Please use this identifier to cite or link to this item: http://hdl.handle.net/2122/15445
Authors: De Novellis, Vincenzo* 
Reale, Diego* 
Adinolfi, Guido Maria* 
Sansosti, Eugenio* 
Convertito, Vincenzo* 
Title: Geodetic Model of the March 2021 Thessaly Seismic Sequence Inferred from Seismological and InSAR Data
Journal: Remote Sensing 
Series/Report no.: /13 (2021)
Publisher: MDPI
Issue Date: 2021
DOI: 10.3390/rs13173410
URL: https://www.mdpi.com/2072-4292/13/17/3410
Abstract: In this work, we propose a geodetic model for the March 2021 Thessaly seismic sequence (TSS). We used the interferometric synthetic aperture radar (InSAR) technique and exploited a dataset of Sentinel-1 images to successfully detect the surface deformation caused by three major events of the sequence and constrain their kinematics, further strengthened by seismic data analysis. Our geodetic inversions are consistent with the activation of distinct blind faults previously unknown in this region: three belonging to the NE-dipping normal fault associated with the Mw 6.3 and Mw 6.0 events, and one belonging to the SW-dipping normal fault associated with the Mw 5.6, the last TSS major event. We performed a Coulomb stress transfer analysis and a 1D pore pressure diffusivity modeling to investigate the space–time evolution of the sequence; our results indicate that the seismic sequence developed in a sort of domino effect. The combination of the lack of historical records of large earthquakes in this area and the absence of mapped surface features produced by past faulting make seismic hazard estimation difficult for this area: InSAR data analysis and modeling have proven to be an extremely useful tool in helping to constrain the rupture characteristics.
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