Друк

Adaptive routing for subway passenger evacuation

 

Bashynskyi Oleh

Lviv State University of Life Safety

https://orcid.org/0000-0002-0243-7519

 

Peleshko Marta

Lviv State University of Life Safety

https://orcid.org/0000-0002-9315-1590

 

Beseda Andrii

Lviv State University of Life Safety

https://orcid.org/0009-0004-6252-1431

 

Ketsmur Rostyslav

Lviv State University of Life Safety

https://orcid.org/0009-0000-5602-8000

 

DOI: https://doi.org/10.52363/2524-0226-2026-43-8

 

Keywords: subway, evacuation, emergency, routing, artificial intelligence, graph modeling, passenger flow

 

Аnnotation

 

The article explores approaches to modeling the evacuation of people from the subway in com-bined emergency situations and demonstrates an example of using artificial intelligence support to select an evacuation route. The relevance of the topic is due to the fact that the subway combines high passenger density, a closed underground space, and dependence on narrow elements of the evac-uation infrastructure. For Ukraine, this problem acquires additional importance, since metro stations are used not only as transport facilities, but also as shelters during military threats. The purpose of the study is to generalize modern approaches to modeling the evacuation of subway passengers in com-bined emergency situations and demonstrate a scenario in which the artificial intelligence approach to route selection is compared with a static evacuation scheme. Methodologically, the study combines the analysis of scientific papers with demonstration graph modeling in the Google Colab environment using Python. The metro station is presented as a weighted graph, in which the length, conditional hazard index, and throughput are given for each section. Two scenarios were implemented: evacua-tion without artificial intelligence, where the route was determined by the shortest path length, and a scenario with artificial intelligence support, where the route selection was carried out taking into ac-count the risk and current load on the sections. As a result, it was found that under a static scheme, passenger flow is concentrated on a shorter but riskier route, while the adaptive approach allows you to redirect traffic to bypass the dangerous zone. In the scenario with artificial intelligence support, the average risk index decreased from 9.0 to 1.2, the number of passengers in the risk zone decreased from 60 to 0, and the overload factor of the critical section decreased from 5.0 to 2.4. At the same time, the average route length increased from 3.0 to 4.4. It is concluded that even simplified AI-supported modeling reveals the benefits of adaptive routing in the context of combined threats in the metro.

 

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Received by the editorial board: 10.03.2026

Accepted for publication: 13.04.2026

Date of publication (release): 30.05.2026