UDC 303.444
1 Scientific and Research Institute of Military Intelligence, Kyiv, Ukraine
komarvlad@ukr.net
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3 Scientific and Research Institute of Military Intelligence, Kyiv, Ukraine
voleksiyk@ukr.net
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METHODOLOGICAL APPROACH TO IDENTIFICATION OF MONITORING OBJECTS
Abstract. A methodological approach to identification of monitoring objects, based on the results of theoretical and applied research, is developed. Its practical application makes it possible to calculate the adjustment factors of the integrated criterion for determining the importance and informativeness of the monitoring features and to determine the most efficient version of the set of technical means of monitoring of the relevant sources (objects) of monitoring.
Keywords: monitoring feature, technical monitoring tool, signature, monitoring features priority.
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