Short-term traffic prediction is an important component of traffic management systems. Around logistics hubs such as seaports, truck flows can have a major impact on the surrounding motorways. Hence, their prediction is important to help manage traffic operations. However, The link between short-term dynamics of logistics activities and the generation of truck traffic has not yet been properly explored. This paper aims to develop a model that predicts short-term changes in truck volumes, generated from major container terminals in maritime ports. We develop, test, and demonstrate the model for the port of Rotterdam. Our input data are derived from exchanges of operational logistics messages between terminal operators, carriers and shippers,...
This paper proposes a data-driven transport modeling framework to assess the impact of freight depar...
A methodology for building a truck trip generation model by use of artificial neural networks from v...
A methodology for building a truck trip generation model by use of artificial neural networks from v...
Short-term traffic prediction is an important component of traffic management systems. Around logist...
Ports are primary generators of truck traffic in the United States. Seaport operations will require ...
Ports are primary generators of truck traffic in the United States. Seaport operations will require ...
In gateway seaports, like the port of Rotterdam, a substantial proportion of all freight movements i...
The prediction of freight congestion (cargo peaks) is an important tool for decision making and it i...
Seaports are important economic generators, and identifying necessary infrastructure improvements is...
Seaports are important economic generators, and identifying necessary infrastructure improvements is...
Accurate truck arrival prediction is complex but critical for container terminals. A deep learning m...
The purpose of the work described in this paper is to construct and implement prediction models for ...
An innovative methodology has been developed for analyzing freight movement on local road networks b...
The heavy truck traffic generated by major seaports can have huge impacts on local and regional tran...
The hinterland transportation of incoming containers at container terminals is a complex problem, du...
This paper proposes a data-driven transport modeling framework to assess the impact of freight depar...
A methodology for building a truck trip generation model by use of artificial neural networks from v...
A methodology for building a truck trip generation model by use of artificial neural networks from v...
Short-term traffic prediction is an important component of traffic management systems. Around logist...
Ports are primary generators of truck traffic in the United States. Seaport operations will require ...
Ports are primary generators of truck traffic in the United States. Seaport operations will require ...
In gateway seaports, like the port of Rotterdam, a substantial proportion of all freight movements i...
The prediction of freight congestion (cargo peaks) is an important tool for decision making and it i...
Seaports are important economic generators, and identifying necessary infrastructure improvements is...
Seaports are important economic generators, and identifying necessary infrastructure improvements is...
Accurate truck arrival prediction is complex but critical for container terminals. A deep learning m...
The purpose of the work described in this paper is to construct and implement prediction models for ...
An innovative methodology has been developed for analyzing freight movement on local road networks b...
The heavy truck traffic generated by major seaports can have huge impacts on local and regional tran...
The hinterland transportation of incoming containers at container terminals is a complex problem, du...
This paper proposes a data-driven transport modeling framework to assess the impact of freight depar...
A methodology for building a truck trip generation model by use of artificial neural networks from v...
A methodology for building a truck trip generation model by use of artificial neural networks from v...