基于道路密度的模糊规则雾云控制交通灯持续时间

Arif Wicaksono Septyanto, I. Rosyida, S. Suryono
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引用次数: 1

摘要

交通灯控制系统对减少交通堵塞很重要。已经提出了几种控制交通灯的方法。然而,由于没有使用交通密度状态的数据,大多数都是不准确的。本研究提出一种自动交通灯控制系统,通过人工智能和无线射频识别(RFID)技术来确定十字路口交通灯的最佳持续时间。RFID用于计算车辆的平均速度和每条车道的道路占用率。平均车速值和道路占用率作为模糊规则算法的输入。基于模糊规则的输出是交通阻塞状态、每条车道的道路占用率、每条车道上车辆的平均速度和交通灯的实时持续时间。模糊计算过程通过Wi-Fi网关在雾服务器上本地进行,以减少云负载。我们在一个有4车道的交叉口上评估基于规则的算法。结果表明:1号车道平均车速为0.922,2号车道平均车速为0.699,3号车道平均车速为0.599,4号车道平均车速为0.621。道路密度模糊化值为1号车道高0.409,2号车道低0.475,3号车道中0.951,4号车道中0.858。使用基于规则的交通堵塞情况如下:1号车道为“重钟”,2号车道为“轻”,3号线为“轻重”,4号线为“轻重”。内置的系统使用RFID技术可以准确计算平均速度和道路占用率。
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A Fuzzy Rule-Based Fog-Cloud for Control the Traffic Light Duration Based On-road Density
A traffic light control system is important to reduce traffic jams. Several methods have been proposed to control traffic lights. However, most of them are inaccurate because do not use data on traffic density status. This study proposes an automatic traffic light control system by instilling artificial intelligence and Radio Frequency Identification (RFID) technology which is used to determine the best duration of traffic lights on an intersection. RFID is used to calculate the average speed of vehicles and the percentage of road occupancy in each lane. The average speed value and the percentage of road occupancy are used as inputs for the fuzzy rule-based algorithm. The outputs of the fuzzy rule-based are the status of traffic jams, road occupancy rate on each lane, the average speed of vehicles on each lane, and real time duration of traffic lights. The fuzzy computing process is carried out locally on the fog server via a Wi-Fi gateway to reduce cloud load. We evaluate the rule-based algorithm on an intersection with 4 lanes. The results show that the average speed of lane 1 is middle 0.922, lane 2 middle 0.699, lane 3 middle 0.599 and lane 4 middle 0.621. for fuzzification value of road density obtained lane 1 high 0.409, lane 2 low 0.475, lane 3 mid 0.951 and lane 4 mid 0.858. The conditions of traffic jams using the rule-based are as follows: "Heavy-Clock" for lane 1, "Light" for lane 2, "Light-Heavy" for line 3, and "Light-Heavy" for line 4. The system built-in using RFID technology can calculate average speeds and road occupancy rates accurately.
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