Importance of traffic state prediction steadily increases with growing volume of traffic. Ability to predict traffic speed in short to medium horizon (i.e. up to one hour) is one of the main tasks of every newly developed Intelligent Transportation System. There are two possible approaches to this prediction. The first is to utilize physical properties of the traffic flow to construct an exact or approximate numerical model. This approach is, however, almost impossible to implement on a larger scale given the difficulty to obtain enough traffic data to describe the starting and boundary conditions of the model. The other option is to use historical traffic data and relate information and patterns they contain to the current traffic state by...
Traffic state estimation is an important element in traffic management systems. In this research a f...
Intelligent traffic systems attempt to solve the problem of traffic congestion, which is one of the ...
This research addresses the problem of modeling time-dependent traffic flow with real-time traffic s...
Importance of traffic state prediction steadily increases with growing volume of traffic. Ability to...
Frequent traffic congestion and gridlocks are causing global economies staggering cost in terms of f...
Traffic state estimations and predictions are essential parts for dynamic traffic management applica...
We develop a Kalman filter for predicting traffic flow at urban arterials based on data obtained fro...
Traffic congestion is increasing in almost all large cities, leading to a number of negative effects...
Traffic information from probe vehicles has great potential for improving the estimation accuracy of...
Traffic management and traffic information are essential in urban areas and require reliable knowled...
16th World Congress on ITS, Stockholm, Sweden, Sep.20-25, 2009.This study proposes a real-time traff...
Intelligent traffic systems attempt to solve the problem of traffic congestion, which is one of the ...
Intelligent Transport Systems (ITS) is a field that has developed rapidly over the last two decades,...
Smart city visions aim to offer citizens with intelligent services in various aspects of life. The s...
To evaluate the traffic state over time and space, several models can be used. A typical model for e...
Traffic state estimation is an important element in traffic management systems. In this research a f...
Intelligent traffic systems attempt to solve the problem of traffic congestion, which is one of the ...
This research addresses the problem of modeling time-dependent traffic flow with real-time traffic s...
Importance of traffic state prediction steadily increases with growing volume of traffic. Ability to...
Frequent traffic congestion and gridlocks are causing global economies staggering cost in terms of f...
Traffic state estimations and predictions are essential parts for dynamic traffic management applica...
We develop a Kalman filter for predicting traffic flow at urban arterials based on data obtained fro...
Traffic congestion is increasing in almost all large cities, leading to a number of negative effects...
Traffic information from probe vehicles has great potential for improving the estimation accuracy of...
Traffic management and traffic information are essential in urban areas and require reliable knowled...
16th World Congress on ITS, Stockholm, Sweden, Sep.20-25, 2009.This study proposes a real-time traff...
Intelligent traffic systems attempt to solve the problem of traffic congestion, which is one of the ...
Intelligent Transport Systems (ITS) is a field that has developed rapidly over the last two decades,...
Smart city visions aim to offer citizens with intelligent services in various aspects of life. The s...
To evaluate the traffic state over time and space, several models can be used. A typical model for e...
Traffic state estimation is an important element in traffic management systems. In this research a f...
Intelligent traffic systems attempt to solve the problem of traffic congestion, which is one of the ...
This research addresses the problem of modeling time-dependent traffic flow with real-time traffic s...