Volume 7, Issue 1 920136 pp. 1-5
Article
Open Access

Elastic neural net for the earthquake epicenter search

I. Antoniou

Corresponding Author

I. Antoniou

lnternational Solvay Institutes for Physics and Chemistry CP-231 ULB Bd. du Triomphe Brussels 1050, Belgium , solvayinstitutes.be

Theoretische Natuurkunde Free University of Brussels Brussels, Belgium , ulb.ac.be

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V. V. Ivanov

V. V. Ivanov

lnternational Solvay Institutes for Physics and Chemistry CP-231 ULB Bd. du Triomphe Brussels 1050, Belgium , solvayinstitutes.be

Joint Institute for Nuclear Research Dubna 141980, Russia , jinr.ru

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I. V. Kisel

I. V. Kisel

Joint Institute for Nuclear Research Dubna 141980, Russia , jinr.ru

Max-Planck-Institut für Physik München Werner Heisenberg Institut Föringer Ring 6 Munich D-80805, Germany , mppmu.mpg.de

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First published: 01 January 2002

Abstract

Automatic processing of seismic data is today a key element in the efforts to achieve high quality seismic systems. Automated procedures for locating seismic events with a network including arrays and single element seismometers usually incorporate back-azimuth estimates, arrival-time data, and associated uncertainties into a least-squares-inverse location algorithm. Such an algorithm is quite cumbersome and requires expanding a set of non-linear equations in a Taylor series. Second-order terms usually not included in the algorithm can be important if the initial estimate is far from the solution.

We propose to use elastic neural nets (ENN) to find the initial estimation in automated procedures of locating seismic events and discuss the results for simulated seismic events. The advantages of ENN are the simplicity of the algorithm, the fast convergence and the high efficiency.

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