Traffic congestion modelling (in collaboration with BMW)
With rapid urbanization and increasing urge for economic productivity there has been a high growth of migration into urban areas, consequently increasing the problems of traffic congestion in cities like Singapore. In context of the highly complex urban transportation system, it is estimated that...
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Format: | Theses and Dissertations |
Language: | English |
Published: |
2016
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Subjects: | |
Online Access: | http://hdl.handle.net/10356/68679 |
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Institution: | Nanyang Technological University |
Language: | English |
Summary: | With rapid urbanization and increasing urge for economic productivity there has been a high
growth of migration into urban areas, consequently increasing the problems of traffic
congestion in cities like Singapore. In context of the highly complex urban transportation
system, it is estimated that 50% of the traffic congestion and time delay takes place due to
factors other than the peak hours. These factors include increased vehicle volume, road
incidents, work zones and bad weather. Hence there is an urgent need for an advanced traffic
predictive models that can guide the commuters to take an appropriate alternative route in
order to avoid the congestion.
This thesis contributes to this problem by incorporating spatiotemporal data sets such as road
incidents, weather information and commuters’ mobility patterns (morning rush hours,
day/night time, etc.) to design methods required to build a traffic congestion model. Building
an accurate traffic prediction model involves analyzing large sets of historical traffic data. The
raw data sets of traffic volume, rainfall intensity and road incidents are extracted and analyzed.
The aim of this work is to help avoid traffic jams and accidents by designing methods that can
build the urban traffic prediction model using MATLAB. Consequently, traffic jams can be
controlled and eliminated. We can thereby, save time and fuel by reducing the total
congestion. The decreased emission from vehicles and lower transportation costs benefits the
national economy as a whole. |
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