新型大城市道路交通优化系统

IF 2.1 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS IET Smart Cities Pub Date : 2022-06-06 DOI:10.1049/smc2.12032
Ahmad A. A. Alkhatib, Khulood Abu Maria, Shadi Alzu'bi, Eman Abu Maria
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引用次数: 7

摘要

交通拥堵和道路交叉口管理已经成为一个重要的问题,主要是随着城市车辆数量的急剧增加。车辆司机普遍认为,安装考虑交通流量的交通灯将在交通运动中占主导地位。本文提出了一种具有连续动态环境适应的城市交通控制系统(UTC),以改善大城市路网道路的交通流。该系统引入了车辆计数方法、车道现状评估方法和控制方法,考虑了对整个交通网络的影响,而不仅仅是交叉口本身,以提供有效的交通调度。该系统的主要目标是通过减少车辆在十字路口的等待时间和出行时间来减少交通拥堵。本文引入了一些指标和模型,以最小的交通拥堵和车辆等待时间来分配交通流调度。这些指标和模型包括交通拥堵指标、车辆优先级和车道重量。提出了一种基于NetLogo模拟器的多智能体城市交通控制系统的仿真环境。(共150辆)随机生成的车辆分布在25个十字路口,持续9小时,以比较普通固定周期红绿灯和作者的智能交通控制。结果表明,在模拟期间,所有车辆的总平均等待时间减少了29.98%以上。因此,在基础设施变化最小的情况下,更适合当前交通状况的复杂性。
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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Novel system for road traffic optimisation in large cities

Traffic congestion and road intersection management have become a significant issue, mainly with the highly increasing number of vehicles in cities. There is a common belief from vehicle drivers that installing traffic lights with some consideration of traffic flows will be dominant in traffic movements. This article proposes a novel system for Urban Traffic Control (UTC) with a continuous dynamic environment adaptation to improve traffic flow on large cities' network roads. The proposed system introduces vehicle counting method, lane evaluation of the current status and controlling method considering the effect on the whole traffic network—not just the intersection itself—to provide an efficient traffic scheduling. The main objective of the authors’ system is to reduce traffic jam, by reducing waiting time and trip time for vehicles at intersections. Some indicators and models are introduced in this work to assign traffic flow schedules with minimum traffic congestion and vehicle waiting time. These indicators and models include a traffic jam indicator, vehicle priority and lane weight. A multi-agent urban traffic control system is proposed as the simulation environment using NetLogo simulator. (A total of 150) Vehicles are generated with random behaviour distributed over 25 intersections for 9 h duration to compare the normal fixed cycle traffic light and the authors’ smart traffic control. Results show a reduction in the total average waiting time of all vehicles for the simulation period by more than (29.98%). Hence, it is more suitable for the complexity of the current traffic condition with minimum changing infrastructure.

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来源期刊
IET Smart Cities
IET Smart Cities Social Sciences-Urban Studies
CiteScore
7.70
自引率
3.20%
发文量
25
审稿时长
21 weeks
期刊最新文献
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