One main interest in crash frequency modeling is to predict crash counts over a spatial domain of interest (e.g., traffic analysis zones (TAZs)). The macro-level crash prediction models can assist transportation planners with a comprehensive perspective to consider safety in the long-range transportation planning process. Most of the previous studies that have examined traffic crashes at the macro-level are related to high-income countries, whereas there is a lack of similar studies among lower- and middle-income countries where most road traffic deaths (90%) occur. This includes Middle Eastern countries, necessitating a thorough investigation and diagnosis of the issues and factors instigating traffic crashes in the region in order to redu...
Population growth, increased travel demand and, consequently, increased motor vehicle use has led to...
Traffic safety is beginning to receive increasing attention at the stage of transportation planning....
This thesis presents different data mining/machine learning techniques to analyze the vulnerable roa...
Background: A great proportion of deaths due to traffic crashes occur for pedestrians, both in devel...
20 vitally important in transportation planning and have been emphasized in several macro-level stud...
The first part of the research presents an investigation of pedestrian conflicts and crash count mod...
Crash frequency analysis is a crucial tool to investigate traffic safety problems. With the objectiv...
Statistics show that signalized intersections are among the most dangerous locations of a roadway ne...
Recent research has shown that incorporating roadway safety in transportation planning has been cons...
Context: Considering the importance of pedestrian traffic crashes and the role of environmental fact...
This study investigates the effect of spatial correlation using a Bayesian spatial framework to mode...
ABSTRACTTraffic crashes in Riyadh city cause losses in the form of deaths, injuries and property dam...
While motorized travel provides many benefits, it can also do serious harm in the form of road-relat...
The research conducted in this thesis consists of a Geographic Information Systems (GIS) based safet...
Dissertation supervisor: Dr. Timothy Matisziw.Includes vita.Modeling crash severity is an important ...
Population growth, increased travel demand and, consequently, increased motor vehicle use has led to...
Traffic safety is beginning to receive increasing attention at the stage of transportation planning....
This thesis presents different data mining/machine learning techniques to analyze the vulnerable roa...
Background: A great proportion of deaths due to traffic crashes occur for pedestrians, both in devel...
20 vitally important in transportation planning and have been emphasized in several macro-level stud...
The first part of the research presents an investigation of pedestrian conflicts and crash count mod...
Crash frequency analysis is a crucial tool to investigate traffic safety problems. With the objectiv...
Statistics show that signalized intersections are among the most dangerous locations of a roadway ne...
Recent research has shown that incorporating roadway safety in transportation planning has been cons...
Context: Considering the importance of pedestrian traffic crashes and the role of environmental fact...
This study investigates the effect of spatial correlation using a Bayesian spatial framework to mode...
ABSTRACTTraffic crashes in Riyadh city cause losses in the form of deaths, injuries and property dam...
While motorized travel provides many benefits, it can also do serious harm in the form of road-relat...
The research conducted in this thesis consists of a Geographic Information Systems (GIS) based safet...
Dissertation supervisor: Dr. Timothy Matisziw.Includes vita.Modeling crash severity is an important ...
Population growth, increased travel demand and, consequently, increased motor vehicle use has led to...
Traffic safety is beginning to receive increasing attention at the stage of transportation planning....
This thesis presents different data mining/machine learning techniques to analyze the vulnerable roa...