Advanced intersection management for connected vehicles using a multi-agent systems approach

Qiu Jin, Guoyuan Wu, K. Boriboonsomsin, M. Barth
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引用次数: 59

Abstract

Transportation is responsible for approximately a third of greenhouse gases (GHG) and a major source of other pollutants including hydrocarbons (HC), carbon monoxide (CO), and oxides of nitrogen (NOx). Intelligent Transportation System (ITS) technology can be used to lower vehicle emissions and fuel consumption, in addition to reducing traffic congestion, smoothing traffic flow, and improving roadway safety. As wireless communication advances, connected-vehicles-based Advanced Traffic Management Systems (ATMS) have gained significant research interest due to their high potential. In this study, we examine the concept of ATMS for connected vehicles using a multi-agent systems approach, where both vehicle agents and an intersection management agent can take advantage of real-time traffic information exchange. This dynamic strategy allows an intersection management agent to receive state information from vehicle agents, reserve the associated intersection time-space occupancies, and then provide feedback to the vehicles. The vehicle agents then adjust their trajectories to meet their assigned time slot. Based on preliminary simulation experiments, the proposed strategy can significantly reduce fuel consumption and vehicle emissions compared to traditional signal control systems.
基于多智能体系统方法的互联车辆高级交叉口管理
交通运输产生了大约三分之一的温室气体(GHG),也是其他污染物的主要来源,包括碳氢化合物(HC)、一氧化碳(CO)和氮氧化物(NOx)。智能交通系统(ITS)技术可用于降低车辆排放和燃料消耗,此外还可减少交通拥堵,使交通顺畅,提高道路安全性。随着无线通信技术的发展,基于车联网的先进交通管理系统(ATMS)因其巨大的发展潜力而受到广泛关注。在本研究中,我们使用多智能体系统方法来研究联网车辆的ATMS概念,其中车辆智能体和交叉口管理智能体都可以利用实时交通信息交换。该动态策略允许交叉口管理代理接收来自车辆代理的状态信息,预留相关的交叉口时间空间占用,然后向车辆提供反馈。然后,车辆代理调整它们的轨迹以满足指定的时间段。初步仿真实验表明,与传统的信号控制系统相比,该策略能显著降低车辆油耗和排放。
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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