Keywords: emergencies, decision making, threat response, multi-criteria optimization, mathematical modeling
UDC 332.012.2
DOI: 10.26102/2310-6018/2026.55.4.021
In modern conditions, due to the unstable economic and political situation around the world, emergencies of various natures are becoming more frequent and large-scale phenomena. This is caused both by natural factors and man-made reasons, as well as by deliberate actions resulting from conflicts and sabotage, which necessitates the improvement of rapid response methods. Consequently, the relevance of developing automated decision support systems for effectively countering contemporary challenges and threats in the field of emergency consequence management is increasing. This paper describes a methodology for the effective management of a set of works and measures for emergency response, based on multi-criteria optimization methods. The following were chosen as optimization criteria: efficiency or the ability to complete assigned tasks in the shortest possible time, availability or the ability to provide resources for all work being carried out in the required volume, and information content or the implementation of measures to ensure up-to-date and objective information about the current situation. Three models for conducting optimization and obtaining a Pareto-optimal solution are considered: the generalized objective function method, the criterion constraints method, and the method of successive concessions. The article provides the mathematical formulation and description of the models and presents an algorithm for selecting a model for different conditions.
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Keywords: emergencies, decision making, threat response, multi-criteria optimization, mathematical modeling
For citation: Barkalov S.A., Bekirova O.N., Vtornikova Y.A. Methodology for managing the emergency response process based on multi-criteria optimization methods. Modeling, Optimization and Information Technology. 2026;14(4). URL: https://moitvivt.ru/ru/journal/article?id=2224 DOI: 10.26102/2310-6018/2026.55.4.021 (In Russ).
© Barkalov S.A., Bekirova O.N., Vtornikova Y.A. Статья опубликована на условиях лицензии Creative Commons Attribution-NonCommercial 4.0 International (CC BY-NS 4.0)Received 10.03.2026
Revised 09.04.2026
Accepted 14.04.2026
Published 30.04.2026