Calibration of Vehicle and Driver Characteristics for Vissim Model, Ann-Based Sensitivity Analysis, Traffic Management, and Signal Design Using Ga for Mangalore City
Date
2022
Authors
Bandi, Marsh M.
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
The field of traffic flow modeling has emerged as an important multi-disciplinary area with
contributions from traffic-engineers, city-planners, mathematicians, and specialists in the field of
computer sciences. Traffic engineers and planners constantly strive to alleviate problems that arise
due to bottlenecks in traffic movement. One of the major challenges to traffic management lies in
minimizing congestion and facilitating efficient traffic flow.
The study of traffic congestion requires a proper understanding of the relationship between
vehicle characteristics and driver characteristics to mimic existing traffic flows on urban
streets.Simulation approaches permit traffic engineers of developing countries to evolve reliable
models to investigate the influence of various factors related to roadways, and driver and vehicle
characteristics on traffic flow on urban roads characterized by heterogeneous traffic conditions. These
modeling techniques assist in gaining insight into the underlying relationships between the above
factors involved.
The primary scope of this study is focused on performing investigations using micro-
simulation on understanding the traffic characteristics of Mangalore city in India, for heterogeneous
traffic composition using VISSIM. A very important traffic circuit of the city connecting Hampankatta
Circle, Navbharat Circle, PVS Circle, Bunts Hostel Circle, and Jyothi Circle, was considered for
analysis, in addition to the nearby important locations such as Bendoorwell Junction, Balmatta
Junction, and St. Theresa’s School Junction.
In the initial phase of the study, the links and connectors representing the road network of the
city were assigned in the VISSIM modeling environment on a template comprising a 1:5000 high-
resolution base-map of the city overlaid with the layout of the roads and junctions using AutoCAD.
Data on turning movements of traffic at various junctions was collected for 80 minutes during the
peak-hour between 17:00 - 18.30 hours on Tuesday 10th March 2015 as part of this study. In this
phase of the study, a number of simulation experiments were performed using the above data for
default vehicle and driver characteristics, and the best random seed to be used for simulation was
identified as 25, and 42 from among the random seeds from 1-50s tested.
In the calibration exercise, the driver and vehicle parameters were fine-tuned in fourteen
major stages to minimize errors between the observed data and the simulated results. 75% of the
video-graphic data was used for performing testing and calibration, while the remaining 25% of the
data was used for validation studies. An ANN-based sensitivity analysis was then performed to
identify the relative importance of various vehicle and driver characteristics. A modified Garson’s
approach was adopted in this study for the computation of relative sensitivity based on connection
weights between the input layer, the three hidden layers, and the output layer for the optimized ANN
configuration. Based on the results of the sensitivity analysis, the predictive capability of the
simulation model was further enhanced by performing a multi-level extended calibration procedure
that provided reliable results as per prescribed standards for traffic simulation. This finalized model
was again validated successfully.
The fully calibrated VISSIM model was the used inthe later phase of the study, to study the
effect of implementing short-term strategies such as widening of existing road-widths, and long-term
improvement strategies such as introduction of flyovers at selected critical locations in the city.
Additionally, studies were performed using the genetic algorithm (GA) based approach in the design
of traffic signal timings for streamlining traffic flows across four important junctions in the city. The
objective function in the GA module was formulated based on the HCM average delay model (TRB
2000).
The overall approach towards performing calibration studies evolved through the present study
is expected to provide the basic framework for calibration and fine-tuning of vehicle and driver
characteristics in the development of micro-simulation models. The findings of this study are
expected to assist transport planners in developing innovative solutions to urban traffic management,
analysis, design, and operation of vehicles on roadways.
Description
Keywords
VISSIM, Micro-simulation, Calibration, ANN, Sensitivity, Genetic Algorithm, HCM Average Delay Model