A Multivariate Time Series Analysis of Ground Deformation Using Persistent Scatterer Interferometry

Ground deformations in urban areas can be the result of a combination of multiple factors and pose several hazards to infrastructures and human lives. In order to monitor these phenomena, Interferometric Synthetic Aperture Radar (InSAR) techniques are applied. The obtained signals record the overlap...

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Main Authors: Serena Rigamonti, Giuseppe Dattola, Paolo Frattini, Giovanni Battista Crosta
Format: Article
Language:English
Published: MDPI AG 2023-06-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/15/12/3082
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author Serena Rigamonti
Giuseppe Dattola
Paolo Frattini
Giovanni Battista Crosta
author_facet Serena Rigamonti
Giuseppe Dattola
Paolo Frattini
Giovanni Battista Crosta
author_sort Serena Rigamonti
collection DOAJ
description Ground deformations in urban areas can be the result of a combination of multiple factors and pose several hazards to infrastructures and human lives. In order to monitor these phenomena, Interferometric Synthetic Aperture Radar (InSAR) techniques are applied. The obtained signals record the overlapping of the phenomena, and their separation is a relevant issue. In this framework, we explored a new multi-method approach based on the combination of Principal Component Analysis (PCA), Independent Component Analysis (ICA) and Hierarchal Clustering (HC) on the standardized results to distinguish the main trends and seasonal signals embedded in the time series of ground displacements, to understand spatial-temporal patterns, to correlate ground deformation phenomena with geological and anthropogenic factors, and to recognize the specific footprints of different ground deformation phenomena. This method allows us to classify the ground deformations at the site scale in the metropolitan area of Naples, which is affected by uplift cycles, subsidence, cavity instabilities and sinkholes. At the local scale, the results allow a kinematic classification using the extracted components and considering the effect of the radius of influence generated by each cavity, as it is performed from a theoretical point of view when the draw angle is considered. According to the results, among the classified cavities, 2% were assigned to subsidence and 11% to uplift kinematics, while the remaining were found to be stable. Furthermore, our results show that the centering of the Spatial-PCA (S-PCA) is representative of the region’s main trend, whereas Temporal-PCA (T-PCA) gives information about the displacement rates identified by each component.
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spelling doaj.art-21b7b83141954e46b72ab9188712e6c12023-11-18T12:26:09ZengMDPI AGRemote Sensing2072-42922023-06-011512308210.3390/rs15123082A Multivariate Time Series Analysis of Ground Deformation Using Persistent Scatterer InterferometrySerena Rigamonti0Giuseppe Dattola1Paolo Frattini2Giovanni Battista Crosta3Department of Earth and Environmental Sciences (DISAT), University of Milano-Bicocca, 20126 Milano, ItalyDepartment of Earth and Environmental Sciences (DISAT), University of Milano-Bicocca, 20126 Milano, ItalyDepartment of Earth and Environmental Sciences (DISAT), University of Milano-Bicocca, 20126 Milano, ItalyDepartment of Earth and Environmental Sciences (DISAT), University of Milano-Bicocca, 20126 Milano, ItalyGround deformations in urban areas can be the result of a combination of multiple factors and pose several hazards to infrastructures and human lives. In order to monitor these phenomena, Interferometric Synthetic Aperture Radar (InSAR) techniques are applied. The obtained signals record the overlapping of the phenomena, and their separation is a relevant issue. In this framework, we explored a new multi-method approach based on the combination of Principal Component Analysis (PCA), Independent Component Analysis (ICA) and Hierarchal Clustering (HC) on the standardized results to distinguish the main trends and seasonal signals embedded in the time series of ground displacements, to understand spatial-temporal patterns, to correlate ground deformation phenomena with geological and anthropogenic factors, and to recognize the specific footprints of different ground deformation phenomena. This method allows us to classify the ground deformations at the site scale in the metropolitan area of Naples, which is affected by uplift cycles, subsidence, cavity instabilities and sinkholes. At the local scale, the results allow a kinematic classification using the extracted components and considering the effect of the radius of influence generated by each cavity, as it is performed from a theoretical point of view when the draw angle is considered. According to the results, among the classified cavities, 2% were assigned to subsidence and 11% to uplift kinematics, while the remaining were found to be stable. Furthermore, our results show that the centering of the Spatial-PCA (S-PCA) is representative of the region’s main trend, whereas Temporal-PCA (T-PCA) gives information about the displacement rates identified by each component.https://www.mdpi.com/2072-4292/15/12/3082InSARGround deformationSubsidencePCAICAHierarchical Clustering
spellingShingle Serena Rigamonti
Giuseppe Dattola
Paolo Frattini
Giovanni Battista Crosta
A Multivariate Time Series Analysis of Ground Deformation Using Persistent Scatterer Interferometry
Remote Sensing
InSAR
Ground deformation
Subsidence
PCA
ICA
Hierarchical Clustering
title A Multivariate Time Series Analysis of Ground Deformation Using Persistent Scatterer Interferometry
title_full A Multivariate Time Series Analysis of Ground Deformation Using Persistent Scatterer Interferometry
title_fullStr A Multivariate Time Series Analysis of Ground Deformation Using Persistent Scatterer Interferometry
title_full_unstemmed A Multivariate Time Series Analysis of Ground Deformation Using Persistent Scatterer Interferometry
title_short A Multivariate Time Series Analysis of Ground Deformation Using Persistent Scatterer Interferometry
title_sort multivariate time series analysis of ground deformation using persistent scatterer interferometry
topic InSAR
Ground deformation
Subsidence
PCA
ICA
Hierarchical Clustering
url https://www.mdpi.com/2072-4292/15/12/3082
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