柏海舰  (副教授)

硕士生导师

出生日期:1980-12-31

入职时间:2010-07-14

所在单位:道路与交通工程系

职务:系副主任

学历:研究生(博士)毕业

办公地点:屯溪路校区三立苑420

性别:男

学位:博士学位

在职信息:在职

主要任职:教学

毕业院校:东南大学

学科:交通运输工程其他专业
交通信息工程及控制
交通运输规划与管理

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X. Chen, W. Zhang, H. Bai*. LFF: An attention allocation-based following behavior framework in lane-free environments

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影响因子:7.6

DOI码:10.1016/j.trc.2024.104883

发表刊物:Transportation Research Part C: Emerging Technologies

关键字:Lane free trafficCar-following behaviorAttention allocationAutonomous vehiclesIDM

摘要:With the rapid advancement of autonomous driving technology, current autonomous vehicles (AVs) typically rely on lane markings and parameters for operation despite their advanced perception capabilities. This research aims to develop a Lane-Free Following (LFF) framework to address behavior planning for AVs in environments lacking clear lane markings. The LFF utilizes decision modules, such as Monitoring Zones, Focus Zones, and Passing Corridors, to dynamically select the most appropriate following strategy. It integrates a Multi-Target Following Model (MT-IDM) and an attention allocation mechanism to optimize acceleration control by adjusting attention concentration levels. Initially, we examine the stability of multi-target following and determine the stability region on a two-dimensional plane using specific stability criteria. Subsequently, the LFF is integrated with the lateral model of the Intelligent Agent Model (IAM), and calibrated and validated using lane-free traffic data from Hefei, China, and Chennai, India. Simulation results demonstrate the LFF’s high accuracy across various vehicle types. In simulations conducted on open boundary roads and virtual circular roads with varying widths and traffic densities, the LFF showed enhanced driving comfort and efficiency. This optimization of road widths and densities improved traffic flow and road space utilization compared to traditional lane-based traffic. In congested start conditions on circular roads, we compared the uniform attention allocation mode (LFF-UA), the concentrated attention allocation mode (LFF-CA), and the High-Speed Social Force Model (HSFM). Results indicated that the HSFM excels in velocity and flow, offering faster startup efficiency. The LFF-UA, while maintaining efficiency, evenly distributed attention to neighboring preceding vehicles, enhancing driving safety and reducing fuel consumption and emissions. This research addresses current issues in mixed traffic environments and provides theoretical references for the future application of connected autonomous vehicles in lane-free environments.

论文类型:论文集

论文编号:104883

期号:169

ISSN号:0968-090X

是否译文:

发表时间:2024-11-05

收录刊物:SCI

发布期刊链接:https://www.sciencedirect.com/science/article/pii/S0968090X24004042

下一条: X. Chen, W. Zhang, H. Bai*. A sigmoid-based car-following model to improve acceleration stability in traffic oscillation and following failure in free flow