Travel Efficiency Investigation: Unravelling Local and Global Insights via Taxi Trajectory Analysis
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Date
2024-07
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RMIT University
Abstract
Transportation issues have a significant impact on people's lives because they spend a
significant amount of time commuting for either daily needs or entertainment. These issues can
be associated with travel time, longer travel distance, and/or fuel consumption. Due to the
global positioning system (GPS) enabled devices installed in these vehicles, enormous amounts
of trajectory data have been collected over the last decade from travelling vehicles such as cars,
buses, and taxis, among others. This data provides an excellent opportunity to trace vehicle
movements in fine spatiotemporal granularity. Moreover, this data tackles many of the traffic
problems, including bottleneck identification. Identifying traffic bottlenecks is essential in
traffic planning it also aids in the prevention of traffic congestion. Traffic congestion begins
with congested road segments in key locations and spreads to other parts of the urban road
network, causing additional congestion. The problem investigated in this thesis is analysing the
road network travel efficiency locally and globally to reduce travel times, minimising fuel
consumption, energy demands, and making better use of existing infrastructure. In much of the
current literature, the focus is often on either a global analysis, which identifies the most
efficient trip destinations, or a local analysis, which identifies the cause of traffic anomalies or
congestion. However, it is necessary to consider both of these scales in order to gain a nuanced
understanding. Specifically, it is crucial to quantify the extent to which each individual road
segment affects travel efficiency, both at a local and a global scale. In order to provide a
comprehensive understanding of urban traffic data, this thesis integrates both local and global
analyses. In local analysis, we dive deep into each trajectory, much like deep-sea exploration,
to uncover reasons for inefficiencies by examining all combined road segments. Then we
extend the analysis globally to understand the behaviour of each part on road networks and
how it effects on other road parts. The local analysis of the road network explores the measuring
of the travel efficiency for each single trajectory trip across numerous origin-destination (OD)
pairs in an entire city. Moreover, the consideration of a low travel efficiency path rises a
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question of exactly which road segment is causing low efficiency. So, local analysis aims to
measure the travel efficiency for each path. Furthermore, the local analysis provides the road
segment inside a particular path that is responsible for low travel efficiency. In contrast, a small
set of road segments that affect globally in the congestion problem is known as global analysis
in this thesis. The global analysis seeks to identify a major source of traffic congestion. The
global analysis provides some important opportunities for furthering the understanding of the
congestion value for each edge in the road network and provides the top-k congested edges that
influence the greatest number of other edges in the road network with the highest influence
value recorded. The highest number of the influence values proves evidence of the global
congestion effect in the entire road network.
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Keywords
Big Data, Bottlenecks identification, GPS trajectories, Traffic congestion matrix, Traffic congestion value
Citation
ORCID: 0000-0001-9903-5294