Generating Emergency Evacuation Route Directions Based on Crowd Simulations with Reinforcement Learning

Abstract

In an emergency, it is vital to evacuate individuals from the dangerous environments. Emergency evacuation planning ensures that the evacuation is safe and optimal in terms of evacuation time for all of the people in evacuation. To this end, the computer-enabled evacuation simulation systems are used to generate optimal routes for the evacuees. In this paper, a dynamic emergency evacuation route generator has been proposed based on indoor plans of the building and the locations of the evacuees. To generate the optimal routes in real-time, a reinforcement learning algorithm (proximal policy optimization) is presented. Comparative performance results show that the proposed model is successful for evacuating the individuals from the building in different scenarios.

Description

Keywords

emergency evacuation, crowd simulation, path planning, reinforcement learning, deep learning

Turkish CoHE Thesis Center URL

Citation

WoS Q

Scopus Q

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Issue

Start Page

1

End Page

6