Impact of Driver Compliance and Aggressiveness in Connected Vehicles on Mixed Traffic Flow Efficiency: A Simulation Study

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-05-02 DOI:10.1155/2024/3414116
Chenhao Qian, Taojun Feng, Zhiyuan Li, Yanjun Ye, Shengwen Yang
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Abstract

Connected vehicles (CVs) are becoming increasingly prevalent in today’s transportation systems, and understanding their behavior in mixed traffic flow is crucial for enhancing traffic efficiency and safety. This paper presents a comprehensive study investigating the impact of CV drivers’ compliance and aggressiveness on mixed traffic flow through simulation experiments. The unique contribution of this research lies in the adoption of a clustering method to classify CV drivers’ compliance and aggressiveness based on trajectory data captured by Unmanned Aerial Vehicles (UAVs). This approach allows for the accurate calibration of car-following and lane-changing models, surpassing previous methodologies. The study outlines two primary methods: the intelligent driver model (IDM) with driver compliance (CVs-IDM) and the lane-change 2013 model with drivers’ style. These methods are applied to simulate various scenarios of mixed traffic flow, considering different CV penetration rates and driver types. The pivotal findings reveal that higher CV penetration rates lead to reduced traffic flow disturbance, improved safety, and enhanced efficiency. Specifically, CV drivers exhibiting high compliance and normal aggressiveness demonstrate optimal performance in terms of disturbance reduction, safety, and overall efficiency. This research offers valuable insights for policymakers and practitioners. It recommends increasing the CV penetration rate in mixed traffic flow to enhance overall efficiency. Moreover, selecting the appropriate CV driver type based on the penetration rate can further optimize traffic flow, positively impacting transportation systems and promoting safer and more efficient mixed traffic environments.

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网联汽车中驾驶员的遵从性和攻击性对混合交通流效率的影响:模拟研究
互联汽车(CV)在当今的交通系统中越来越普遍,了解它们在混合交通流中的行为对于提高交通效率和安全性至关重要。本文通过模拟实验全面研究了 CV 驾驶员的遵从性和攻击性对混合交通流的影响。本研究的独特贡献在于采用了一种聚类方法,根据无人驾驶飞行器(UAV)捕获的轨迹数据对履带式车辆驾驶员的服从性和攻击性进行分类。这种方法可以准确校准汽车跟随和变道模型,超越了以往的方法。研究概述了两种主要方法:具有驾驶员服从性的智能驾驶员模型(IDM)(CVs-IDM)和具有驾驶员风格的变道 2013 模型。这些方法被用于模拟混合交通流的各种情况,并考虑了不同的 CV 渗透率和驾驶员类型。重要的研究结果表明,较高的车辆普及率可减少交通流干扰、提高安全性和效率。具体而言,在减少干扰、提高安全性和整体效率方面,表现出高度服从性和正常攻击性的车辆驾驶员表现出最佳性能。这项研究为政策制定者和从业人员提供了宝贵的见解。它建议提高混合交通流中的车辆普及率,以提高整体效率。此外,根据渗透率选择合适的车辆驾驶员类型可以进一步优化交通流,对交通系统产生积极影响,并促进更安全、更高效的混合交通环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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