2017
DOI: 10.1002/2016jb013452
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Source characteristics of the 2015 Mw6.5 Lefkada, Greece, strike‐slip earthquake

Abstract: We present a kinematic slip model from the inversion of 1 Hz GPS, strong motion, and interferometric synthetic aperture radar (InSAR) data for the 2015 Mw6.5 Lefkada, Greece, earthquake. We will show that most of the slip during this event is updip of the hypocenter (10.7 km depth) with substantial slip (>0.5 m) between 5 km depth and the surface. The peak slip is ~1.6 m, and the inverted rake angles show predominantly strike‐slip motion. Slip concentrates mostly to the south of the hypocenter, and the source … Show more

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Cited by 26 publications
(17 citation statements)
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“…The projection of the three components of GPS measurements into the LoS of every InSAR dataset confirmed a disagreement between the GPS projected values and the InSAR results. In fact, the GPS and InSAR inconsistency is not surprising and it was already observed [11]. While we cannot exclude potential sources of error, this divergence could be attributed, as also stated by Melgar et al [11], to early afterslip signal contained in InSAR maps, taking into account that the InSAR data include few days of possible slow deformations after the mainshock [7,8,11].…”
Section: Single Fault Modelmentioning
confidence: 58%
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“…The projection of the three components of GPS measurements into the LoS of every InSAR dataset confirmed a disagreement between the GPS projected values and the InSAR results. In fact, the GPS and InSAR inconsistency is not surprising and it was already observed [11]. While we cannot exclude potential sources of error, this divergence could be attributed, as also stated by Melgar et al [11], to early afterslip signal contained in InSAR maps, taking into account that the InSAR data include few days of possible slow deformations after the mainshock [7,8,11].…”
Section: Single Fault Modelmentioning
confidence: 58%
“…In fact, the GPS and InSAR inconsistency is not surprising and it was already observed [11]. While we cannot exclude potential sources of error, this divergence could be attributed, as also stated by Melgar et al [11], to early afterslip signal contained in InSAR maps, taking into account that the InSAR data include few days of possible slow deformations after the mainshock [7,8,11]. It is thus possible that our dataset contains postseismic signal; the InSAR input is, of course, still essential since our goal is to define the fault segmentation of the area.…”
Section: Single Fault Modelmentioning
confidence: 83%
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“…Over the last twenty (20) years, displacements from Global Navigation Satellite System (GNSS) data, specifically from Global Positioning System (GPS) have become a useful measurement in seismology and earthquake geology. Such data have been used to quantify the intensity of ground deformation following strong earthquakes, to infer the geometry and kinematics of the seismic fault in case of "blind" ruptures as well as to contribute to fault inversion models (Ganas et al, 2009;2013;Hreinsdottir et al 2009;Devoti et al 2012;Saltogianni et al, 2015; Briole et al 2015;Chousianitis et al, 2016;Avallone et al, 2017;Melgar et al, 2017;Howell et al, 2017;Chousianitis, and Konca, 2018).…”
Section: Gnss Data For Ground Displacementsmentioning
confidence: 99%
“…Accordingly, GNSS technology is widely used in earthquake source studies where it is usually inverted on its own, or jointly with other geophysical data sets (e.g. InSAR, seismology), to image the kinematic source process of M6+ events (Huang et al 2013;Chousianitis et al, 2016;Melgar et al, 2017;Avallone et al, 2017). High-rate GNSS has also been employed in studies of long-period ground motions, and in structural monitoring (Moschas and Stiros, 2011;2014).…”
Section: Gnss Data For Ground Displacementsmentioning
confidence: 99%