4.7 Article

A Novel Asymmetric Car Following Model for Driver-Assist Enabled Vehicle Dynamics

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITS.2022.3145292

关键词

Automobiles; Vehicle dynamics; Modeling; Microscopy; Adaptation models; Numerical models; Mathematical models; Microscopic car following model; traffic string stability; model calibration

资金

  1. University of Minnesota Center for Transportation Studies through the Faculty Scholars Program
  2. University of Minnesota Center for Transportation Studies through the Transportation Scholars Program
  3. Department of Civil, Environmental, and Geo-Engineering, University of Minnesota

向作者/读者索取更多资源

In this study, an asymmetric car following model for adaptive cruise control (ACC) vehicles is proposed, which switches parameters under different conditions to achieve and replicate the car following dynamics of ACC vehicles. The calibration and simulation results demonstrate that the proposed asymmetric ACC model significantly reduces model spacing error.
Adaptive cruise control (ACC) vehicles are proving to be the first generation of driver-assist enabled vehicles. In order to study the impacts of ACC vehicles on string stability and traffic flow characteristics, accurately calibrating microscopic car following models is crucial to simulate inter-vehicle dynamics. While many car following models have been used to simulate car following behavior, a single, continuous function may not describe both acceleration and braking realistically. We propose an asymmetric model which is based on the symmetric optimal velocity relative velocity (OVRV) model and switch parameters under different conditions to realize and reproduce car following dynamics of ACC vehicles. We conduct an analytical string stability analysis and the string stability criterion is derived. The calibration and simulation results show that the proposed asymmetric ACC model reduces model spacing error by up to 38% compared with the symmetric OVRV model. Compared with other commonly used asymmetric car following models in the transportation community, the proposed asymmetric ACC model can reduce spacing error by 44.8%. Furthermore, we validate the derived string stability criterion with a numerical test simulating with a string of vehicles. We conclude that an asymmetric car following model shows more accurate performance in the capture of ACC car following behavior.

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