Traffic flow simulation under CAV environment using autonomous intersection management (AIM) within a single intersection

The ever-progressive Connected and Automated Vehicles (CAVs) space has quickly revolutionised the dynamics of the transportation system. CAVs are prominently recognised for their potential benefits to the transportation system such as the safety aspect and traffic efficiency. The rapid development...

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Main Author: Siti Nur Umairah Hashim
Other Authors: Zhu Feng
Format: Final Year Project
Language:English
Published: Nanyang Technological University 2020
Subjects:
Online Access:https://hdl.handle.net/10356/141916
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1419162020-06-11T11:02:08Z Traffic flow simulation under CAV environment using autonomous intersection management (AIM) within a single intersection Siti Nur Umairah Hashim Zhu Feng School of Civil and Environmental Engineering zhufeng@ntu.edu.sg Engineering::Civil engineering::Transportation The ever-progressive Connected and Automated Vehicles (CAVs) space has quickly revolutionised the dynamics of the transportation system. CAVs are prominently recognised for their potential benefits to the transportation system such as the safety aspect and traffic efficiency. The rapid development of CAVs in recent years grew in tandem with the ongoing research into CAVs. One of which is the simulation of traffic flows under CAVs environment. Primarily, traffic flows at intersections as congestions usually happen which may result in unwanted calamitous collisions, posing challenges to traffic flow management. While previous studies have acknowledged the need for a more efficient junction management, more should be investigating the efficiency of intersections under CAVs environment. Autonomous Intersection Management (AIM) is a multiagent systems approach to traffic intersection management (Dresner and Stone, 2008). In AIM, the driver agents communicate ahead of time to the intersection manager in the time space of the intersection to reserve conflict-free trajectories by utilising the wireless communication technology of CAVs. This is contrasting to existing junction managements, utilising stop signs or traffic light signals. In this project, the efficiency of the implementation Autonomous Intersection Management (AIM) within a single intersection under CAVs environment was evaluated by conducting traffic simulation in Simulation of Urban Mobility (SUMO). To study and ascertain the efficiency of the introduction of the First Come First Serve (FCFS) policy of AIM under CAVs environment, simulations were conducted using SUMO, Python and TraCI, with Python being the main programming language of the simulation. Several scenarios were conducted in the simulation, with varying traffic rate generation for the control case using traffic signal controls and thereafter implementing the FCFS-AIM policy. The experimental findings concluded that the implementation of the AIM policy increased the overall efficiency of the junction management under the uncongested traffic flow situations. This was ascertained by analysing 3 attributes of the simulation outputs; the vehicles’ travel time, waiting time and time loss. Bachelor of Engineering (Civil) 2020-06-11T11:02:08Z 2020-06-11T11:02:08Z 2020 Final Year Project (FYP) https://hdl.handle.net/10356/141916 en TR-07 application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
topic Engineering::Civil engineering::Transportation
spellingShingle Engineering::Civil engineering::Transportation
Siti Nur Umairah Hashim
Traffic flow simulation under CAV environment using autonomous intersection management (AIM) within a single intersection
description The ever-progressive Connected and Automated Vehicles (CAVs) space has quickly revolutionised the dynamics of the transportation system. CAVs are prominently recognised for their potential benefits to the transportation system such as the safety aspect and traffic efficiency. The rapid development of CAVs in recent years grew in tandem with the ongoing research into CAVs. One of which is the simulation of traffic flows under CAVs environment. Primarily, traffic flows at intersections as congestions usually happen which may result in unwanted calamitous collisions, posing challenges to traffic flow management. While previous studies have acknowledged the need for a more efficient junction management, more should be investigating the efficiency of intersections under CAVs environment. Autonomous Intersection Management (AIM) is a multiagent systems approach to traffic intersection management (Dresner and Stone, 2008). In AIM, the driver agents communicate ahead of time to the intersection manager in the time space of the intersection to reserve conflict-free trajectories by utilising the wireless communication technology of CAVs. This is contrasting to existing junction managements, utilising stop signs or traffic light signals. In this project, the efficiency of the implementation Autonomous Intersection Management (AIM) within a single intersection under CAVs environment was evaluated by conducting traffic simulation in Simulation of Urban Mobility (SUMO). To study and ascertain the efficiency of the introduction of the First Come First Serve (FCFS) policy of AIM under CAVs environment, simulations were conducted using SUMO, Python and TraCI, with Python being the main programming language of the simulation. Several scenarios were conducted in the simulation, with varying traffic rate generation for the control case using traffic signal controls and thereafter implementing the FCFS-AIM policy. The experimental findings concluded that the implementation of the AIM policy increased the overall efficiency of the junction management under the uncongested traffic flow situations. This was ascertained by analysing 3 attributes of the simulation outputs; the vehicles’ travel time, waiting time and time loss.
author2 Zhu Feng
author_facet Zhu Feng
Siti Nur Umairah Hashim
format Final Year Project
author Siti Nur Umairah Hashim
author_sort Siti Nur Umairah Hashim
title Traffic flow simulation under CAV environment using autonomous intersection management (AIM) within a single intersection
title_short Traffic flow simulation under CAV environment using autonomous intersection management (AIM) within a single intersection
title_full Traffic flow simulation under CAV environment using autonomous intersection management (AIM) within a single intersection
title_fullStr Traffic flow simulation under CAV environment using autonomous intersection management (AIM) within a single intersection
title_full_unstemmed Traffic flow simulation under CAV environment using autonomous intersection management (AIM) within a single intersection
title_sort traffic flow simulation under cav environment using autonomous intersection management (aim) within a single intersection
publisher Nanyang Technological University
publishDate 2020
url https://hdl.handle.net/10356/141916
_version_ 1681058863788326912