Will Autonomous Vehicles Improve Traffic Efficiency and Safety in Urban Road Bottlenecks? The Penetration Rate Matters

Tianshu Zhang, Kun Gao
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引用次数: 5

Abstract

The emerging autonomous vehicles (AVs) are expected to bring pronounced evolutions in transport systems. This study explores the characteristics of mixed traffic flow with both AVs and human drivers in urban bottlenecks. We investigate the influences of penetration rate (PR) of AVs on the performances concerning traffic efficiency and safety in urban bottlenecks with road width reduction. We developed a cellular automata model (CAM) to realize the microscope simulation of the mixed traffic flow with both AVs and traditional vehicles manipulated by human drivers. The divergences in driving behavior of human drivers and AVs in terms of car-following, lane-change and free-driving are fully delineated and integrated in the simulation. The results demonstrate that the traffic flow stability firstly decreases and then increases with the PRs of AVs and in mixed traffic flow. When PR of AVs reaches 100%, the traffic flow is stabilized and shows high travel speed, indicating higher traffic efficiency. The lane-changing frequency increases when PR of AVs increases, reaching the maximum value at the PRs of 15%-25%, and then gradually drops. The lane-changing frequencies under the scenarios of all AVs are found to be smaller than the scenarios of all human drivers. The actual road capacity is reduced when PR of AVs increases at first, reaches lowest at the PR of 15%-25%, and then gradually rebounds. The risk of collision gradually increases with PRs of AVs, and then reaches the maximum value at the PR of 25%-30%. As PR of AVs continues to increase, the risk will keep decreasing to 0. The findings provide a comprehensive investigation of how the AVs will influence traffic efficiency and safety from different aspects, which are basic for the development and planning of AVs in the future.
自动驾驶汽车会提高城市道路瓶颈的交通效率和安全性吗?普及率很重要
新兴的自动驾驶汽车(AVs)有望给交通系统带来显著的变革。本研究探讨了城市交通瓶颈中自动驾驶汽车和人类驾驶员混合交通流的特征。研究了在道路宽度减小的城市瓶颈路段,自动驾驶汽车渗透率对交通效率和安全性能的影响。建立了元胞自动机模型(CAM),实现了人工驾驶下自动驾驶汽车与传统车辆混合交通流的微观模拟。仿真充分刻画了人类驾驶员和自动驾驶汽车在跟车、变道、自由驾驶等方面的驾驶行为差异。结果表明:在混合交通流中,随着自动驾驶汽车的行驶速度增加,交通流稳定性先减小后增大;当自动驾驶汽车的PR达到100%时,交通流量较为稳定,行驶速度较高,表明交通效率较高。自动驾驶汽车变道频率随PR的增加而增加,在PR为15% ~ 25%时达到最大值,之后逐渐下降。所有自动驾驶情景下的变道频率都小于所有人类驾驶员的变道频率。实际道路通行能力在自动驾驶汽车的PR先增大后减小,在PR为15% ~ 25%时达到最低,之后逐渐回升。碰撞风险随着自动驾驶汽车的PR值逐渐增大,在PR值为25% ~ 30%时达到最大值。随着av的PR不断增加,风险将不断降低至0。研究结果从不同方面全面探讨了自动驾驶汽车对交通效率和安全的影响,为未来自动驾驶汽车的发展和规划奠定了基础。
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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