This paper discusses the distribution regularity of ship arrival and departure and the method of prediction of ship traffic flow. Depict the frequency histograms of ships arriving to port every day and fit the curve of the frequency histograms with a variety of distribution density function by using the mathematical statistic methods based on the samples of ship-to-port statistics of Fangcheng port nearly a year. By the chi-square testing: the fitting with Negative Binomial distribution and t-Location Scale distribution are superior to normal distribution and Logistic distribution in the branch channel; the fitting with Logistic distribution is superior to normal distribution, Negative Binomial distribution and t-Location Scale distribution...
Historical time-series data of container traffic in ports are characterised by strong randomness tha...
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...
This paper discusses the distribution regularity of ship arrival and departure and the method of pre...
Water transportation is an important part of comprehensive transportation and plays a critical role ...
In recent years, the traffic volume of the Yangtze River has increased dramatically. In order to pro...
Abstract: Unlike the existing regression analysis, this study anticipated future marine traffic volu...
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 ...
Yangtze River is the world's busiest inland waterway. Ships need to be guided when passing through c...
The efficiency and safety of maritime traffic in a given area can be measured by analyzing traffic d...
Yangtze River is probably the world's busiest inland waterway. Ships need to be guided when passing ...
A prediction algorithm for traffic flow prediction of BP neural based on Differential Evolution(DE) ...
Ship position prediction is the key to inland river and sea navigation warning. Maritime traffic con...
AbstractContainerization is one of the important factors for Thailand's economics. However, forecast...
Historical time-series data of container traffic in ports are characterised by strong randomness tha...
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...
This paper discusses the distribution regularity of ship arrival and departure and the method of pre...
Water transportation is an important part of comprehensive transportation and plays a critical role ...
In recent years, the traffic volume of the Yangtze River has increased dramatically. In order to pro...
Abstract: Unlike the existing regression analysis, this study anticipated future marine traffic volu...
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 ...
Yangtze River is the world's busiest inland waterway. Ships need to be guided when passing through c...
The efficiency and safety of maritime traffic in a given area can be measured by analyzing traffic d...
Yangtze River is probably the world's busiest inland waterway. Ships need to be guided when passing ...
A prediction algorithm for traffic flow prediction of BP neural based on Differential Evolution(DE) ...
Ship position prediction is the key to inland river and sea navigation warning. Maritime traffic con...
AbstractContainerization is one of the important factors for Thailand's economics. However, forecast...
Historical time-series data of container traffic in ports are characterised by strong randomness tha...
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...