1887

Abstract

Summary

Territorially distributed facilities of the Main Centre of special monitoring (MCSM), carry out a number of geophysical monitoring tasks, one of which is the monitoring of man-made events at the territory of Ukraine. The result of the monitoring is a reliable determination of the parameters of geophysical phenomena, calculation of the consequences of the recorded events and timely provision of the information product to the state authorities. A number of methods and algorithms can be applied in every step of processing of geophysical information in operational and analytical work. The purpose of the work is to analyze and select the optimal method of data processing, taking into account the fact of processing information in real time. It has been shown that neural networks, which have a large number of reference signals, have preference at the stage of event recognition.

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/content/papers/10.3997/2214-4609.201903191
2019-11-12
2024-04-29
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