Characterizing Lane-Changing Behavior in Mixed Traffic
Sungyong Chung, Alireza Talebpour, Samer H. Hamdar

TL;DR
This study analyzes lane-changing behavior in mixed traffic with automated vehicles using real-world data, game theory, and clustering to reveal social dilemmas and the evolution of cooperation.
Contribution
It introduces a game-theoretic framework combined with clustering to characterize and analyze cooperative behaviors in mixed traffic lane-changing events.
Findings
Higher proportion of cooperative AVs compared to HDVs.
Social dilemmas present in 4-11% of lane-changing events.
Repeated interactions promote increased cooperation over time.
Abstract
Characterizing and understanding lane-changing behavior in the presence of automated vehicles (AVs) is crucial to ensuring safety and efficiency in mixed traffic. Accordingly, this study aims to characterize the interactions between the lane-changing vehicle (active vehicle) and the vehicle directly impacted by the maneuver in the target lane (passive vehicle). Utilizing real-world trajectory data from the Waymo Open Motion Dataset (WOMD), this study explores patterns in lane-changing behavior and provides insight into how these behaviors evolve under different AV market penetration rates (MPRs). In particular, we propose a game-theoretic framework to analyze cooperative and defective behaviors in mixed traffic, applied to the 7,636 observed lane-changing events in the WOMD. First, we utilize k-means clustering to classify vehicles as cooperative or defective, revealing that the…
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Taxonomy
TopicsTraffic control and management · Autonomous Vehicle Technology and Safety · Traffic and Road Safety
