Study on The Factors Governing The Travel Time Reliability of Public Bus Transport System
Date
2022
Authors
M M, Harsha
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Travel time reliability is the key aspect that indicates the quality of urban public transit
service. The reliability is the most preferred parameter by the passengers to decide
whether or not to choose the public transit mode of transport. Several factors can affect
travel time reliability of the public transit system and it is necessary to understand the
impact of these factors on travel time reliability of public transit system. Hence, the
present research work aims to study the factors governing travel time reliability of the
public bus transport system. Mysore is one of the largest cities in Karnataka state whose
transit system has been considered in the present research work, since it generates the
Automatic Vehicle Location (AVL) data through the Intelligent Transport System (ITS)
infrastructure for public transit. Data collected for the research work comprises of AVL
data from Mysore ITS and side friction data collected from study sections using
videography method. Mysore city transit vehicles are equipped with the GPS units
which provide the Automatic Vehicle Location (AVL) and other trip details of the
respective buses. This AVL data has been used to extract travel time of bus routes and
segments. The field data extracted from videography includes, side friction elements,
traffic volume, and travel time of public bus transit at two different road sections
(divided and undivided) during weekdays and weekends. This data is utilised in
studying the impact of side friction on travel time reliability of the public transit system.
Roadside friction is one of the critical factors which hinders the movement of traffic.
The impact of different types of friction elements on travel time depends on their static
and dynamic characteristics, as well as the position of friction elements on the
carriageway. The data collected at two side friction locations of Mysore city has been
used to analyse the impact of side friction on travel time reliability of public transit
system. The data have been categorized as static and dynamic side frictions. An
approach has been proposed to represent different types of side friction elements with
a single index called Side Friction Index (SFI) using relative weight analysis. Travel
time reliability is represented using measures such as Buffer Time Index (BTI),
Planning Time Index (PTI), Travel Time Index (TTI) and Reliable Buffer Index (RBI).
The impact of side friction on travel time reliability was found to be sensitive to traffic
volume, and hence the thresholds for different traffic volume levels have been
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determined using K-means clustering method. The impact of side friction on reliability
measures at different traffic volume levels has been studied and found to have a non-
linear (exponential) relationship. The impact of SFI has been observed to be higher on
TTI and PTI in comparison with BTI. The outcomes from this study show that the
impact of side friction on TTI and PTI is sensitive to traffic volume, especially at higher
traffic volume level and impact of side friction on BTI is least at medium traffic volume
level. The inference from this research work shows that the impact of side friction
elements varies with respect to the type of road (divided and undivided), traffic volume
levels, different days of week (weekday and weekend), and different time periods of
day.
Travel time variability (TTV) plays a significant role in analysing the reliability of the
public transit system. Therefore, this study attempts to analyse travel time variability
of the public transit system with the help of AVL data of buses collected from the
Mysore ITS. The travel time data are analysed at different temporal aggregation levels
corresponding to different Departure Time Windows for peak and off-peak periods.
Travel time variability is also influenced by the presence of intersections, bus stops and
other geometric and traffic characteristics. Hence, the segment level analysis has been
carried out taking into consider the presence of bus stops, intersections and land-use
type. AVL data collected from Mysore ITS are used to evaluate travel time
distributions with respect to temporal aggregations (peak period, off-peak period, 60
minutes, 30 minutes and 15 minutes) and spatial aggregations (route level and segment
level). The distribution fitting process has been carried out using EasyFit software,
which estimates the distribution parameters using maximum likelihood estimation
(MLE) method. The Kolmogorov-Smirnov (KS) test for goodness of fit has been used
to evaluate the fitting of each distribution. The performance of each selected
distribution has been evaluated in terms of accuracy and robustness. The results of both
route and segment level analysis show that the Generalised Extreme Value (GEV)
distribution is superior in describing travel time variability of public transit. The
accuracy and robustness of GEV distribution are higher than that of other distributions
and also the performance of GEV distribution in the case of signalised intersections and
land use type shows the fitting ability and versatility of GEV distribution. Hence, GEV
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distribution has been considered as the descriptor of travel time variability of the public
transit system. Travel time reliability measures, TTI, PTI and BTI of four bus routes
are determined using GEV distribution and reliability of these routes have been
evaluated. The reliability measures of the study routes indicate that the reliability of
public transit is lower during peak hours.
Understanding the factors causing unreliability of the public transit system is necessary
for the improvement of system’s reliability. In this study, the reliability of the system
has been modelled considering three travel time reliability measures. The Multiple
Linear Regression (MLR) method has been adopted to model the three travel time
reliability measures (Average Travel Time (ATT), Planning Time (PT) and Buffer
Time (BT)) as the dependent variables and independent variables selected are
corresponding to five important factors affecting the measures related to travel time:
segment length, bus stops, intersections, land-use and peak/off-peak time period. The
results of this study show that length of the segment has a higher impact on all the three
reliability measures. The average delay has a higher standardised coefficient value than
standard deviation (SD) of delay in the case of ATT and PT. In BT model, SD of delay
is more than average delay, which shows that variation in bus stop delay leads to a
higher buffer time. The presence of intersection in the segments and Central Business
District (CBD)/commercial land-use segments are found to have lesser travel time
reliability. Level of service (LOS) is a quantitative stratification of a performance
measure or a measure that represents the quality of service. The LOS of bus routes are
determined based on travel time reliability such as TTI, PTI and BTI. K-means
clustering method has been applied to the segment level travel time data of four bus
routes to determine LOS thresholds. Initially, globally accepted six clusters for LOS (A
to F) have been considered and cluster validation has been conducted using silhouette
analysis. The results of cluster validation show that clusters have reasonable structures
and six clusters can be used to determine the LOS thresholds based on these reliability
measures. Finally, recommendations have been put forward based on the outcomes of
the research work to improve the reliability of the public transit system.
Description
Keywords
Travel time reliability, Public transit system, Intelligent Transport System, Roadside frictions