Traffic management and traffic information are essential in urban areas and require reliable knowledge about the current and future traffic state. Parametric and nonparametric traffic state prediction techniques have previously been developed with different advantages and shortcomings. While nonparametric prediction has shown good results for predicting the traffic state during recurrent traffic conditions, parametric traffic state prediction can be used during nonrecurring traffic conditions, such as incidents and events. Hybrid approaches have previously been proposed; these approaches combine the two prediction paradigms by using nonparametric methods for predicting boundary conditions used in a parametric method. In this paper, parametr...
Increasing car mobility has lead to an increasing demand for traffic information. This contribution ...
The uncertainty associated with public transport services can be partially counteracted by developin...
Traffic state estimations and predictions are essential parts for dynamic traffic management applica...
Traffic management and traffic information are essential in urban areas and require reliable knowled...
Traffic congestion is increasing in almost all large cities, leading to a number of negative effects...
Importance of traffic state prediction steadily increases with growing volume of traffic. Ability to...
Traffic state estimation is an important task that has attracted a lot of research effort in recent ...
Frequent traffic congestion and gridlocks are causing global economies staggering cost in terms of f...
Intelligent Transport Systems (ITS) is a field that has developed rapidly over the last two decades,...
A hybrid model for predicting urban arterial travel time on the basis of so-called state-space neura...
The main purpose of this study was to investigate the predictability of travel time with a model bas...
Traffic information from probe vehicles has great potential for improving the estimation accuracy of...
Short-term traffic forecasting is driven by an increasing need of new services for user information ...
The principal aim of this study was to develop a method for making a short-term prediction model of ...
An online short-term prediction model of highway travel time was made using MLP-neural networks on a...
Increasing car mobility has lead to an increasing demand for traffic information. This contribution ...
The uncertainty associated with public transport services can be partially counteracted by developin...
Traffic state estimations and predictions are essential parts for dynamic traffic management applica...
Traffic management and traffic information are essential in urban areas and require reliable knowled...
Traffic congestion is increasing in almost all large cities, leading to a number of negative effects...
Importance of traffic state prediction steadily increases with growing volume of traffic. Ability to...
Traffic state estimation is an important task that has attracted a lot of research effort in recent ...
Frequent traffic congestion and gridlocks are causing global economies staggering cost in terms of f...
Intelligent Transport Systems (ITS) is a field that has developed rapidly over the last two decades,...
A hybrid model for predicting urban arterial travel time on the basis of so-called state-space neura...
The main purpose of this study was to investigate the predictability of travel time with a model bas...
Traffic information from probe vehicles has great potential for improving the estimation accuracy of...
Short-term traffic forecasting is driven by an increasing need of new services for user information ...
The principal aim of this study was to develop a method for making a short-term prediction model of ...
An online short-term prediction model of highway travel time was made using MLP-neural networks on a...
Increasing car mobility has lead to an increasing demand for traffic information. This contribution ...
The uncertainty associated with public transport services can be partially counteracted by developin...
Traffic state estimations and predictions are essential parts for dynamic traffic management applica...