Lane changing decision rule with the difference of traffic flow's variation in multi-lane highway for connected and autonomous vehicles

Author:

Li Chuanyao1,Huang Dexin1,Wang Tao2ORCID,Qin Jin1

Affiliation:

1. School of Traffic and Transportation Engineering, Smart Transport Key Laboratory of Hunan Province, Central South University , Changsha, 410075 , China

2. School of Vehicle and Mobility, Tsinghua University , Beijing, 100083 , China

Abstract

Abstract Drivers are not far-sighted when they execute lane-changing manipulation. To address this issue, this study proposes a rule to improve vehicle's lane-changing decision with accurate information of surrounding vehicles (e.g. time headway). More specifically, connected and autonomous vehicles (CAVs) change lanes in advance if they find severer flow reducing in their lanes, while CAVs should maintain the car-following state if the variations of traffic flow in all lanes have a similar trend. To illustrate the idea, this study first calibrates two classic car-following models and a lane-changing model, and then conducts numerical simulations to illustrate the short-sighted decision of drivers. And this study incorporates the idea into lane-changing decision rule by changing lane-changing model's parameter and conducts some numerical tests to evaluate the effectiveness of the lane-changing decision rule in multi-lane highway with bottleneck. The results of this study indicate that the new lane-changing decision rule can substantially improve the throughput of the traffic flow, especially when the inflow exceed the remaining capacity of the road. The lane-changing rule and results can bring insights into the control of CAVs, as well as the driver assistance system in connected vehicles.

Publisher

Oxford University Press (OUP)

Subject

Engineering (miscellaneous),Safety, Risk, Reliability and Quality,Control and Systems Engineering

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