A.V. Skatkov1, Yu.V. Doronina2, A.M. Skatkov3
1Institute of Natural and Technical Systems, RF, Sevastopol, Lenin St., 28
2Sevastopol State University, RF, Sevastopol, Universitetskaya St., 33
3St. Petersburg State Electrotechnical University “LETI” named after V.I. Ulyanov (Lenin),
RF, St. Petersburg, Professor Popov St., 5
E-mail: YVDoronina@sevsu.ru
DOI: 10.33075/2220-5861-2025-1-129-140
UDC 519.8
EDN: https://elibrary.ru/tldpls
Abstract:
The article focuses on solving the problem of resource allocation and management in monitoring systems. A state model is constructed that has a three-level structure (according to the types of failures of the monitoring system elements) and takes into account the features of the model, which consist in a step-by-step analysis of failures of each type, up to a complete functional failure of the system. Using the proposed stationary coefficient of functional readiness based on four types of readiness of monitoring systems (in conjunction with the levels of availability of recovery facilities), modeling is carried out and their effect on preventing failures and ensuring continuous operation of the monitoring process is investigated. An information technology is proposed that makes it possible to effectively assess the stationary coefficient of functional readiness of monitoring systems, on the basis of which an approach is formed to allocate resources related to both individual components of the monitoring system and the overall resource availability, which will make it possible to make informed decisions on their allocation and increase the time the system stays in working conditions.
Keywords: monitoring system, information approach, stationary functional readiness coefficient, state model, decision support system
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