The accurate prediction of travel times is desirable but frequently prone to error. This is mainly attributable to both the underlying traffic processes and the data that are used to infer travel time. A more meaningful and pragmatic approach is to view travel time prediction as a probabilistic inference and to construct prediction intervals (PIs), which cover the range of probable travel times travelers may encounter. This paper introduces the delta and Bayesian techniques for the construction of PIs. Quantitative measures are developed and applied for a comprehensive assessment of the constructed PIs. These measures simultaneously address two important aspects of PIs: 1) coverage probability and 2) length. The Bayesian and delta methods a...
Providing transportation system operators and travelers with accurate travel time information allows...
The main purpose of this study was to investigate the predictability of travel time with a model bas...
With the great development of intelligent transportation systems (ITS), travel time prediction has a...
The transportation literature is rich in the application of neural networks for travel time predict...
Increasing car mobility has lead to an increasing demand for traffic information. This contribution ...
This paper discusses the methods of travel time prediction based on the usage of machine learning an...
In this paper, we explore the use of machine learning and data mining to improve the prediction of t...
The growth in car mobility has lead to more uncertainty in travel times. As a result cardrivers have...
Travel time information is used as input or auxiliary data for tasks such as dynamic navigation, inf...
Travel time information is used as input or auxiliary data for tasks such as dynamic navigation, inf...
Various studies on dealing with the prediction of traffic variables have been conducted in the field...
The application of a nonlinear time series model to the prediction of traffic parameters on a freewa...
Dutch freeways suffer from severe congestion during rush hours or incidents. Research shows that 64%...
Freeway travel time prediction is a key technology of Intelligent Transportation Systems (ITS). Many...
Predicting travel times of vehicles in urban settings is a useful and tangible quantity of interest ...
Providing transportation system operators and travelers with accurate travel time information allows...
The main purpose of this study was to investigate the predictability of travel time with a model bas...
With the great development of intelligent transportation systems (ITS), travel time prediction has a...
The transportation literature is rich in the application of neural networks for travel time predict...
Increasing car mobility has lead to an increasing demand for traffic information. This contribution ...
This paper discusses the methods of travel time prediction based on the usage of machine learning an...
In this paper, we explore the use of machine learning and data mining to improve the prediction of t...
The growth in car mobility has lead to more uncertainty in travel times. As a result cardrivers have...
Travel time information is used as input or auxiliary data for tasks such as dynamic navigation, inf...
Travel time information is used as input or auxiliary data for tasks such as dynamic navigation, inf...
Various studies on dealing with the prediction of traffic variables have been conducted in the field...
The application of a nonlinear time series model to the prediction of traffic parameters on a freewa...
Dutch freeways suffer from severe congestion during rush hours or incidents. Research shows that 64%...
Freeway travel time prediction is a key technology of Intelligent Transportation Systems (ITS). Many...
Predicting travel times of vehicles in urban settings is a useful and tangible quantity of interest ...
Providing transportation system operators and travelers with accurate travel time information allows...
The main purpose of this study was to investigate the predictability of travel time with a model bas...
With the great development of intelligent transportation systems (ITS), travel time prediction has a...