计算机科学
极限学习机
极端天气
天气预报
气象学
环境科学
航空学
人工智能
工程类
地质学
人工神经网络
地理
气候变化
海洋学
作者
Andrew Rawson,Mario Brito
出处
期刊:Proceedings of the 30th European Safety and Reliability Conference and 15th Probabilistic Safety Assessment and Management Conference
日期:2020-01-01
被引量:1
标识
DOI:10.3850/978-981-14-8593-0_3906-cd
摘要
Extreme weather events such as hurricanes are a significant hazard to shipping. We show that traditional methods to model weather related risks using naval architecture or historical incidents fail to accurately predict the potential risk of an accident by failing to account for risk mitigation actions taken by the bridge team. We therefore propose the use of unsupervised machine learning to identify clusters in risk response by ships to perceived high risk scenarios. This risk classification method is based on the analysis of large heterogenous datasets including vessel traffic, metocean and hurricane path data from the US Atlantic Hurricane Season. Clusters in vessel behaviour to these storms are identified and the risk perception by storm severity compared. The results of this analysis can be used to better understand the impact of extreme weather events on navigation safety and develop an early warning system for coast guard search and rescue response.
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