Development of Simulation-based Lane Change Control System for Autonomous Vehicles
Seongjin Choi

TL;DR
This paper presents a simulation-based lane change control system for autonomous vehicles that optimizes lane change decisions considering overall traffic flow, reducing travel delays and congestion.
Contribution
It introduces a traffic flow-aware lane change control system using cell transition models and genetic algorithms, improving traffic efficiency over existing models.
Findings
Reduced overall travel time delay in simulations
Increased maximum traffic flow in flow-density analysis
Significantly decreased congestion points
Abstract
Originally, the decision and control of the lane change of the vehicle were on the human driver. In previous studies, the decision-making of lane-changing of the human drivers was mainly used to increase the individual's benefit. However, the lane-changing behavior of these human drivers can sometimes have a bad influence on the overall traffic flow. As technology for autonomous vehicles develop, lane changing action as well as lane changing decision making fall within the control category of autonomous vehicles. However, since many of the current lane-changing decision algorithms of autonomous vehicles are based on the human driver model, it is hard to know the potential traffic impact of such lane change. Therefore, in this study, we focused on the decision-making of lane change considering traffic flow, and accordingly, we study the lane change control system considering the whole…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety
MethodsEmirates Airlines Office in Dubai
