2021
DOI: 10.48550/arxiv.2111.00278
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A Decentralized Reinforcement Learning Framework for Efficient Passage of Emergency Vehicles

Abstract: Emergency vehicles (EMVs) play a critical role in a city's response to time-critical events such as medical emergencies and fire outbreaks. The existing approaches to reduce EMV travel time employ route optimization and traffic signal pre-emption without accounting for the coupling between route these two subproblems. As a result, the planned route often becomes suboptimal. In addition, these approaches also do not focus on minimizing disruption to the overall traffic flow. To address these issues, we introduc… Show more

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