One of the preconditions for good quality management of seaports is forecasting the traffic according to the number of passengers and the number of vehicles; in this way it is possible to plan and prepare activities for the smooth operation of the ports. This paper researches the port system as part of the coastal liner maritime transport. The set hypothesis is that the model of forecasting the traffic could be presented as a function of two variables. The Principal Component Analysis (PCA) method is used to select the forecasting parameters. Based on the choice of parameters, using the Least Squares Method (LSM), the trend analysis is performed to choose the forecasting functions for maritime liner transport on the example of the Split Cit...
The majority of Finnish foreign trade uses maritime transport as a transport unit, and this is why p...
Economical, political, linear and other factors play an important role in the forming and change of ...
Abstract: In this study, time series analysis was tried, which is widely applied to demand forecast ...
One of the preconditions for good quality management of seaports is forecasting the traffic accordin...
Purpose: The paper aims to elaborate on long-term throughput forecasts in Small and Medium-Sized por...
In the recent years, forecasting or predictions of port freight have received an increasing attentio...
According to statistics, the marine passenger transportation sectors (both cruise lines and ferry li...
The purpose of this study is to investigate the future demand of ports’ container handling and to pr...
In the recent years, forecasting or predictions of port freight have received an increasing attentio...
Comprehensive forecasting of future volumes of container traffic in seaports is important when it co...
Modern passenger terminals are characterized by dynamic processes variability, diverse options con...
Various factors influence the course and speed of every ship, resulting in uncertain arrival times a...
Maritime passenger demand forecasting is a task that is almost always present in the development stu...
The purpose of this study is to investigate the future demand of ports’ container handling and to pr...
A novel quantitative analysis employing the Principal Component Analysis (PCA) of containership traf...
The majority of Finnish foreign trade uses maritime transport as a transport unit, and this is why p...
Economical, political, linear and other factors play an important role in the forming and change of ...
Abstract: In this study, time series analysis was tried, which is widely applied to demand forecast ...
One of the preconditions for good quality management of seaports is forecasting the traffic accordin...
Purpose: The paper aims to elaborate on long-term throughput forecasts in Small and Medium-Sized por...
In the recent years, forecasting or predictions of port freight have received an increasing attentio...
According to statistics, the marine passenger transportation sectors (both cruise lines and ferry li...
The purpose of this study is to investigate the future demand of ports’ container handling and to pr...
In the recent years, forecasting or predictions of port freight have received an increasing attentio...
Comprehensive forecasting of future volumes of container traffic in seaports is important when it co...
Modern passenger terminals are characterized by dynamic processes variability, diverse options con...
Various factors influence the course and speed of every ship, resulting in uncertain arrival times a...
Maritime passenger demand forecasting is a task that is almost always present in the development stu...
The purpose of this study is to investigate the future demand of ports’ container handling and to pr...
A novel quantitative analysis employing the Principal Component Analysis (PCA) of containership traf...
The majority of Finnish foreign trade uses maritime transport as a transport unit, and this is why p...
Economical, political, linear and other factors play an important role in the forming and change of ...
Abstract: In this study, time series analysis was tried, which is widely applied to demand forecast ...