港口系统海上班轮运输短期预测模型

IF 0.5 Q4 TRANSPORTATION Pomorstvo-Scientific Journal of Maritime Research Pub Date : 2020-12-21 DOI:10.31217/p.34.2.17
Antonija Mišura, Tatjana Stanivuk, J. Šoda, Alen Jugović
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引用次数: 0

摘要

海港良好质量管理的先决条件之一是根据乘客数量和车辆数量预测交通量;通过这种方式,可以为港口的顺利运营规划和准备活动。本文将港口系统作为沿海班轮运输的一部分进行研究。集合假设是预测交通量的模型可以表示为两个变量的函数。主成分分析(PCA)方法用于选择预测参数。在参数选择的基础上,运用最小二乘法(LSM),以斯普利特市港口为例,对所选的海运班轮运输预测函数进行了趋势分析,并利用决定系数r2和调整后的r2模型对所选预测模型进行了统计分析,以确认其选择。
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Model of short-term forecasting liner maritime transport in the port system
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 City port. The statistical analysis on the choosed forecasting model using the coefficient of determination r2 and adjusted r2 model is performed to confirm the choice.
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来源期刊
CiteScore
1.50
自引率
0.00%
发文量
19
审稿时长
8 weeks
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