Ship Collision Probabilistic Risk Analysis by Traffic simulation in Persian Gulf

Marine transportation industry, as the main basis of world trade, is of great importance. Here, collision and grounding are the most frequent ones, threatening the industry. To study collision accident and assessment of its occurrence risk, we need to identify ship routes, in which Automatic Identif...

Full description

Bibliographic Details
Main Authors: siyavash filom, roozbeh panahi
Format: Article
Language:fas
Published: Iranian Association of Naval Architecture and Marine Engineering 2018-07-01
Series:نشریه مهندسی دریا
Subjects:
ais
Online Access:http://marine-eng.ir/article-1-638-en.html
id doaj-1a5b24b4fa484a6386532b95dad68019
record_format Article
spelling doaj-1a5b24b4fa484a6386532b95dad680192020-11-25T02:19:27ZfasIranian Association of Naval Architecture and Marine Engineeringنشریه مهندسی دریا1735-76082645-81362018-07-01142795110Ship Collision Probabilistic Risk Analysis by Traffic simulation in Persian Gulfsiyavash filom0roozbeh panahi1 Tarbiat Modares University assisstant professor, Tarbiat Modares University Marine transportation industry, as the main basis of world trade, is of great importance. Here, collision and grounding are the most frequent ones, threatening the industry. To study collision accident and assessment of its occurrence risk, we need to identify ship routes, in which Automatic Identification Systems introduces the best tool. Here, based on the concept of safety domain applied on traffic, high collision concentration locations are identified. Accordingly, probability of collision occurrence in the high risk locations is examined based on the Bayesian network. This study just show sample result of implementing new approaches in accident analysis, which has no previous record in our country.http://marine-eng.ir/article-1-638-en.htmlmaritime transportationship collisionaisbayesian networkpersian gulf
collection DOAJ
language fas
format Article
sources DOAJ
author siyavash filom
roozbeh panahi
spellingShingle siyavash filom
roozbeh panahi
Ship Collision Probabilistic Risk Analysis by Traffic simulation in Persian Gulf
نشریه مهندسی دریا
maritime transportation
ship collision
ais
bayesian network
persian gulf
author_facet siyavash filom
roozbeh panahi
author_sort siyavash filom
title Ship Collision Probabilistic Risk Analysis by Traffic simulation in Persian Gulf
title_short Ship Collision Probabilistic Risk Analysis by Traffic simulation in Persian Gulf
title_full Ship Collision Probabilistic Risk Analysis by Traffic simulation in Persian Gulf
title_fullStr Ship Collision Probabilistic Risk Analysis by Traffic simulation in Persian Gulf
title_full_unstemmed Ship Collision Probabilistic Risk Analysis by Traffic simulation in Persian Gulf
title_sort ship collision probabilistic risk analysis by traffic simulation in persian gulf
publisher Iranian Association of Naval Architecture and Marine Engineering
series نشریه مهندسی دریا
issn 1735-7608
2645-8136
publishDate 2018-07-01
description Marine transportation industry, as the main basis of world trade, is of great importance. Here, collision and grounding are the most frequent ones, threatening the industry. To study collision accident and assessment of its occurrence risk, we need to identify ship routes, in which Automatic Identification Systems introduces the best tool. Here, based on the concept of safety domain applied on traffic, high collision concentration locations are identified. Accordingly, probability of collision occurrence in the high risk locations is examined based on the Bayesian network. This study just show sample result of implementing new approaches in accident analysis, which has no previous record in our country.
topic maritime transportation
ship collision
ais
bayesian network
persian gulf
url http://marine-eng.ir/article-1-638-en.html
work_keys_str_mv AT siyavashfilom shipcollisionprobabilisticriskanalysisbytrafficsimulationinpersiangulf
AT roozbehpanahi shipcollisionprobabilisticriskanalysisbytrafficsimulationinpersiangulf
_version_ 1724876859260272640