Development of fuzzy neural technique for traffic intersection

As the quick development economy, transport problems also become more and more serious in nowadays. In Singapore, the government is facing first class seriousness public transport problems. Congestion, overcrowding and crowd bottle neck is the main problem need to be treat with. To solve this proble...

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Main Author: Liang, Tianchi
Other Authors: Er Meng Joo
Format: Final Year Project
Language:English
Published: 2015
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Online Access:http://hdl.handle.net/10356/64384
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-643842023-07-07T15:52:46Z Development of fuzzy neural technique for traffic intersection Liang, Tianchi Er Meng Joo School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering::Control and instrumentation::Control engineering As the quick development economy, transport problems also become more and more serious in nowadays. In Singapore, the government is facing first class seriousness public transport problems. Congestion, overcrowding and crowd bottle neck is the main problem need to be treat with. To solve this problem, the a highly designed monitor and control system is required for city traffic network. The most common method is pre-timed controller installed in the signalized intersection. However, with the increasing of seriousness of traffic condition, these traditional method is no longer as efficient as before. In recent research area, intelligent techniques are employed in the system to predict the traffic condition and a human-liked analyze techniques are used in the control system to achieve the desired condition. In order to treat with this problem, this project introduce a fuzzy neural network system to design the highly intelligent controller for the traffic lights. The Generalised Dynamic Fuzzy Neural Network, that is GDFNN, is used to teach the learning algorithm which generated by matlab codes. As the online traffic simulation softwares are not suitable for various traffic condition, most of them can only simulate a very simple traffic condition. Therefore, a traffic data are collected and entered the system as input. Therefore with the data input to the system, fuzzy logic is used to set the signal time. These outputs will act as input of another traffic fuzzy logic to evaluate the performance of the whole system. The whole system is run on the base of former 4 intersections near the target intersection. In the system, the bigger number of cars travel through the opposite directions will be saved as one of the input. The second input will be the bigger number of the other direction. The sum of the two input will be the input to generate the total time one round of traffic lights. The time of in one round of the traffic lights will be divided due to the traffic heavy condition of each direction. The performance of the system is evaluated by another fuzzy system. Along the project, the GDFNN has generated a good outcome to the aim of the project, which means good prediction and low error rate. Bachelor of Engineering 2015-05-26T06:08:49Z 2015-05-26T06:08:49Z 2015 2015 Final Year Project (FYP) http://hdl.handle.net/10356/64384 en Nanyang Technological University 45 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Electrical and electronic engineering::Control and instrumentation::Control engineering
spellingShingle DRNTU::Engineering::Electrical and electronic engineering::Control and instrumentation::Control engineering
Liang, Tianchi
Development of fuzzy neural technique for traffic intersection
description As the quick development economy, transport problems also become more and more serious in nowadays. In Singapore, the government is facing first class seriousness public transport problems. Congestion, overcrowding and crowd bottle neck is the main problem need to be treat with. To solve this problem, the a highly designed monitor and control system is required for city traffic network. The most common method is pre-timed controller installed in the signalized intersection. However, with the increasing of seriousness of traffic condition, these traditional method is no longer as efficient as before. In recent research area, intelligent techniques are employed in the system to predict the traffic condition and a human-liked analyze techniques are used in the control system to achieve the desired condition. In order to treat with this problem, this project introduce a fuzzy neural network system to design the highly intelligent controller for the traffic lights. The Generalised Dynamic Fuzzy Neural Network, that is GDFNN, is used to teach the learning algorithm which generated by matlab codes. As the online traffic simulation softwares are not suitable for various traffic condition, most of them can only simulate a very simple traffic condition. Therefore, a traffic data are collected and entered the system as input. Therefore with the data input to the system, fuzzy logic is used to set the signal time. These outputs will act as input of another traffic fuzzy logic to evaluate the performance of the whole system. The whole system is run on the base of former 4 intersections near the target intersection. In the system, the bigger number of cars travel through the opposite directions will be saved as one of the input. The second input will be the bigger number of the other direction. The sum of the two input will be the input to generate the total time one round of traffic lights. The time of in one round of the traffic lights will be divided due to the traffic heavy condition of each direction. The performance of the system is evaluated by another fuzzy system. Along the project, the GDFNN has generated a good outcome to the aim of the project, which means good prediction and low error rate.
author2 Er Meng Joo
author_facet Er Meng Joo
Liang, Tianchi
format Final Year Project
author Liang, Tianchi
author_sort Liang, Tianchi
title Development of fuzzy neural technique for traffic intersection
title_short Development of fuzzy neural technique for traffic intersection
title_full Development of fuzzy neural technique for traffic intersection
title_fullStr Development of fuzzy neural technique for traffic intersection
title_full_unstemmed Development of fuzzy neural technique for traffic intersection
title_sort development of fuzzy neural technique for traffic intersection
publishDate 2015
url http://hdl.handle.net/10356/64384
_version_ 1772827374573846528