Title: An artificial intelligence model considering data imbalance for ship selection in port state control based on detention probabilities
Authors: Yan, R 
Wang, S 
Peng, C
Issue Date: Jan-2021
Source: Journal of computational science, Jan. 2021, v. 48, 101257
Abstract: Port state control inspection is seen as a safety net to guard marine safety, protect the marine environment, and guarantee decent onboard working and living conditions for seafarers. A substandard ship can be detained in an inspection if serious deficiencies are found onboard. Ship detention is regarded as a severe result in port state control inspection. However, developing accurate prediction models for ship detention based on ship's generic factors (e.g. ship age, type, and flag), dynamic factors (e.g. times of ship flag changes), and inspection historical factors (e.g. total previous detentions in PSC inspection, last PSC inspection time, and last deficiency number in PSC inspection) before an inspection is conducted is not a trivial task as the low detention rate leads to a highly imbalanced inspection records dataset. To address this issue, this paper develops a classification model called balanced random forest (BRF) to predict ship detention by using 1,600 inspection records at the Hong Kong port for three years. Numerical experiments show that the proposed BRF model can identify 81.25% of all the ships with detention in the test set which contains another 400 inspection records. Compared with the current ship selection method at the Hong Kong port, the BRF model is much more efficient and can achieve an average improvement of 73.72% in detained ship identification.
Keywords: Artificial intelligence in maritime transportation
Imbalanced data
Machine learning in maritime transportation
Port state control inspection
Ship detention
Publisher: Elsevier
Journal: Journal of computational science 
ISSN: 1877-7503
DOI: 10.1016/j.jocs.2020.101257
Appears in Collections:Journal/Magazine Article

Access
View full-text via PolyU eLinks SFX Query
Show full item record

Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.