Coordinated Autonomous Drones for Human-Centered Fire Evacuation in Partially Observable Urban Environments
Maria G. Mendoza, Addison Kalanther, Daniel Bostwick, Emma Stephan, Chinmay Maheshwari, Shankar Sastry

TL;DR
This paper introduces a multi-agent UAV coordination framework using POMDPs and psychological human behavior models to improve real-time fire evacuation guidance in complex urban environments.
Contribution
It presents a novel multi-agent coordination approach with psychological modeling for UAV-assisted human evacuation under uncertainty.
Findings
UAV team rapidly locates and intercepts evacuees
Significantly reduces evacuation time with UAV assistance
Effective decision-making in partially observable, dynamic environments
Abstract
Autonomous drone technology holds significant promise for enhancing search and rescue operations during evacuations by guiding humans toward safety and supporting broader emergency response efforts. However, their application in dynamic, real-time evacuation support remains limited. Existing models often overlook the psychological and emotional complexity of human behavior under extreme stress. In real-world fire scenarios, evacuees frequently deviate from designated safe routes due to panic and uncertainty. To address these challenges, this paper presents a multi-agent coordination framework in which autonomous Unmanned Aerial Vehicles (UAVs) assist human evacuees in real-time by locating, intercepting, and guiding them to safety under uncertain conditions. We model the problem as a Partially Observable Markov Decision Process (POMDP), where two heterogeneous UAV agents, a high-level…
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