Prediction of late/early arrivals in container terminals – A qualitative approach

Vessel arrival uncertainty in ports has become a very common problem worldwide. Although ship operators have to notify the Estimated Time of Arrival (ETA) at predetermined time intervals, they frequently have to update the latest ETA due to unforeseen circumstances. This causes a series of inconveni...

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Main Authors: Claudia Pani, Thierry Vanelslander, Gianfranco Fancello, Massimo Cannas
Format: Article
Language:English
Published: TU Delft Open 2015-09-01
Series:European Journal of Transport and Infrastructure Research
Online Access:https://journals.open.tudelft.nl/ejtir/article/view/3096
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spelling doaj-7ce95beaae77486c829c9dcbb19cc7aa2021-07-26T08:41:27ZengTU Delft OpenEuropean Journal of Transport and Infrastructure Research1567-71412015-09-0115410.18757/ejtir.2015.15.4.30962709Prediction of late/early arrivals in container terminals – A qualitative approachClaudia Pani0Thierry Vanelslander1Gianfranco Fancello2Massimo Cannas3University of CagliariUniversity of AntwerpUniversity of CagliariUniversity of CagliariVessel arrival uncertainty in ports has become a very common problem worldwide. Although ship operators have to notify the Estimated Time of Arrival (ETA) at predetermined time intervals, they frequently have to update the latest ETA due to unforeseen circumstances. This causes a series of inconveniences that often impact on the efficiency of terminal operations, especially in the daily planning scenario. Thus, for our study we adopted a machine learning approach in order to provide a qualitative estimate of the vessel delay/advance and to help mitigate the consequences of late/early arrivals in port. Using data on delays/advances at the individual vessel level, a comparative study between two transshipment container terminals is presented and the performance of three algorithmic models is evaluated. Results of the research indicate that when the distribution of the outcome is bimodal the performance of the discrete models is highly relevant for acquiring data characteristics. Therefore, the models are not flexible in representing data when the outcome distribution exhibits unimodal behavior. Moreover, graphical visualisation of the importance-plots made it possible to underline the most significant variables which might explain vessel arrival uncertainty at the two European ports.https://journals.open.tudelft.nl/ejtir/article/view/3096
collection DOAJ
language English
format Article
sources DOAJ
author Claudia Pani
Thierry Vanelslander
Gianfranco Fancello
Massimo Cannas
spellingShingle Claudia Pani
Thierry Vanelslander
Gianfranco Fancello
Massimo Cannas
Prediction of late/early arrivals in container terminals – A qualitative approach
European Journal of Transport and Infrastructure Research
author_facet Claudia Pani
Thierry Vanelslander
Gianfranco Fancello
Massimo Cannas
author_sort Claudia Pani
title Prediction of late/early arrivals in container terminals – A qualitative approach
title_short Prediction of late/early arrivals in container terminals – A qualitative approach
title_full Prediction of late/early arrivals in container terminals – A qualitative approach
title_fullStr Prediction of late/early arrivals in container terminals – A qualitative approach
title_full_unstemmed Prediction of late/early arrivals in container terminals – A qualitative approach
title_sort prediction of late/early arrivals in container terminals – a qualitative approach
publisher TU Delft Open
series European Journal of Transport and Infrastructure Research
issn 1567-7141
publishDate 2015-09-01
description Vessel arrival uncertainty in ports has become a very common problem worldwide. Although ship operators have to notify the Estimated Time of Arrival (ETA) at predetermined time intervals, they frequently have to update the latest ETA due to unforeseen circumstances. This causes a series of inconveniences that often impact on the efficiency of terminal operations, especially in the daily planning scenario. Thus, for our study we adopted a machine learning approach in order to provide a qualitative estimate of the vessel delay/advance and to help mitigate the consequences of late/early arrivals in port. Using data on delays/advances at the individual vessel level, a comparative study between two transshipment container terminals is presented and the performance of three algorithmic models is evaluated. Results of the research indicate that when the distribution of the outcome is bimodal the performance of the discrete models is highly relevant for acquiring data characteristics. Therefore, the models are not flexible in representing data when the outcome distribution exhibits unimodal behavior. Moreover, graphical visualisation of the importance-plots made it possible to underline the most significant variables which might explain vessel arrival uncertainty at the two European ports.
url https://journals.open.tudelft.nl/ejtir/article/view/3096
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AT thierryvanelslander predictionoflateearlyarrivalsincontainerterminalsaqualitativeapproach
AT gianfrancofancello predictionoflateearlyarrivalsincontainerterminalsaqualitativeapproach
AT massimocannas predictionoflateearlyarrivalsincontainerterminalsaqualitativeapproach
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