A Dynamic Discretization Algorithm for Learning BN Model: Predicting Causation Probability of Ship Collision in the Sunda Strait, Indonesia

Ship collisions represent a significant category of maritime accidents with far-reaching consequences that cause damage to the involved ship and neighboring vessels. This poses a threat to the marine environment, leading to potential oil spills and the triggering of additional maritime accidents. Th...

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Main Authors: Iis Dewi Ratih, Ketut Buda Artana, Heri Kuswanto, Dhimas Widhi Handani, Renata Zahabiya
Format: Article
Language:English
Published: Galenos Publishing House 2024-12-01
Series:Journal of Eta Maritime Science
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Online Access:https://jag.journalagent.com/z4/download_fulltext.asp?pdir=jems&un=JEMS-99075
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author Iis Dewi Ratih
Ketut Buda Artana
Heri Kuswanto
Dhimas Widhi Handani
Renata Zahabiya
author_facet Iis Dewi Ratih
Ketut Buda Artana
Heri Kuswanto
Dhimas Widhi Handani
Renata Zahabiya
author_sort Iis Dewi Ratih
collection DOAJ
description Ship collisions represent a significant category of maritime accidents with far-reaching consequences that cause damage to the involved ship and neighboring vessels. This poses a threat to the marine environment, leading to potential oil spills and the triggering of additional maritime accidents. Therefore, predicting the frequency of ship collisions by identifying the contributing factors is crucial as an initial step in preventing and mitigating their occurrence. Causation probability refers to the likelihood of events resulting from a ship collision. The contributing factors to ship collisions include weather conditions, technical failure, insufficient resources, navigation errors, human error, and the failure of other vessels. The Bayesian Network (BN) machine learning method is capable of predicting ship collisions. This method delineates the relationships among diverse and complex random variables in the form of a diagram grounded in conditional probability theory. It considers both categorical and continuous variables. The prediction of ship collisions through the application of the BN involves the use of a dynamic discretization algorithm, which offers advantages over static discretization. In this research, the causation probability of ship collisions in the Sunda Strait, Indonesia was predicted. This endeavor is necessary because of the distinct characteristics inherent to each geographical area, which implies the likelihood of varying causation probabilities across regions. The resulting predictive model for the likelihood of ship collisions in the Sunda Strait, Indonesia, derived from the implementation of the BN with the dynamic discretization algorithm, yields causation probabilities of head-on collision at 2.74x10-4, overtaking at 9.84x10-4, and crossing at 8.41x10-5. The model demonstrated an overall accuracy of 94.74%.
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spelling doaj-art-46c9df2540d14142b4ae981dce673b2f2025-01-07T08:00:13ZengGalenos Publishing HouseJournal of Eta Maritime Science2148-93862024-12-0112440441710.4274/jems.2024.99075JEMS-99075A Dynamic Discretization Algorithm for Learning BN Model: Predicting Causation Probability of Ship Collision in the Sunda Strait, IndonesiaIis Dewi Ratih0Ketut Buda Artana1Heri Kuswanto2Dhimas Widhi Handani3Renata Zahabiya4Institut Teknologi Sepuluh Nopember, Department of Marine Engineering, Surabaya, IndonesiaInstitut Teknologi Sepuluh Nopember, Department of Marine Engineering, Surabaya, IndonesiaInstitut Teknologi Sepuluh Nopember, Department of Statistics, Surabaya, IndonesiaInstitut Teknologi Sepuluh Nopember, Department of Marine Engineering, Surabaya, IndonesiaInstitut Teknologi Sepuluh Nopember, Department of Business Statistics, Surabaya, IndonesiaShip collisions represent a significant category of maritime accidents with far-reaching consequences that cause damage to the involved ship and neighboring vessels. This poses a threat to the marine environment, leading to potential oil spills and the triggering of additional maritime accidents. Therefore, predicting the frequency of ship collisions by identifying the contributing factors is crucial as an initial step in preventing and mitigating their occurrence. Causation probability refers to the likelihood of events resulting from a ship collision. The contributing factors to ship collisions include weather conditions, technical failure, insufficient resources, navigation errors, human error, and the failure of other vessels. The Bayesian Network (BN) machine learning method is capable of predicting ship collisions. This method delineates the relationships among diverse and complex random variables in the form of a diagram grounded in conditional probability theory. It considers both categorical and continuous variables. The prediction of ship collisions through the application of the BN involves the use of a dynamic discretization algorithm, which offers advantages over static discretization. In this research, the causation probability of ship collisions in the Sunda Strait, Indonesia was predicted. This endeavor is necessary because of the distinct characteristics inherent to each geographical area, which implies the likelihood of varying causation probabilities across regions. The resulting predictive model for the likelihood of ship collisions in the Sunda Strait, Indonesia, derived from the implementation of the BN with the dynamic discretization algorithm, yields causation probabilities of head-on collision at 2.74x10-4, overtaking at 9.84x10-4, and crossing at 8.41x10-5. The model demonstrated an overall accuracy of 94.74%.https://jag.journalagent.com/z4/download_fulltext.asp?pdir=jems&un=JEMS-99075dynamic discretizationbnship collision
spellingShingle Iis Dewi Ratih
Ketut Buda Artana
Heri Kuswanto
Dhimas Widhi Handani
Renata Zahabiya
A Dynamic Discretization Algorithm for Learning BN Model: Predicting Causation Probability of Ship Collision in the Sunda Strait, Indonesia
Journal of Eta Maritime Science
dynamic discretization
bn
ship collision
title A Dynamic Discretization Algorithm for Learning BN Model: Predicting Causation Probability of Ship Collision in the Sunda Strait, Indonesia
title_full A Dynamic Discretization Algorithm for Learning BN Model: Predicting Causation Probability of Ship Collision in the Sunda Strait, Indonesia
title_fullStr A Dynamic Discretization Algorithm for Learning BN Model: Predicting Causation Probability of Ship Collision in the Sunda Strait, Indonesia
title_full_unstemmed A Dynamic Discretization Algorithm for Learning BN Model: Predicting Causation Probability of Ship Collision in the Sunda Strait, Indonesia
title_short A Dynamic Discretization Algorithm for Learning BN Model: Predicting Causation Probability of Ship Collision in the Sunda Strait, Indonesia
title_sort dynamic discretization algorithm for learning bn model predicting causation probability of ship collision in the sunda strait indonesia
topic dynamic discretization
bn
ship collision
url https://jag.journalagent.com/z4/download_fulltext.asp?pdir=jems&un=JEMS-99075
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