Let's Connect
Follow Us
Watch Us
(+385) 1 2380 262
journal.prometfpz.unizg.hr
Promet - Traffic&Transportation journal

Accelerating Discoveries in Traffic Science

Accelerating Discoveries in Traffic Science

PUBLISHED
05.11.2017
LICENSE
Copyright (c) 2024 Marko Intihar, Tomaž Kramberger, Dejan Dragan

Container Throughput Forecasting Using Dynamic Factor Analysis and ARIMAX Model

Authors:

Marko Intihar
university of maribor, faculty of logistics

Tomaž Kramberger
university of maribor, faculty of logistics

Dejan Dragan
university of maribor, faculty of logistics

Keywords:container throughput forecasting, ARIMAX model, dynamic factor analysis, exogenous macroeconomic indicators, time series analysis,

Abstract

The paper examines the impact of integration of macroeconomic indicators on the accuracy of container throughput time series forecasting model. For this purpose, a Dynamic factor analysis and AutoRegressive Integrated Moving-Average model with eXogenous inputs (ARIMAX) are used. Both methodologies are integrated into a novel four-stage heuristic procedure. Firstly, dynamic factors are extracted from external macroeconomic indicators influencing the observed throughput. Secondly, the family of ARIMAX models of different orders is generated based on the derived factors. In the third stage, the diagnostic and goodness-of-fit testing is applied, which includes statistical criteria such as fit performance, information criteria, and parsimony. Finally, the best model is heuristically selected and tested on the real data of the Port of Koper. The results show that by applying macroeconomic indicators into the forecasting model, more accurate future throughput forecasts can be achieved. The model is also used to produce future forecasts for the next four years indicating a more oscillatory behaviour in (2018-2020). Hence, care must be taken concerning any bigger investment decisions initiated from the management side. It is believed that the proposed model might be a useful reinforcement of the existing forecasting module in the observed port.

References

  1. Zhang C, Huang L, Zhao Z. Research on combination forecast of port cargo throughput based on time series and causality analysis. Journal of Industrial Engineering and Management. 2013;6(1): 124-134. doi:

    3926/jiem.687.

    Peng WY, Chu CW. A comparison of univariate methods for forecasting container throughput volumes. Mathematical and Computer Modelling. 2009;50(7-8): 1045-1057.

    Button K, Chin A, Kramberger T. Incorporating subjective elements into liners' seaport choice assessments. Transport Policy. 2015;44: 125-33.

    Xie G, Wang S, Zhao Y, Lai KK. Hybrid approaches based on LSSVR model for container throughput forecasting: a comparative study. Applied Soft Computing. 2013;13(5): 2232-2241.

    Dorsser JCMV. A Very Long Term Forecast of the Port Throughput in the Le Havre-Hamburg Range up to 2100. European Journal of Transport and Infrastructure Research (EJTIR). 2012;12(1).

    Wang J, Wang S. Business Intelligence in Economic Forecasting: Technologies and Techniques. Business Sci

Show more
How to Cite
Intihar, M. (et al.) 2017. Container Throughput Forecasting Using Dynamic Factor Analysis and ARIMAX Model. Traffic&Transportation Journal. 29, 5 (Nov. 2017), 529-542. DOI: https://doi.org/10.7307/ptt.v29i5.2334.

SPECIAL ISSUE IS OUT

Guest Editor: Eleonora Papadimitriou, PhD

Editors: Marko Matulin, PhD, Dario Babić, PhD, Marko Ševrović, PhD


Accelerating Discoveries in Traffic Science |
2024 © Promet - Traffic&Transportation journal