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Application Of Lvq Neural Network In Real-Time Adaptive Traffic Signal Control

Agus Priyono, Agus Priyono and Muhammad Ridwan, Muhammad Ridwan and Ahmad Jais Alias, Ahmad Jais Alias and Riza Atiq O.K. Rahmat, Riza Atiq O.K. Rahmat and Azmi Hassan, Azmi Hassan and Mohd. Alauddin Mohd. Ali, Mohd. Alauddin Mohd. Ali (2005) Application Of Lvq Neural Network In Real-Time Adaptive Traffic Signal Control. Jurnal Teknologi B, 42 (B). pp. 29-44. ISSN 0127-9696

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Official URL: http://www.penerbit.utm.my/cgi-bin/jurnal/artikel....

Abstract

Real-Time Road Traffic Data Analysis Is The Cornerstone For The Modern Transport System. The Real-Time Adaptive Traffic Signal Control System Is An Essential Part For The System. This Analysis Is To Describe A Traffic Scene In A Way Similar To That Of A Human Reporting The Traffic Status And The Extraction Of Traffic Parameters Such As Vehicle Queue Length, Traffic Volume, Lane Occupancy And Speed Measurement. This Paper Proposed The Application Of Two-Stage Neural Network In Real-Time Adaptive Traffic Signal Control System Capable Of Analysing The Traffic Scene Detected By Video Camera, Processing The Data, Determining The Traffic Parameters And Using The Parameters To Decide The Control Strategies. The Two-Stage Neural Network Is Used To Process The Traffic Scene And Decide The Traffic Control Methods: Optimum Priority Or Optimum Locality. Based On Simulation In The Traffic Laboratory And Field Testing, The Proposed Control System Is Able To Recognise The Traffic Pattern And Enhance The Traffic Parameters, Thus Easing Traffic Congestion More Effectively Than Existing Control Systems.

Item Type:Article
Uncontrolled Keywords:Urban Traffic Control System, Pattern Recognition, Two-Stage Neural Network, Adaptive Control System
Subjects:Q Science > Q Science (General)
ID Code:1785
Deposited By: En Mohd. Nazir Md. Basri
Deposited On:19 Mar 2007 05:25
Last Modified:01 Jun 2010 02:58

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