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Main Authors: Chen, Weichao, Yu, Xiaoyi, Shang, Longbo, Xi, Jiange, Jin, Bo, Zhao, Shengjie
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.16131
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author Chen, Weichao
Yu, Xiaoyi
Shang, Longbo
Xi, Jiange
Jin, Bo
Zhao, Shengjie
author_facet Chen, Weichao
Yu, Xiaoyi
Shang, Longbo
Xi, Jiange
Jin, Bo
Zhao, Shengjie
contents Nowadays, traffic management in urban areas is one of the major economic problems. In particular, when faced with emergency situations like firefighting, timely and efficient traffic dispatching is crucial. Intelligent coordination between multiple departments is essential to realize efficient emergency rescue. In this demo, we present a framework that integrates techniques for collaborative learning methods into the well-known Unity Engine simulator, and thus these techniques can be evaluated in realistic settings. In particular, the framework allows flexible settings such as the number and type of collaborative agents, learning strategies, reward functions, and constraint conditions in practice. The framework is evaluated for an emergency rescue scenario, which could be used as a simulation tool for urban emergency departments.
format Preprint
id arxiv_https___arxiv_org_abs_2502_16131
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Urban Emergency Rescue Based on Multi-Agent Collaborative Learning: Coordination Between Fire Engines and Traffic Lights
Chen, Weichao
Yu, Xiaoyi
Shang, Longbo
Xi, Jiange
Jin, Bo
Zhao, Shengjie
Multiagent Systems
Computer Science and Game Theory
Nowadays, traffic management in urban areas is one of the major economic problems. In particular, when faced with emergency situations like firefighting, timely and efficient traffic dispatching is crucial. Intelligent coordination between multiple departments is essential to realize efficient emergency rescue. In this demo, we present a framework that integrates techniques for collaborative learning methods into the well-known Unity Engine simulator, and thus these techniques can be evaluated in realistic settings. In particular, the framework allows flexible settings such as the number and type of collaborative agents, learning strategies, reward functions, and constraint conditions in practice. The framework is evaluated for an emergency rescue scenario, which could be used as a simulation tool for urban emergency departments.
title Urban Emergency Rescue Based on Multi-Agent Collaborative Learning: Coordination Between Fire Engines and Traffic Lights
topic Multiagent Systems
Computer Science and Game Theory
url https://arxiv.org/abs/2502.16131