通过智能交通控制系统实现交通无拥堵

Ahmed Mansour, M. Rizk
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引用次数: 1

摘要

近十年来,人们普遍关注的一个最严重的问题是车辆数量的急剧增加,这导致了严重的交通拥堵。城市中的这一问题给许多都市圈的各种决策系统和基础设施规划带来了巨大的压力。因此,交通控制成为不同系统的主要关注点,以克服人口和车辆不断增长而道路基础设施不足的相关现象所带来的逐渐挑战。传统的系统依赖于使用一个静态计时器作为交通信号,但这种解决方案有很多局限性,因为即使道路上没有车辆,交通信号也会改变信号灯,这会造成虚假的堵塞,浪费时间和资源。因此,最近的文献表明,通过使用物联网(IoT)技术来实现自适应交通信号计时器,在减少交通拥挤方面取得了巨大进步。物联网通过每个信号节点上附加的传感器和摄像头与云集成,方便处理收集的数据进行处理和分析。在本文中,我们假设道路旁的每个交通信号都有多个物联网传感器和一个摄像头,用于检测不同车辆的流量和类型,并将其发送到云作为一个强大的平台,通过YOLO算法等图像处理方法进行准确的检测和信息提取。结果表明,通过控制交通信号定时器,使信号与道路旁的实时交通流量相适应,可减少60%的等待时间。这种改进依赖于有效地使用Q-learning方法来提高决策质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Traffic Congestion-Free through Intelligent Traffic Control System
One of the most serious problems that take lots of attention during last decade is the massive increasing in number of vehicles, which leads to dramatically traffic congestion. Such problem in cities puts huge stress on various systems for decision making and infrastructure planning of many metropolitan areas. Therefore, traffic control becomes the main concern for different systems to overcome this gradual challenge as associated phenomena of the continuous growth of population and vehicles over inadequate road infrastructures. The conventional systems rely on using a static timer for traffic signal, but this solution has multiple limitations, as traffic signal changes its lights even there are no vehicles on the road, which causes fake jamming and waste time and resources. Thus, recent literatures show massive improvements of reducing traffic overcrowding through the usage of Internet of Things (IoT) technology to enable adaptive traffic signal timers. IoT facilitates dealing with the collected data for processing and analysis through integration with Cloud by the attached sensors and cameras on each signal node. In this paper, we assume each traffic signal alongside the road has multiple IoT sensors and a camera to detect the flow rate and type of different vehicles and send to Cloud as a powerful platform for perform accurate detection and information extraction through image processing approach such as YOLO algorithm. The results showed reduction on waiting time by 60% when manipulate traffic signal timer to accurately adapt signal with the real-time traffic flow alongside the roads. Such improvement relies on efficient usage of Q-learning approach to enhance the quality of decision making.
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