving it strength and stability, makes it an ideal tree for slope protection. Based on high-resolution multispectral satellite images, vegetation indices (VIs) were calculated to estimate health status, approximate age, average height, robustness, and vigor. Morphometric parameters suitable for describing slope dynamics were also calculated, derived from LiDAR data. The classification of areas with similar characteristics was carried out using Self-Organizing Maps. The results made it possible to identify all those areas where there is a greater contribution of protective forests in the mitigation of rockfall risk and, consequently, to identify areas to carry out a combined strengthening of protective actions.
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spelling doaj.art-4a39f91a14ec4045bde7378d94a11d712023-11-19T12:48:54ZengMDPI AGRemote Sensing2072-42922023-09-011518452310.3390/rs15184523LiDAR Data and HRSI to Evaluate the Mitigating Effect of Forests into Rockfall Risk Analysis Using SOM: <i>Mt San Liberatore</i> Case StudyAntonella Ambrosino0Alessandro Di Benedetto1Margherita Fiani2Department of Civil Engineering, University of Salerno, 84084 Fisciano, ItalyDepartment of Civil Engineering, University of Salerno, 84084 Fisciano, ItalyDepartment of Civil Engineering, University of Salerno, 84084 Fisciano, ItalyThe aim of our work is to develop a methodology to identify the areas most prone to natural rockfall retention through the integrated use of remote sensing data. The area chosen as a case study is located in Campania (Italy) nearby <i>Mount San Liberatore</i>. In this area, which is itself geomorphologically predisposed to landslide risk, there are several rockfall risk hotspots, so defined because of the high exposed value constituted by an articulated infrastructure network located along the northwest slope of the mountain. The area is largely covered by dense vegetation, of which holm oak is the most representative type, characterized by a taproot apparatus that, giving it strength and stability, makes it an ideal tree for slope protection. Based on high-resolution multispectral satellite images, vegetation indices (VIs) were calculated to estimate health status, approximate age, average height, robustness, and vigor. Morphometric parameters suitable for describing slope dynamics were also calculated, derived from LiDAR data. The classification of areas with similar characteristics was carried out using Self-Organizing Maps. The results made it possible to identify all those areas where there is a greater contribution of protective forests in the mitigation of rockfall risk and, consequently, to identify areas to carry out a combined strengthening of protective actions.https://www.mdpi.com/2072-4292/15/18/4523rockfallclassificationSOMLiDARmultispectral satellite imageDTM
spellingShingle Antonella Ambrosino
Alessandro Di Benedetto
Margherita Fiani
LiDAR Data and HRSI to Evaluate the Mitigating Effect of Forests into Rockfall Risk Analysis Using SOM: <i>Mt San Liberatore</i> Case Study
Remote Sensing
rockfall
classification
SOM
LiDAR
multispectral satellite image
DTM
title LiDAR Data and HRSI to Evaluate the Mitigating Effect of Forests into Rockfall Risk Analysis Using SOM: <i>Mt San Liberatore</i> Case Study
title_full LiDAR Data and HRSI to Evaluate the Mitigating Effect of Forests into Rockfall Risk Analysis Using SOM: <i>Mt San Liberatore</i> Case Study
title_fullStr LiDAR Data and HRSI to Evaluate the Mitigating Effect of Forests into Rockfall Risk Analysis Using SOM: <i>Mt San Liberatore</i> Case Study
title_full_unstemmed LiDAR Data and HRSI to Evaluate the Mitigating Effect of Forests into Rockfall Risk Analysis Using SOM: <i>Mt San Liberatore</i> Case Study
title_short LiDAR Data and HRSI to Evaluate the Mitigating Effect of Forests into Rockfall Risk Analysis Using SOM: <i>Mt San Liberatore</i> Case Study
title_sort lidar data and hrsi to evaluate the mitigating effect of forests into rockfall risk analysis using som i mt san liberatore i case study
topic rockfall
classification
SOM
LiDAR
multispectral satellite image
DTM
url https://www.mdpi.com/2072-4292/15/18/4523
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AT margheritafiani lidardataandhrsitoevaluatethemitigatingeffectofforestsintorockfallriskanalysisusingsomimtsanliberatoreicasestudy