Please use this identifier to cite or link to this item: https://dspace.mnau.edu.ua/jspui/handle/123456789/24916
Title: Functional stability assessment and adaptation for critical infrastructure facilities
Authors: Передерій, В. І.
Perederyi, V. I.
Борчик, Євген Юрійович
Borchik, Yevhen
Zosimov, V. V.
Bulgakova, O. S.
Зосімов, В. В.
Булгакова, О. С.
Keywords: Bayesian trust networks
critical infrastructure facilities
xpert knowledge
functional stability
fuzzy knowledge base
human factor
hybrid intelligence
informationcognitive technologies
Issue Date: 2026
Citation: Perederyi V., Borchik E., Zosimov V., Bulgakova O. Functional stability assessment and adaptation for critical infrastructure facilities. Frontiers in Artificial Intelligence. 2026. Vol. 9. URL: https://doi.org/10.3389/frai.2026.1777258
Abstract: Introduction: Ensuring functional stability of critical infrastructure facilities (CIFs) under conditions of uncertainty and dynamic threats remains a critical challenge. Existing approaches insufficiently integrate technical, cybersecurity, and human-related factors.Methods: This study proposes an information-cognitive approach based on a hybrid model combining Bayesian Trust Networks and fuzzy logic. The model incorporates expert knowledge and evaluates the mutual influence of information security, cybersecurity, human factors, and vulnerability indicators. The Mamdani algorithm is used for probabilistic estimation under uncertainty.Results: Numerical experiments conducted in the GeNIe environment demonstrate that the proposed model effectively supports decision-making. Scenario analysis shows that adjusting key cybersecurity and vulnerability factors increases the probability of achieving sufficient functional stability above the critical threshold.Discussion: The proposed hybrid framework improves interpretability and adaptability of functional stability assessment. It enables flexible reasoning under uncertainty and supports real-time decision-making for critical infrastructure management. The approach can be applied across different categories of CIFs and extended with additional data-driven components.
URI: https://dspace.mnau.edu.ua/jspui/handle/123456789/24916
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