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http://dx.doi.org/10.5391/IJFIS.2003.3.1.066

Intelligent Traffic Light using Fuzzy Neural Network  

Park, Myeong-Bok (Department of Admin. Computer Wonju National University)
You-Sik, Hong (Department of Computer Science Sangji University)
Publication Information
International Journal of Fuzzy Logic and Intelligent Systems / v.3, no.1, 2003 , pp. 66-71 More about this Journal
Abstract
In the past, when there were few vehicles on the road, the T.O.D.(Time of Day) traffic signal worked very well. The T.O.D. signal operates on a preset signal cycling which cycles on the basis of the average number of average passenger cars in the memory device of an electric signal unit. Today, with increasing traffic and congested roads, the conventional traffic light creates startup-delay time and end lag time so that thirty to forty-five percent efficiency in traffic handling is lost, as well as adding to fuel costs. To solve this problem, this paper proposes a new concept of optimal green time algorithm, which reduces average vehicle waiting time while improving average vehicle speed using fuzzy rules and neural networks. Through computer simulation, this method has been proven to be much more efficient than fixed time interval signals. Fuzzy Neural Network will consistanly improve average waiting time, vehicle speed, and fuel consumption.
Keywords
Intelligent traffic light; Fuzzy Neural traffic light; spillback;
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