GIS-Oriented Database on Seismic Hazard Assessment for Caucasian and Crimean Regions
Abstract
Zones of higher seismic hazard occupy about 20% of Russia’s territory, and 5% are characterized by extremely high hazard. These latter are, in particular, regions of Caucasus and Crimea with an aggregate population of about 15 M people. In order to assess seismic hazard and to minimize the consequences of possible earthquakes in these regions, a special-purpose database has been created for these regions; this database and a multifunctional user interface for its operation are currently being developed. For the first time, one software environment has integrated the most complete results on recognizing zones of higher seismicity by independent methods and the initial data on which the recognition was based. Thus, the system allows integrated multi-criteria seismic hazard assessment in a given region. The use of a modern geographic informational system (GIS) has made the preparation, organization, and analysis of these data considerably easier. The GIS makes it possible on the basis of a comprehensive approach to seismic hazard assessment to group and visualize the respective data in an interactive map. The analytical and interactive query tools integrated in the GIS allow a user to assess the degree of risk in regions under consideration based on different criteria and methods. The seismic hazard assessment database and its user interface were achieved using ESRI ArcGIS software, which completely satisfies the scaling requirement in terms of both functionality and data volume.
Keywords:
GIS seismic hazard pattern recognition geoprocessing instruments geospatial database system analysisNotes
ACKNOWLEDGMENTS
Facilities of the Center of Collective Use “Analytical Center of Geomagnetic Data” based at GC RAS were used in the research. The work was carried out in the framework of a State Contract from the Ministry of Science and Higher Education of the Russian Federation.
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