Optimizing Multi-Lane Intersection Performance in Mixed Autonomy Environments
Manonmani Sekar, Nasim Nezamoddini

TL;DR
This paper introduces a novel traffic signal control framework combining Graph Attention Networks and reinforcement learning to optimize intersection performance in mixed autonomy environments, reducing delays and improving fairness.
Contribution
It presents a new GAT-SAC framework that models traffic flow and adaptively controls signals in mixed traffic, outperforming traditional methods.
Findings
24.1% reduction in average delay
Up to 29.2% fewer traffic violations
Improved fairness ratio to 1.59
Abstract
One of the main challenges in managing traffic at multilane intersections is ensuring smooth coordination between human-driven vehicles (HDVs) and connected autonomous vehicles (CAVs). This paper presents a novel traffic signal control framework that combines Graph Attention Networks (GAT) with Soft Actor-Critic (SAC) reinforcement learning to address this challenge. GATs are used to model the dynamic graph- structured nature of traffic flow to capture spatial and temporal dependencies between lanes and signal phases. The proposed SAC is a robust off-policy reinforcement learning algorithm that enables adaptive signal control through entropy-optimized decision making. This design allows the system to coordinate the signal timing and vehicle movement simultaneously with objectives focused on minimizing travel time, enhancing performance, ensuring safety, and improving fairness between…
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Taxonomy
TopicsTraffic control and management · Autonomous Vehicle Technology and Safety · Vehicular Ad Hoc Networks (VANETs)
