Research on combination forecast of port cargo throughput based on time series and causality analysis

<p><strong>Purpose:</strong> The purpose of this paper is to develop a combined model composed of grey-forecast model and Logistic-growth-curve model to improve the accuracy of forecast model of cargo throughput for the port. The authors also use the existing data of a current port...

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Main Authors: Chi Zhang, Lei Huang, Zhichao Zhao
Format: Article
Language:English
Published: OmniaScience 2013-03-01
Series:Journal of Industrial Engineering and Management
Subjects:
Online Access:http://www.jiem.org/index.php/jiem/article/view/687
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spelling doaj-98229699c3cd4e5f8082eccf1a9c4c742020-11-24T22:35:22ZengOmniaScienceJournal of Industrial Engineering and Management2013-84232013-09532013-03-016112413410.3926/jiem.687153Research on combination forecast of port cargo throughput based on time series and causality analysisChi Zhang0Lei Huang1Zhichao Zhao2School of economics and management. Beijing Jiaotong universitySchool of economics and management. Beijing Jiaotong universitySchool of economics and management. Beijing Jiaotong university<p><strong>Purpose:</strong> The purpose of this paper is to develop a combined model composed of grey-forecast model and Logistic-growth-curve model to improve the accuracy of forecast model of cargo throughput for the port. The authors also use the existing data of a current port to verify the validity of the combined model.</p><p><strong>Design/methodology/approach:</strong> A literature review is undertaken to find the appropriate forecast model of cargo throughput for the port. Through researching the related forecast model, the authors put together the individual models which are significant to study further. Finally, the authors combine two individual models (grey-forecast model and Logistic-growth-curve model) into one combined model to forecast the port cargo throughput, and use the model to a physical port in China to testify the validity of the model.</p><p><strong>Findings:</strong> Test by the perceptional data of cargo throughput in the physical port, the results show that the combined model can obtain relatively higher forecast accuracy when it is not easy to find more information. Furthermore, the forecast made by the combined model are more accurate than any of the individual ones.</p><p><strong>Research limitations/implications:</strong> The study provided a new combined forecast model of cargo throughput with a relatively less information to improve the accuracy rate of the forecast. The limitation of the model is that it requires the cargo throughput of the port have an S-shaped change trend.</p><p><strong>Practical implications:</strong> This model is not limited by external conditions such as geographical, cultural. This model predicted the port cargo throughput of one real port in China in 2015, which provided some instructive guidance for the port development.</p><p><strong>Originality/value:</strong> This is the one of the study to improve the accuracy rate of the cargo throughput forecast with little information.</p>http://www.jiem.org/index.php/jiem/article/view/687cargo throughput, combined forecast model, Logistic growth curve model, Gray forecast model
collection DOAJ
language English
format Article
sources DOAJ
author Chi Zhang
Lei Huang
Zhichao Zhao
spellingShingle Chi Zhang
Lei Huang
Zhichao Zhao
Research on combination forecast of port cargo throughput based on time series and causality analysis
Journal of Industrial Engineering and Management
cargo throughput, combined forecast model, Logistic growth curve model, Gray forecast model
author_facet Chi Zhang
Lei Huang
Zhichao Zhao
author_sort Chi Zhang
title Research on combination forecast of port cargo throughput based on time series and causality analysis
title_short Research on combination forecast of port cargo throughput based on time series and causality analysis
title_full Research on combination forecast of port cargo throughput based on time series and causality analysis
title_fullStr Research on combination forecast of port cargo throughput based on time series and causality analysis
title_full_unstemmed Research on combination forecast of port cargo throughput based on time series and causality analysis
title_sort research on combination forecast of port cargo throughput based on time series and causality analysis
publisher OmniaScience
series Journal of Industrial Engineering and Management
issn 2013-8423
2013-0953
publishDate 2013-03-01
description <p><strong>Purpose:</strong> The purpose of this paper is to develop a combined model composed of grey-forecast model and Logistic-growth-curve model to improve the accuracy of forecast model of cargo throughput for the port. The authors also use the existing data of a current port to verify the validity of the combined model.</p><p><strong>Design/methodology/approach:</strong> A literature review is undertaken to find the appropriate forecast model of cargo throughput for the port. Through researching the related forecast model, the authors put together the individual models which are significant to study further. Finally, the authors combine two individual models (grey-forecast model and Logistic-growth-curve model) into one combined model to forecast the port cargo throughput, and use the model to a physical port in China to testify the validity of the model.</p><p><strong>Findings:</strong> Test by the perceptional data of cargo throughput in the physical port, the results show that the combined model can obtain relatively higher forecast accuracy when it is not easy to find more information. Furthermore, the forecast made by the combined model are more accurate than any of the individual ones.</p><p><strong>Research limitations/implications:</strong> The study provided a new combined forecast model of cargo throughput with a relatively less information to improve the accuracy rate of the forecast. The limitation of the model is that it requires the cargo throughput of the port have an S-shaped change trend.</p><p><strong>Practical implications:</strong> This model is not limited by external conditions such as geographical, cultural. This model predicted the port cargo throughput of one real port in China in 2015, which provided some instructive guidance for the port development.</p><p><strong>Originality/value:</strong> This is the one of the study to improve the accuracy rate of the cargo throughput forecast with little information.</p>
topic cargo throughput, combined forecast model, Logistic growth curve model, Gray forecast model
url http://www.jiem.org/index.php/jiem/article/view/687
work_keys_str_mv AT chizhang researchoncombinationforecastofportcargothroughputbasedontimeseriesandcausalityanalysis
AT leihuang researchoncombinationforecastofportcargothroughputbasedontimeseriesandcausalityanalysis
AT zhichaozhao researchoncombinationforecastofportcargothroughputbasedontimeseriesandcausalityanalysis
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