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Predicting a Containership's Arrival Punctuality in Liner Operations by Using a Fuzzy Rule-Based Bayesian Network (FRBBN)
Authors
Bernhofen
Christiansen
+17 more
Chung
Fancello
Gaonkar
Gurning
Hsu
Mohd Salleh
Mohd Salleh
Mohd Salleh
Notteboom
Riahi
Stopford
Van Riessen
Vernimmen
Wu
Yang
Yang
Zhou
Publication date
1 July 2017
Publisher
'Elsevier BV'
Doi
Abstract
One of the biggest concerns in liner operations is punctuality of containerships. Managing the time factor has become a crucial issue in today's liner shipping operations. A statistic in 2015 showed that the overall punctuality for containerships only reached an on-time performance of 73%. However, vessel punctuality is affected by many factors such as the port and vessel conditions and knock-on effects of delays. As a result, this paper develops a model for analyzing and predicting the arrival punctuality of a liner vessel at ports of call under uncertain environments by using a hybrid decision-making technique, the Fuzzy Rule-Based Bayesian Network (FRBBN). In order to ensure the practicability of the model, two container vessels have been tested by using the proposed model. The results have shown that the differences between prediction values and real arrival times are only 4.2% and 6.6%, which can be considered as reasonable. This model is capable of helping liner shipping operators (LSOs) to predict the arrival punctuality of their vessel at a particular port of call. © 2017 The Korean Association of Shipping and Logistics, Inc
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info:doi/10.1016%2Fj.ajsl.2017...
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LJMU Research Online (Liverpool John Moores University)
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