A Seismic Data Management and Mining System

نویسندگان

  • Sotiris Brakatsoulas
  • Yannis Theodoridis
چکیده

A Seismic Data Management System should meet certain requirements implied by the nature of seismic data. This kind of data is not solely characterized by alphanumeric attributes but also from a spatial and a temporal dimension (the epicenter and the time of earthquake realization, respectively). Moreover, visualizing areas of interest, monitoring seismicity, finding hidden regularities, and assisting to the understanding of regional historic seismic profiles are essential capabilities of such a system. Thus, a spatiotemporal DBMS, a user-friendly visualization system, and a set of data analysis and knowledge discovery techniques compose, to our opinion, a so-called Seismic Data Management and Mining System (SDMMS). In this paper, we describe SDMMS requirements and present a prototype that, further to the above, aims to integrate seismic data repositories available over the WWW.

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تاریخ انتشار 2001