Please use this identifier to cite or link to this item: http://hdl.handle.net/2122/11141
Authors: Tusa, Giuseppina* 
Musumeci, Carla* 
Patanè, Domenico* 
Title: Estimation of Earthquake Early Warning Parameters for Eastern Sicily
Journal: Bulletin of the Seismological Society of America 
Series/Report no.: /107 (2017)
Issue Date: 2017
DOI: 10.1785/0120160247
Keywords: Earthquake
early warning systems
Abstract: Earthquake early warning systems (EEWSs) are becoming a suitable instrument for seismic risk management in real time. In fact, they are implemented or are undergoing testing in many countries around the world because EEWSs represent an effective approach to mitigating seismic risk on a short timescale. EEWSs are based on the use of relationships between some parameters measured on the initial portion of seismic signal after the onsets. Here, we address the first approach to the implementation of EEWS in eastern Sicily, a region that has been hit by several destructive earthquakes. We estimated the peak displacement amplitude of the first portion of P and S waves Pd, the ground-motion period parameter τc, and the peak ground velocity (PGV) from earthquakes with ML ≥2:8 recorded by the broadband stations operated by the Istituto Nazionale di Geofisica e Vulcanologia. We found that the Pd is correlated with the size of the earthquake and may be used to compute the magnitude for an EEWS in this area.We also derived the relationships between τc and ML, and between Pd and PGV, which can be used to provide on-site warning in the area around a given station and to evaluate the potential damaging effects. These relationships may be deemed a useful guide for future implementation of the EEWS in the region.
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