Detection of Abnormal Vessel Behaviours Based on AIS Data Features Using HDBSCAN+

IF 0.8 4区 工程技术 Q3 MULTIDISCIPLINARY SCIENCES
R. H. Kumar, CP Ramanarayanan, K.S.R.R.P. Murthy
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引用次数: 0

Abstract

Achieving maritime security is challenging due to the vastness and complexity of the domain. Monitoring all Achieving maritime security is challenging due to the vastness and complexity of the domain. Monitoringall vessels that use this medium is humanly impossible but is needed for law enforcement. This paper proposes amachine learning solution based on HDBSCAN+ to classify the movements of vessels into ‘normal’ or ‘abnormal’.This classification reduces the number of vessels that have to be monitored by law enforcement agencies to amanageable size. To date, AIS is the primary source of information that can represent vessel movements andenable the detection of maritime anomalies. The proposed model uses latitude, longitude, type of vessel, courseand speed as features of the AIS data for analysis. The performance of the proposed model is validated against the marine incidents reported by Information Fusion Centre-Indian Ocean Region (IFC-IOR). The proposed model has successfully detected the incidents reported by IFC-IOR.
利用 HDBSCAN+ 根据 AIS 数据特征检测异常船只行为
由于领域的广阔性和复杂性,实现海事安全具有挑战性。由于领域的广阔性和复杂性,实现海上安全具有挑战性。监控所有使用这种媒介的船只在人力上是不可能的,但在执法上却是必要的。本文提出了一种基于 HDBSCAN+ 的机器学习解决方案,将船只的移动分为 "正常 "和 "异常 "两种。迄今为止,自动识别系统(AIS)是能够代表船只动向并探测海上异常情况的主要信息来源。所提议的模型使用经度、纬度、船只类型、航向和速度作为 AIS 数据的特征进行分析。印度洋地区信息融合中心(IFC-IOR)报告的海上事故验证了所提模型的性能。所提出的模型成功检测到了 IFC-IOR 报告的事件。
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来源期刊
Defence Science Journal
Defence Science Journal 综合性期刊-综合性期刊
CiteScore
1.80
自引率
11.10%
发文量
69
审稿时长
7.5 months
期刊介绍: Defence Science Journal is a peer-reviewed, multidisciplinary research journal in the area of defence science and technology. Journal feature recent progresses made in the field of defence/military support system and new findings/breakthroughs, etc. Major subject fields covered include: aeronautics, armaments, combat vehicles and engineering, biomedical sciences, computer sciences, electronics, material sciences, missiles, naval systems, etc.
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