Distributed Real-Time Vehicle Control for Emergency Vehicle Transit: A Scalable Cooperative Method
WenXi Wang, JunQi Zhang

TL;DR
This paper introduces a scalable distributed vehicle control method for emergency vehicle transit that enables real-time, near-optimal decision-making using only local information, improving safety, speed, and scalability over existing centralized and reinforcement learning approaches.
Contribution
It presents a novel distributed control algorithm that approximates global solutions with local data, along with a conflict resolution mechanism ensuring safety and scalability in emergency vehicle transit.
Findings
Faster decision-making compared to centralized methods
Reduced impact on ordinary vehicles during emergency transit
Maintains scalability across various traffic conditions
Abstract
Rapid transit of emergency vehicles is critical for saving lives and reducing property loss but often relies on surrounding ordinary vehicles to cooperatively adjust their driving behaviors. It is important to ensure rapid transit of emergency vehicles while minimizing the impact on ordinary vehicles. Centralized mathematical solver and reinforcement learning are the state-of-the-art methods. The former obtains optimal solutions but is only practical for small-scale scenarios. The latter implicitly learns through extensive centralized training but the trained model exhibits limited scalability to different traffic conditions. Hence, existing methods suffer from two fundamental limitations: high computational cost and lack of scalability. To overcome above limitations, this work proposes a scalable distributed vehicle control method, where vehicles adjust their driving behaviors in a…
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Taxonomy
TopicsTraffic control and management · Autonomous Vehicle Technology and Safety · Vehicle Dynamics and Control Systems
