OPTIMIZATION OF EQUIPMENT RESERVE FOR INTELLECTUAL AUTOMATED SYSTEMS

Authors

DOI:

https://doi.org/10.28925/2663-4023.2021.14.8799

Keywords:

Smart City; intelligent automated control system; equipment reserve; algorithm; optimization

Abstract

Algorithms for a neural network analyzer involved in the decision support system (DSS) during the selection of the composition of backup equipment (CBE) for intelligent automated control systems Smart City are proposed. A model, algorithms and software have been developed for solving the optimization problem of choosing a CBE capable of ensuring the uninterrupted operation of the IACS both in conditions of technological failures and in conditions of destructive interference in the operation of the IACS by the attackers. The proposed solutions help to reduce the cost of determining the optimal CBE for IACS by 15–17% in comparison with the results of known calculation methods. The results of computational experiments to study the degree of influence of the outputs of the neural network analyzer on the efficiency of the functioning of the CBE for IACS are presented.

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Published

2021-12-30

How to Cite

Chubaievskyi, V., Lakhno, V. ., Akhmetov, B. ., Kryvoruchko, O., Kasatkin, D., Desiatko, A. ., & Litovchenko, T. . (2021). OPTIMIZATION OF EQUIPMENT RESERVE FOR INTELLECTUAL AUTOMATED SYSTEMS. Electronic Professional Scientific Journal «Cybersecurity: Education, Science, Technique», 2(14), 87–99. https://doi.org/10.28925/2663-4023.2021.14.8799

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