基于模糊控制算法的城市交通交叉口红绿灯调度分析

Ma Wen, B. V. D. Kumar
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引用次数: 1

摘要

在现代社会,私家车因其便利性和多功能性已成为许多家庭的首选。道路上的车辆数量是交通事故和交通拥堵的基础。在市区,由于四个路口的绿灯时间间隔,交通拥塞程度通常较高。在目前的交通控制管理系统中,交通灯的控制和时间的设定基本上都是定时器控制操作,这说明,目前的交通控制管理系统还不智能,所以仍然存在严重的交通拥堵。在城市十字路口,根据车辆的实时位置,实施常规的调整调度是至关重要的。目前,用于交通监控的探测系统有电感回路微波雷达、激光、红外、超声波、磁力计和视频图像处理等。但它们也有相应的弱点,比如成本高、技术复杂。图像处理技术作为一项应用越来越广泛的技术,在智能交通系统的管理和控制中发挥着重要的作用。图像处理系统基于车辆的运动检测,其中计算机视觉算法从交通视频数据中提取车辆用于交通密度估计。本文对交通管理系统中应用模糊控制算法的红绿灯调度问题进行了分析。随着车辆数量和人口的增加,也会改善交通堵塞和人们的情绪,因为堵塞的原因。与以前的技术相比,它将是低成本和简单的,可以在尽可能多的地方采用。利用MATLAB工具计算变量对城市交通交叉口红绿灯调度的影响。识别车辆数量、车速、车道长度和车辆类型等变量,并对车辆行驶情况进行测试,得出交通管理绩效的结论。结果表明,车辆数量、车速和车辆类型与车辆驾驶有显著正相关。车道长度对车辆行驶无显著影响。这说明车道长度对城市交通交叉口红绿灯调度的影响较小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Analysis on Scheduling of Traffic Light at Urban Traffic Intersection Using Fuzzy Control Algorithm
In modern society, private cars have become the first choice for many families because of their convenience and versatility. The volume of vehicles on the road is the basis of traffic accident and traffic congestion. In urban sector the traffic congestion is normally high due to the green light time interval at four road intersections. The traffic light control and time setting are basically timer control operation at current traffic control management system, this shows that, the current system is not intelligent so that there is still heavy traffic congestion. It is vital to implement routinely adjusted schedule as per the real-time position of vehicles at urban cross road intersection. Now, there are various detector systems for traffic monitoring, like Inductive Loop microwave radar, laser, infrared, ultrasonic, magnetometer and video image processing. But they have relevant weakness, such as high cost and complex technology. As a more and more widely used technology, image processing plays an important role in the management and control of intelligent transportation system. Image processing systems are based on motion detection of vehicles, wherein computer vision algorithms extract vehicles from traffic video data for traffic density estimations. This paper is an analysis on scheduling of traffic light of traffic management system using Fuzzy Control Algorithm. With the increase of the number of vehicles and population, it will also improve the traffic jam and the mood of people because of the cause of jam. Rather than previous technology, it will be low cost and simple, which can be adopted in every place as far as possible. MATLAB tool was used to figure out the variables impact on scheduling of traffic light at urban traffic intersection. The vehicle number, vehicle speed, lane length and vehicle type variables are identified and tested against vehicle driving for conclusion on traffic management performance. From findings the results were identified as the vehicle number, vehicle speed, and vehicle type have significant positive relationship with vehicle driving. However, the lane length did not significantly affect the vehicle driving. This indicates that the lane length is less important in scheduling of traffic light at urban traffic intersection.
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