Research on the Evacuation of Passenger Flow at Commercial Block Stations under Emergencies Based on Pathfinder
DOI:
https://doi.org/10.54097/hset.v16i.2602Keywords:
Passenger Evacuation, Simulation Models, Pathfinder.Abstract
Metro stations are small and closed. In the event of an emergency, it is easy to cause casualties and property damage. Pathfinder simulation software is used to simulate the evacuation of passenger flows under different operating conditions. Study the impact of factors such as exits, business districts, and train entry on evacuation times. This is of great significance for improving evacuation capacity and ensuring the safety of people's lives and property.
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