Advanced traveller information system is an important intelligent transportation systems application area, which provides information to transport users and managers in order to improve the efficiency and effectiveness of the transportation system, in the face of increasing congestion in urban cities around the world. So far very limited research attention has been focused on long-term travel time prediction (i.e. predicting greater than 60 min ahead). Long-term travel time forecasts can play a critical role in journey planning decisions for both private road users and logistics operators. In this paper, we have considered a fuzzy neural network incorporated with both imprecise and numerical information and developed a hybrid long-term trav...
The Advanced Traffic Management System of San Antonio, Texas, called TransGuide System uses a sensor...
This study was designed to present an online model which predicted travel times on an interurban two...
The prediction of travel time is challenging given the sparseness of real-time traffic data and the ...
One of the major travel characteristics is time which may vary with respect to changes in travel con...
We show that prediction of travel time on a 28-km long highway section based on on-line travel time ...
The main purpose of this study was to investigate the predictability of travel time with a model bas...
Increasing car mobility has lead to an increasing demand for traffic information. This contribution ...
The growth in car mobility has lead to more uncertainty in travel times. As a result cardrivers have...
Travel time information plays an important role in transportation and logistics. Much research has b...
This paper discusses the methods of travel time prediction based on the usage of machine learning an...
Intelligent transportation systems are information and communication technology solutions in the tra...
Providing the users of a dynamic tolling system with predictions of tolling prices and the travel ti...
Based on earlier research by TNO, a long term travel time prediction algorithm using historical data...
The provision of accurate travel time information of public transport vehicles is valuable for both ...
Travel time is a fundamental measure in transportation. Accurate travel-time prediction also is cruc...
The Advanced Traffic Management System of San Antonio, Texas, called TransGuide System uses a sensor...
This study was designed to present an online model which predicted travel times on an interurban two...
The prediction of travel time is challenging given the sparseness of real-time traffic data and the ...
One of the major travel characteristics is time which may vary with respect to changes in travel con...
We show that prediction of travel time on a 28-km long highway section based on on-line travel time ...
The main purpose of this study was to investigate the predictability of travel time with a model bas...
Increasing car mobility has lead to an increasing demand for traffic information. This contribution ...
The growth in car mobility has lead to more uncertainty in travel times. As a result cardrivers have...
Travel time information plays an important role in transportation and logistics. Much research has b...
This paper discusses the methods of travel time prediction based on the usage of machine learning an...
Intelligent transportation systems are information and communication technology solutions in the tra...
Providing the users of a dynamic tolling system with predictions of tolling prices and the travel ti...
Based on earlier research by TNO, a long term travel time prediction algorithm using historical data...
The provision of accurate travel time information of public transport vehicles is valuable for both ...
Travel time is a fundamental measure in transportation. Accurate travel-time prediction also is cruc...
The Advanced Traffic Management System of San Antonio, Texas, called TransGuide System uses a sensor...
This study was designed to present an online model which predicted travel times on an interurban two...
The prediction of travel time is challenging given the sparseness of real-time traffic data and the ...