Forecasting Damaged Containers with Machine Learning Methods
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Date
2022
Authors
Mihra Güler
Onur Adak
Mehmet Serdar Erdoğan
Ozgur Kabadurmus
Journal Title
Journal ISSN
Volume Title
Publisher
Springer Science and Business Media Deutschland GmbH
Open Access Color
Green Open Access
No
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Publicly Funded
No
Abstract
Forecasting the number of damaged containers is crucial for a maritime company to effectively plan future port operations. The purpose of this study is to forecast damaged container entries and exits. In this paper we worked with a global logistics company in Turkey. Comparisons between ports were made using the company’s internal port operations data and externally available data. The external data that we used are Turkey’s GDP exchange rates (USD/EUR) import and export data TEU of Mersin port and the total TEU of Turkey’s ports (2015–2020). Our aim is to forecast the number of damaged containers at a specific port (Mersin Turkey) using different machine learning methods and find the best method. We used Linear Regression Boosted Decision Tree Regression Decision Forest Regression and Artificial Neural Network Regression algorithms. The performances of these methods were evaluated according to various metrics such as R2 MAE RMSE RAE and RSE. According to our results machine learning methods can forecast container demand effectively and the best performing method is Boosted Decision Tree regression. © 2022 Elsevier B.V. All rights reserved.
Description
ORCID
Keywords
Container Demand, Forecasting, Logistics, Machine Learning, Regression, Containers, Decision Trees, Machine Learning, Neural Networks, Regression Analysis, Boosted Decision Trees, Container Demand, Decision Tree Regression, Exchange Rates, Global Logistics, Logistics Company, Machine Learning Methods, Machine-learning, Port Operations, Regression, Forecasting, Containers, Decision trees, Machine learning, Neural networks, Regression analysis, Boosted decision trees, Container demand, Decision tree regression, Exchange rates, Global logistics, Logistics company, Machine learning methods, Machine-learning, Port operations, Regression, Forecasting, Logistics, Machine Learning, Container Demand, Forecasting, Regression
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OpenCitations Citation Count
1
Source
International Symposium for Production Research ISPR2021
Volume
Issue
Start Page
715
End Page
724
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Scopus : 1
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Mendeley Readers : 8
SCOPUS™ Citations
1
checked on Apr 10, 2026
Web of Science™ Citations
1
checked on Apr 10, 2026
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