Saved in:
Bibliographic Details
Main Authors: Li, Haoran, Yuan, Zhenzhou, Yue, Rui, Yang, Guangchuan, Zhang, Fan, Tian, Zong, Zhu, Chuang
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.20831
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910850426601472
author Li, Haoran
Yuan, Zhenzhou
Yue, Rui
Yang, Guangchuan
Zhang, Fan
Tian, Zong
Zhu, Chuang
author_facet Li, Haoran
Yuan, Zhenzhou
Yue, Rui
Yang, Guangchuan
Zhang, Fan
Tian, Zong
Zhu, Chuang
contents This study introduces a dynamic bus lane (DBL) strategy, referred to as the dynamic bus priority lane (DBPL) strategy, designed for mixed traffic environments featuring both manual and automated vehicles. Unlike previous DBL strategies, this approach accounts for partially connected and autonomous vehicles (CAVs) capable of autonomous trajectory planning. By leveraging this capability, the strategy grants certain CAVs Right of Way (ROW) in bus lanes while utilizing their leading effects in general lanes to guide vehicle platoons through intersections, thereby indirectly influencing the trajectories of other vehicles. The ROW allocation is optimized using a mixed-integer linear programming (MILP) model, aimed at minimizing total vehicle travel time. Since different CAVs entering the bus lane affect other vehicles travel times, the model incorporates lane change effects when estimating the states of CAVs, human-driven vehicles (HDVs), and connected autonomous buses (CABs) as they approach the stop bar. A dynamic control framework with a rolling horizon procedure is established to ensure precise execution of the ROW optimization under varying traffic conditions. Simulation experiments across two scenarios assess the performance of the proposed DBPL strategy at different CAV market penetration rates (MPRs).
format Preprint
id arxiv_https___arxiv_org_abs_2502_20831
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Dynamic Bus Lane Strategy for Integrated Management of Human-Driven and Autonomous Vehicles
Li, Haoran
Yuan, Zhenzhou
Yue, Rui
Yang, Guangchuan
Zhang, Fan
Tian, Zong
Zhu, Chuang
Optimization and Control
This study introduces a dynamic bus lane (DBL) strategy, referred to as the dynamic bus priority lane (DBPL) strategy, designed for mixed traffic environments featuring both manual and automated vehicles. Unlike previous DBL strategies, this approach accounts for partially connected and autonomous vehicles (CAVs) capable of autonomous trajectory planning. By leveraging this capability, the strategy grants certain CAVs Right of Way (ROW) in bus lanes while utilizing their leading effects in general lanes to guide vehicle platoons through intersections, thereby indirectly influencing the trajectories of other vehicles. The ROW allocation is optimized using a mixed-integer linear programming (MILP) model, aimed at minimizing total vehicle travel time. Since different CAVs entering the bus lane affect other vehicles travel times, the model incorporates lane change effects when estimating the states of CAVs, human-driven vehicles (HDVs), and connected autonomous buses (CABs) as they approach the stop bar. A dynamic control framework with a rolling horizon procedure is established to ensure precise execution of the ROW optimization under varying traffic conditions. Simulation experiments across two scenarios assess the performance of the proposed DBPL strategy at different CAV market penetration rates (MPRs).
title A Dynamic Bus Lane Strategy for Integrated Management of Human-Driven and Autonomous Vehicles
topic Optimization and Control
url https://arxiv.org/abs/2502.20831