Fuzzy Q-Learning Traffic Light Control based on Traffic Flow and Pedestrian Number Estimated from Visual Information
سال
: 1397
چکیده: A vision-based intelligent traffic control system is a robust framework that controls the traffic flow in real-time by estimating the traffic density near traffic lights. In this paper, a traffic light control system based on fuzzy Q-learning is proposed according to the vehicle density and the pedestrian number estimated from the visual information. The aim of proposed approach is to minimize the pedestrian and the car waiting time and maximize throughput for an isolated 4-way traffic intersection. Also, the pedestrian traffic light is controlled based on the fuzzy logic. The states and actions of the Q-learning variables are set by a fuzzy algorithm which can be learned through environmental interactions. The system can detect the number of pedestrians and vehicles using visual information from cameras and machine vision algorithms. The fuzzy control system can adjust the sequence of green phases to decrease the total waiting time and the mean of the queue length. The proposed algorithm was simulated for one hour for each of 14 different traffic conditions and was assessed and compared with the preset cycle time and vehicle actuated approaches. The results showed the proposed algorithm could decrease the total waiting time and the mean of the queue length effectively.
شناسه الکترونیک: 10.22067/cke.v2i1.77384
کلیدواژه(گان): Intelligent traffic control system,Traffic density,Fuzzy logic,traffic light control
کالکشن
:
-
آمار بازدید
Fuzzy Q-Learning Traffic Light Control based on Traffic Flow and Pedestrian Number Estimated from Visual Information
Show full item record
contributor author | Marjan Jalali moghaddam | |
contributor author | متین حسینی | Fa |
contributor author | Matin Hosseini | |
contributor author | Reza Safabakhsh | |
contributor author | رضا صفابخش | |
date accessioned | 2020-06-05T11:11:10Z | |
date available | 2020-06-05T11:11:10Z | |
date copyright | 2019-06-01 00:00:00 | |
date issued | 1397 | |
identifier uri | http://libsearch.um.ac.ir:80/fum/handle/fum/3329041 | |
description abstract | A vision-based intelligent traffic control system is a robust framework that controls the traffic flow in real-time by estimating the traffic density near traffic lights. In this paper, a traffic light control system based on fuzzy Q-learning is proposed according to the vehicle density and the pedestrian number estimated from the visual information. The aim of proposed approach is to minimize the pedestrian and the car waiting time and maximize throughput for an isolated 4-way traffic intersection. Also, the pedestrian traffic light is controlled based on the fuzzy logic. The states and actions of the Q-learning variables are set by a fuzzy algorithm which can be learned through environmental interactions. The system can detect the number of pedestrians and vehicles using visual information from cameras and machine vision algorithms. The fuzzy control system can adjust the sequence of green phases to decrease the total waiting time and the mean of the queue length. The proposed algorithm was simulated for one hour for each of 14 different traffic conditions and was assessed and compared with the preset cycle time and vehicle actuated approaches. The results showed the proposed algorithm could decrease the total waiting time and the mean of the queue length effectively. | |
publisher | Ferdowsi University of Mashhad Press | |
publisher | انتشارات دانشگاه فردوسی مشهد | Fa |
title | Fuzzy Q-Learning Traffic Light Control based on Traffic Flow and Pedestrian Number Estimated from Visual Information | |
contenttype | External Fulltext | |
subject keywords | Intelligent traffic control system | |
subject keywords | Traffic density | |
subject keywords | Fuzzy logic | |
subject keywords | traffic light control | |
identifier doi | 10.22067/cke.v2i1.77384 | |
journal title | Computer and Knowledge Engineering | |
journal volume | 2 | |
journal issue | 2168 | |
identifier link | https://cke.um.ac.ir/article/view/77384/ | |
series | دوره 2 شماره 1 (2019) | |
identifier ojsid | 77384 |