A New Design of Intelligent Traffic Signal Control

Author:

Daneshfar Fatemeh1,RavanJamJah Javad1

Affiliation:

1. University of Kurdistan, Iran

Abstract

Dynamic traffic signal control in Intelligent Transportation System (ITS) recently has received increasing attention. This paper proposed an adaptive and cooperative multi-agentfuzzy system for a decentralized traffic signal control. The proposed model has three levels of control, the current intersection traffic situation, its neighboring intersections recommendations and a knowledge base, which provides the current intersection traffic pattern. The proposed architecture comprises a knowledge base, prediction module and a traffic observer that provide data to real traffic data preparation module, then a decision-making layer takes decision to how long should the intersection green light be extended. Also every intersection flow is predicted in two different ways: 1- through a recursive algorithm. 2- based on a two stage fuzzy clustering algorithm. The proposed solution is tested with traffic control of a large connected junction and the result obtained is promising in comparison to the conventional fixed sequence traffic signal and to the vehicle actuated traffic signal control strategies which are the most applicable strategies in this area. Also to simulate the proposed traffic control solutions, a Netlogo-based traffic simulator has been developed as the agents' world which simulates the roads, traffic flow and intersections.

Publisher

IGI Global

Reference44 articles.

1. Estimation of green times and cycle time for vehicle- actuated signals;R.Akcelik;Transportation Research Record1457, TRB,1994

2. Delay at a Fixed Time Traffic Signal—I: Theoretical Analysis

3. An intelligent traffic control system using RFID

4. Babuska, R. (2001). Fuzzy and neural control. Delft University of Technology, 55–71.

5. Bertelle, C., Dutot, A., Lerebourg, S., & Olivier, D. (2003). Road traffic management based on ant system and regulation model. MAS conference.

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